DESIGN the award of the degree of



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submitted by

J. Haripriya (118101005)

towards partial fulfillment of the requirements for the award of the degree

Master of Technology (Integ).
Instrumentation & Control

School of Electrical and Electronics Engineering

(A University established under section 3 of the UGC Act, 1956)
Thanjavur-613 401

MAY 2018


This is to certify that the project work entitled “DESIGN AND ANALYSIS OF
a bonafide record of the work carried out by

J.Haripriya (118101005)

student of the final year M.Tech(Integ).Instrumentation &Control, in partial fulfillment of
the requirements for the award of the degree of M.Tech(Integ). Instrumentation &
Control of SASTRA DEEMED TO BE UNIVERSITY, Tirumalaisamudram,
Thanjavur 613401, during the year 2017-2018.

NAME OF THE INTERNAL GUIDE : Dr. G. Balasubramanian


Project Viva-voce held on _____________________________

Examiner -I Examiner-II



I would like to express my heartfelt thanks to, Prof. R. Sethuraman, Vice
Chancellor, SASTRA Deemed to be University for providing all the necessary
encouragement and facilities during the course of study.

I extend my sincere thanks to Dr. G. Bhalachandran, Registrar, SASTRA Deemed to
be University for providing the opportunity to pursue this project.

I extend my deepest gratitude to Dr. S. Vaidhyasubramaniam, Dean-Planning &
Development, SASTRA Deemed to be University and to Dr. S. Swaminathan,
Director, CeNTAB, SASTRA Deemed to be University for giving this wonderful

I extend sincere thanks to Dr. S. Jayalalitha, Associate Dean, EIE, SEEE, SASTRA
Deemed to be University who motivated me during the course of study and helped me
in every way during the curriculum and project work.

I am thankful to my guide Dr. G. Balasubramanian, Senior Assistant Professor, EIE
who had been a source of constant encouragement and technical support throughout
the project. Without his support, this project would not have been possible.

I thank Dr. S. Rakesh Kumar, Assistant Professor-III, EIE who had been a milestone
in my career by providing me an honoring project to work upon. His deep insight in
the field and invaluable suggestions helped me in making progress in my project






KEY WORDS: Tactile sensation, Vibration motor, FIR filter, Assistive device, Four-
channel array

Tactile sensor is a technology to enable speech recognition unlike other hearing aids.
In existing hearing aids, stimulation of the skin is done by placing electrodes on the
skin. It is known to have large drawbacks as the electrodes when placed on the human
body may pass current through the skin when proper insulation is not done. Thereby
causing harm to the person wearing it. So the vibration motors are being used instead
of the electrodes to avoid such risks.
The main objective of this project is to design a vibro-tactile haptic device for hearing-
impaired person. The proposed device tends to use the functional similarity between
the ear and the skin. The place-theory of hearing is similar to the tactile sensation of
the skin making it potential to localize the vibrations. This tactile-sensation will enable
the person with mild to profound deafness to sense speech signals by providing
standard vowel speech signals. The results obtained are analyzed using confusion
matrix illustrating the working of the prototype. So, similar to cochlear implants, the
speech signal is decomposed into various bands of frequencies using FIR filters. A
four-channel-array skin hearing aid is developed by segmenting the entire acquired



ALD Assistive Learning Device
SHL Sensorineural Hearing Loss
FIR Finite Impulse Response
DSP Digital Signal Processing
LPF Low Pass Filter
BPF Band Pass Filter
HPF High Pass Filter
MATLAB MATrix LABoratory
FFT Fast Fourier Transform
PWM Pulse Width Modulation
CI Cochlear Implantation

mm millimeters
g grams
rpm rotation per minute
g acceleration due to gravity
V Voltage
Hz Hertz



4.1 Filter bank 23
4.2 Specifications of vibration motor 26


Figure No. Figure Name Page No.
1.1 Common cause for hearing loss 2
1.2 WHO statistics of global estimates 2
1.3 Hearing loss based on degree 5
1.4 Types of hearing ids 6
1.5 Cochlea Implantation 6
1.6 Sound flow in assistive devices 7
3.1 Anatomy of human ear 11
3.2 Anatomy of outer ear 12
3.3 Anatomy of middle ear 13
3.4 Anatomy of inner ear 14
3.5 Cochlea structure with hair cells 15
3.6 Cochlea frequency decomposition 16
4.1 Frequency distribution 18
4.2 Block Diagram representation of device 19
4.3 Motor placement on the skin 19
4.4 Digital Signal Processor applications 20
4.5 Components of DSP 21
4.6 FIR structure 22
4.7 Block Diagram of FIR filter design 24
4.8 Frequency Distribution 25
4.9 fdatool in MATLAB 25
4.10 Arduino board pin mapping 27
5.1 Prototype of assistive device 28
5.2 Confusion matrix of sensitivity 29


Figure No. Figure Name Page No.
5.3 Continuous signal of vowel a, e, i 30
5.4 Single-sided spectrum of vowel a 30
5.5 Filter banks of two channels 31
5.6 Design of filter banks 32
5.7 Confusion matrix of vowel a, e, i 33
5.8 Confusion matrix for actual speech 33



ACKNOWLEDGEMENT …………………………………………………………………………… (i)
ABSTRACT ………………………………………………………………………………………………. (ii)
ABBREVIATIONS ……………………………………………………………………………………. (iii)
NOTATION ………………………………………………………………………………………………. (iii)
LIST OF TABLES ……………………………………………………………………………………… (iv)
LIST OF FIGURES ……………………………………………………………………………………. (v)

1.1 Introduction …………………………………………………………………….. (1)
1.2 Hearing loss …………………………………………………………………….. (2)
1.3 Causes of hearing loss ………………………………………………………. (3)
1.4 Types of hearing disorder ………………………………………………….. (4)
1.4.1 Based on the nature of loss ……………………………………. (4)
1.4.2 Based on the degree of loss ……………………………………. (4)
1.5 Types of assistive devices ………………………………………………….. (4)
CHAPTER 2 LITERATURE REVIEW …………………………………………………….. (9)
3.1 Anatomy of human ear ……………………………………………………… (11)
3.2 Anatomy and function of cochlea ………………………………………. (14)


4.1 Introduction to tactile sensing ……………………………………………. (17)

4.2 Block Diagram of the device ……………………………………………… (18)

4.3 Digital Signal Processor ……………………………………………………. (19)

4.3.1 Filter bank ………………………………………………………….. (20)

4.4 Vibration motor array ……………………………………………………….. (24)

4.5 Arduino …………………………………………………………………………… (26)

4.6 Algorithm for speech processing ………………………………………… (27)


5.1 Evaluation of vibration motor sensitivity …………………………….. (28)

5.2 Testing using standard speech signal ………………………………….. (29)

5.3 Testing using actual speech signal ………………………………………. (33)

5.4 Limitations ………………………………………………………………… (34)

CHAPTER 6 CONCLUSION …………………………………………………………………….. (35)
REFERENCES ………………………………………………………………………………………….. (36)
APPENDIX ……………………………………………………………………………………………….. (38)
A.1 Program to initialize Arduino …………………………………………….. (38)
A.2 Program for acquiring speech online …………………………………… (38)
A.3 Program for filter design …………………………………………………… (38)




1.1. Introduction
Hearing loss, also known as hearing impairment is a partial or complete inability to
hear. According to the statistics provided by World Health Organization (WHO) there
is a total of 5% accounting to around 360 million people in the whole world 1. The
stated statistics reported by WHO as of March,2015, includes 91% i.e. 328 million of
adults (consisting 183 million males and 145 million females) and 9% i.e. 32 million
of children.
There are many reasons for hearing loss, of which predominately being hereditarily
acquired, aging, viral infections, injuries, side-effects of drugs, diseases affecting ear
Furthermore, the main reason in the present era is a person’s prolong exposure to
noises made by the vehicles or machines in the industry, explosions 2. This would
lead to the loss of hearing of certain frequency range.
It is estimated that by 2050 over 900 million people i.e. for every ten people there
would be one person suffering from deafness as per records. Over one-third of the
elderly people are having hearing loss proving ageing is the tremendous cause for it.
The causes of hearing loss with the exact statistics are illustrated in Figure 1.1.
It shows that noise causes more deafness than aging does. The WHO provided the
global data of people suffering from hearing loss and stated that most of the people
suffering from due to age factor are present in South Asia, Asia Pacific and Saharan
Africa which is illustrated in Figure 1.2.


There is a growing rate of hearing impaired people in the world in an alarming rate.
Therefore it is very important for preventing hearing loss and also to treat in a better
manner with increasing technology.

Fig. 1.1 Common causes for hearing loss
The treatment is based on the severity of the hearing loss. Irrespective to the age of a
person the hearing loss occurs. This tends to change the social life of the person and
his mental health.

Fig. 1.2 WHO statistics global estimates of hearing loss


1.2. Hearing loss
Hearing loss is the one of the most common disability affecting people. This was
stated as third most common disability with different reasons of cause. The adult are
known to have hearing loss if the sound level being heard b them is only above 40 dB
and for children the level being above 30 dB. There are a lot of effects due to hearing
loss, making the person lonely, irritated and stressed. The early identification of the
hearing loss would get a better treatment when compared to late analysis. People with
hearing impairment having many affects both physically and mentally. There is a study
showing that people with hearing loss have lesser memory power and cognitive
functioning making them rejected in society 3. They are even rejected in companies
mainly in industries for manufacturing making them unemployed. The early diagnosis
will prevent the severe affects of being completely deaf.

1.3 Causes of hearing loss
There are many reasons for hearing loss which have damaged any part of the ear. The
main causes include aging and loss due to severe noise exposure. The person can even
become deaf, genetically i.e. hereditary from parents or anyone in the family tree. The
diseases such as viral fever, Meniere’s disease affect the ear drum. The noise
hypertension and diabetes leads to hearing loss too. The exposure to loud noises such
as explosions and industrial machines for a longer time make a person get deprived of
hearing specific range of frequencies.
1.4 Types of hearing disorder
The hearing loss classified into two (i) based on the nature and (ii) based on the


1.4.1 Based on the nature of loss
There are four types of hearing impairment based on the nature of the loss. The
impairment can occur due to the problems in conduction of sound in the ear (inner,
middle or the outer part of the ear). The problem may occur in conduction of the signal
to the brain from ear through the nerves. They are, (i) Conductive hearing impairment
which is a disorder related to conduction of the sound signal in mechanical form in the
ear drum, ear canal or the cochlea, (ii) Sensorineural Hearing Loss (SHL) resulted due
to the dysfunction of the auditory nerve which is connected from the inner ear to the
brain. It also involves problems related to inner ear mainly inside the cochlea and its
hair cells, (iii) Mixed hearing loss involving the SHL accompanied by the conduction
component damage and (iv) Central hearing impairment occurs in sound centers
present in the brain. This type of impairment is caused due to the head injury or any
diseased affecting the nerves connected to particular part of the brain.
1.4.2 Based on the degree of the loss
Based on the degree or the magnitude to which the impairment has occurred the
classification is done as (i) mild, (ii) moderate (iii) severe and (iv) profound. These are
named by the increasing order of the magnitude of loss of hearing which is measured
in decibels is illustrated in Figure 1.3.
1.5 Types of assistive devices
To aid the people with hearing loss there are many treatments. These include hearing
aid, Cochlear Implantation (CI) and Assistive Learning Devices (ALDs). The type of
device to be used depends on the range of hearing loss and the type of loss. Hence,
there are various advantages and disadvantages for each device.


Fig. 1.3 Hearing loss based on the degree
The hearing aids are the amplifying devices containing a microphone with an amplifier
along with it which is wearable as shown in Figure 1.4. There are various filters used
in the signal processing to remove the noise. These aids are used by the person mainly
with SHL and conductive hearing loss where the sound needs to be amplified for the
person to hear. The main advantage of these aids is that they are wearable, amplifies
the sound attenuated by the ear and provides more gain for soft sounds. But the
disadvantages are that it is only an aid for amplification, filtering should be done
accurately and also cannot differentiate the noises in surroundings making the person
impossible to understand sounds. The next type is the CI whose function is to replace
the damaged hair cells by electrically stimulating the inner ear illustrated in Figure 1.5.
The microphone collects data and is processed using the speech processor and is
provided to an array of electrodes. This is advantageous for people suffering from
partial hearing and for post lingual suffering patients. But it is limited to people who
suffer profound hearing loss.


Fig. 1.4 Types of hearing aids

Fig. 1.5 Cochlear Implantation
It is costly and requires a surgery to be done. This surgery is done to drill a hole in the
head to place the electrodes and is considered to be dangerous. To avoid such things


many of them opt for assistive devices. The assistive devices for hearing impaired are
used separately or with the combination of hearing aid or CI shown in Figure 1.6.
This are preferred for people suffering from hearing for a particular frequencies. They
are categorized into acoustic and alerting types. In one of the acoustic a transmitter and
receiver are present where the other end of receiving is connected to a hearing aid. The
other alerting type includes conversion of sound or speech signal into visual
representation or vibration for touch sense on the skin. There are various types
included in the above stated. These are more comfortable as they reduce the noise and
are customizable. They are more useful than other types but are not used mainly
because of less popularity and not advanced technologies being involved in them. All
the above mentioned methods include lip-reading and hand-signals.

Fig. 1.6 Sounds flow in ALD


There are many treatments for hearing impaired people, such as hearing aid, assistive
device and surgical implants ALDs are highly advantageous than other devices as they
are portable and lower cost. The design of a kind of ALD is based on tactile sensing.
Tactile sensor is one of the alternative technology to enable speech recognition 4-
6.Unlike other assistive device, this device uses cutaneous sensory nerve instead of
the auditory nerve in ear.
The tactile vocoder mimics the ‘place theory’ of frequency discrimination of the
cochlea 7-11.It is advantageous than the cochlea implant, as it doesn’t require any
surgery and is cost-effective. Researches based on tactile vocoder devices for
profoundly deaf were very successful. Vocoder has a disadvantage that it is too costly
for practical use. Also there have been many new processors which are cheap and
easily implemented being available. There are many devices which use the place
theory but are implemented using electrodes. These are dangerous while using because
of short circuit or current discharge may affect the person who is wearing it
tremendously. To avoid such problems different methodology is implemented in the
work presented using various latest technologies



Gault (1924), described a set of experiments in which he investigated into a set of
vowels and consonants combinations that are differentiated by the sense of touch and
stated that if the apparatus is designed with high degree of perfection it can be used for
the training purposes and can be used as a device to understand speech with the sense
of touch.
Goff (1967), proposed a working describing how the frequency discrimination of the
skin is similar to that of the ear. The areas where skin is more sensitive and responds to
the changes or any vibrations to which it is applied are described with many
experiments by giving various inputs to the skin.
Beachler and Carney (1981), two types of channels are taken which are single channel
and multi-channel array of vibro-tactile sensors are taken. The comparison was made
for the channels and found that as the number of channels increased the output varied.
The phonemes were mainly tested and the error occurred in each device varied
according to the sound.
Brooks PL and Frost BJ (1983), in their research work have used a tactile vocoder to
identify words. The vocoder employs filter channels with a one-third octave and the
central frequencies of 200-8000 Hz range. They described that outputs obtained after
logarithmic amplification were transmitted through a solenoidarray of 16 channels on


the fore-arm of the subject. Though at first the words were poorly guessed were
identified with improved degree of perfection by practice.
Jianwen Li (2014), proposed multi channel array skin hearing technology to solve
sound discrimination problems utilizing the principle of hair cells. The band pass
filtering technology is used to convert the received voice signals of different
frequencies into electric impulses. To simulate the different regions of skin an array of
electrodes is used so as to check the skin response to electric signals. Through this
experiment it is found that sensory nerves in the skin can help to transfer skin signal.
Mahalakshmi and Reddy M. R (2010), have proposed the updated design of filters in
cochlea implantation. This was done using Band-Pass filter Banks implemented using
Kaiser Window with a length of 877. This was used as the speech processing can be
done easily which is to remove the noise. This design is used for the filter bank design
of the vibration motor array.


3.1. Anatomy of human ear
The ear is one of the sense organs that enable mammals to hear. Hearing is the sense of
sound by the brain and central nervous system. It is categorized into two parts,
distinguishing the different sounds and identifying their source. The ear is generally
divided into three different parts- outer ear, middle and inner ear as shown in Figure
3.1. To begin with, the inner ear is filled-in by a fluid called perilymph. This fluid
inside the inner ear helps the sound receptors to convert sound waves into the action
potentials (electrical signals). The action potentials enable the brain to sense the sound

Fig. 3.1 Anatomy of the human ear
In addition to conversion of sound signals into action-potentials, the inner ear is
capable for the sense of balance. The outer ear and middle ear act as passage to send
the sound to inner from the environment.


They help in compensating the losses in the sound energy by amplifying the signals
when the waves pass from one medium to other. The outer ear consists of eardrum that
acts as a channel to conduct vibrations of the ear illustrated in Figure 3.2. It takes care
of localization of sound. The sound localization is described in two ways. To start
with, the sound reaches the ear little sooner compared to the second ear (right or left).
Secondly the intensity of sound is reduced when it reaches second ear. This is because
the head obstructs partially the spreading of sound waves passing onto other ear. All
these considerations are done by the brain in determining the source of sound.

Fig. 3.2 Anatomy of outer ear
The middle ear is situated after external ear before inner ear illustrated in Figure 3.3.
The eardrum i.e. the tympanic membrane separates the middle ear from the ear canal
belonging to the outer ear. The middle ear propagates vibrations by the ear drum to the
fluid of inner ear. The chain of movable bones makes the transfer of vibrations
possible. These bones are called as ossicles that extend through the corresponding
muscles of middle ear.


The tympanic membrane is about 5 mm in radius. Its shape is slightly curving inward
on its surface and vibrates in response to sound and is very sensitive to pain. The
auditory tube exposes the outside of the membrane to the atmosphere enabling its
cavity i.e. tympanic cavity will be continuous in jaw and the throat regions shown in
Figure 3.4. The mouth actions such as chewing and swallowing open the auditory tube
which is closed generally. This opening of the auditory tube enables the middle ear air
pressure to be in balance with atmospheric pressure. Tympanic membrane’s vibrations
are suppressed if there is excess pressure; as a result the sense of hearing gets affected.

Fig. 3.3 Anatomy of the middle ear
The inner ear is connected to the brain through the auditory nerve wherein the sound
signal needs to be converted into electrical signal. This signal is processed in the brain
a reaction is sent through the nerve connections. The main part of the ear is the cochlea
and its hair cells which are responsible for frequency decomposition. This forms the
base for the proposed device


Fig. 3.4 Anatomy of the inner ear
3.2 Cochlea anatomy and function
Cochlea is the organ of hearing shown in Figure 3.5. It is called this way because it is
the main part of the ear which converts the sound signals in to sense of hearing. Its
shape is in the form of snail like spiral, so that its longer shape perfectly fits inside a
bounded space. The tube of cochlea is divided into scala vestibuli, cochlea duct(scala
media) and scala tympani. These three parts are bundled up a spiral stari-case in the
cochlea. Acting as the upper chamber, the base of scala vestibuli is the oval window.
Scala tympani is the lower chamber which has a basal aperture and rounded window,
which is enclosed in an window that exhibits elasticity. The cochlea duct separates the
other two chambers of cochlea. The start of cochlea is called as the basal end and the
other end is called as apex. Helicoterma situated at the apex of cochlea duct enables
the communication between scala vestibuli and scala tympani.
Perylimph is filled in by both scala vestibuli and scala tympani, whereas cochlear duct
is filled in with fluid called endolymph containing high potassium and low sodium


The organ of corti is consists of hair cells that act as receptors. The hair cells near the
larger end of cochlea respond to high pitches sounds where as those at smaller end and
rest of the cochlea respond to sounds with low pitch. The nerves that connect these
hair cells to the brain are subjected to damage due to various reasons. As the
tympanum pushes back and forth against the cochlea compress the fluid to create
waves in the compartment filled with fluid when the tympanum moves back and forth
against the cochlea. Specific nerve impulses are created depending upon the wave
characteristics. The hair cells convert the vibrations into sound signals. The base of the
brain receives the nerve impulses that are formed from vibrations that are sent using
auditory-nerve. This way the sound message is passed to the brain.

Fig. 3.5 Cochlea structure with hair cells
The frequency distribution of the cochlea along with the watery liquid filled inside it is
useful for transmission of signal to the brain. The cochlea is made of basilar membrane
which contains hair cells and liquid present inside it. It contains hair cells responsible
for amplification shown in Figure 3.6.


Fig. 3.6 Cochlea frequency decomposition
When the sound waves travels from the base to the apex in the basilar membrane, the
pressure wave deformation occurs at specific area on the membrane depending on the
frequency of vibration. The frequency of vibration is larger at the base (kHz) and
reduces at the apex (Hz) .
After different places being invoked that is by place coding, the nerve ends are
electrically impulse. Due to which the signal is acquired by the brain instantaneously.
From the frequency distribution it can be found that the frequencies that can be
conducted by the ear are in the range of 20 Hz – 20 kHz. The cations potassium and
calcium present in and near the hair cells are responsible for the signals transferring.
As the ions move towards and into the particular hair cell there would be change in the
pressure present near it. This enables the nerve connection to get stimulated


In the previous design of tactile hearing aids, the stimulation of the skin is done by
placing electrodes on the skin. It is known to have large drawbacks as the electrodes
when placed on the human body may pass current through the skin when proper
insulation is not done. Thereby causing harm to the person wearing it. So the vibration
motors are being used instead of the electrodes to avoid such risks. It detects sounds
from events picked up by a microphone, adapts the sound to the frequency sensitivity
range of the skin using algorithms developed based on modulating, transposition, or
filtering principles, and translates the signal as vibrations.
A four-channel-array skin hearing aid is developed by segmenting the entire acquired
speech into four FIR (Finite Impulse Response) filters based on the frequency
spectrum 11 – 20. This is given to the four respective vibratory motors to stimulate
the skin. This technology is advantageous than other devices since it doesn’t require
any operator, not relying on intact hearing, low cost and is comparatively safer to use.

4.1 Introduction to a tactile sensing

In a new study, it is found that the timing and frequency of vibrations produced in the
skin when you make the hands move on any surface plays an important role in how we
use our sense of touch. It is known that the sense of touch helps to gather information
about the objects and surfaces around us. Receptors present in the skin are spread in
the form of a grid or sort of rows and columns. When we touch any object grid
consisting of many receptors on various levels of the skin will transmit the signal
containing information about the surface to our brain.


The skin is also sensitive to vibrations of different magnitudes. These vibrations
produce or send information to the afferents or the nerves that carry signals from the
receptor to the brain. This exact timing and frequency response of the neural system
conveys specific information about texture of brain which is similar to the frequency
of vibrations on the eardrum conveying information about the sound signal. Hence
proving that the place theory or frequency distribution of ear in the cochlea as shown
in Figure 4.1 is similar to that of skin.

Fig. 4.1 Frequency distribution

4.2 Block Diagram of the device

The block diagram shown in Figure 4.2 depicts the basic structure in design of the
tactile device. The microphone is used for acquiring data from the surrounding. This
data i.e. the speech signal is sent to the DSP (Digital Signal Processor) for further
processing. In this processor the segmentation of the signal is done into four channels
by filters .This depicts a four channel array on the skin.


Fig. 4.2 Block diagram representation of the proposed device

The motor drive is used for interfacing the processor to the vibration motors. The four
channels are connected to four vibration motors. This forms the array of four on the
skin. The sensitivity of the motor is intensified so that it would match the skin
detectable range. A separator is placed between the skin and the vibrators for
increasing the vibration effect and also to avoid the motor from getting in contact with
any obstacle which prevents from rotating. The motors are separated from each other
with a distance of 3cm apart to increase the sensitivity which is shown in Figure 4.3.

Fig. 4.3 Motor placement on the skin

4.3. Digital Signal Processor

In signal processing of any digital signal a processor is required. Such a digital
processor does the operations mathematically to provide the required output. A
microprocessor is generally used for this purpose. This is a most important technology


to be established in 21st century. It takes data such as images, audio, video which are
manipulated using various algorithms shown in Figure 4.4.

Fig. 4.4 DSP diverse applications
First of all a signal must be converted from analog to digital using ADC (Analog to
Digital Converter). This converted signal is then utilized for processing using various
algorithms already implemented as tasks in the processor. This then is converted to the
required analog form using DAC (Digital to Analog Converter) shown in Figure 4.5.
There is a need of converters to be present along with the memory chip. In the entire
processor mathematical algorithms are fed for the different tasks to be performed. The
memory is based on the processing required during the processing. The serial and
parallel communications are present in this chip.


Fig. 4.5 Components of Digital Signal Processor

4.3.1. Filter bank
The proposed device requires signal processing of the audio or the speech signal
provided to it through the microphone. The obtained signal should be converted into
digital signal for further processing. This is done in MATLAB, using various methods.
The converted signal is passed through the filter banks. The filtering is the removal of
noise or unwanted components from the speech signal. By the usage of these filters
signal can be restored or signal separation can be done. One such filter is FIR filter
whose response is of finite impulse response. These are generally preferred as they are
feasible and practical than any other digital filters. For a filter of order N, the output is
given by weighted sum of the most recently obtained input values with the coefficients
multiplied. The FIR filter is made up without any feedback which means the
denominator has a value of 1
FIR filters are mainly used because of the following advantages namely,
• Eliminate channel interactions
• Linear phase response requirement
• Easily designed for most custom requirements in frequency response


• Do not require feedback, this feature helps to eliminate feedback errors
• FIR filters always have their poles at zero due to D(z)=1,always being
ensured of the stability
A FIR filter is used to implement all types of digital related frequency responses.
Usually FIR filters are designed using adders, multiplier including a series of delays to
obtain the required output from the filter. The result of the filter is a mixture of delays
operated on input sample.
The filter architecture is shown in fig 4.6. The values of (H0, H1…..HN) are the
coefficients used for multiplication. This indicates that the output is a summation of all
delayed samples multiplied by the manipulated appropriate coefficients.
Fig. 4.6 FIR architecture
The filter design is originally defined as the process of choosing the length (order) and
coefficients of the filter. All the filter designs are based on the approximation of any
ideal filter. So the obtained filter is a closer view of the ideal filter characteristics.
Thereby, as the filter order increases makes the filter design and its implementation


complex. The design starts with the specification of the required FIR filter
characteristics. The specification in detailed implies frequency response design. The
response of the filters is classified into three kinds based on the frequencies such as
stop band, pass band and transition band. The response of the pass-band is the filter’s
effect on the frequency components that are obtained without any effect. The
frequencies in a filter’s stop-band are highly reduced. The transition band signifies the
frequencies in the middle, which may receive a little reduction, but are not detached
completely from output signal. Now, for the required device the filters are designed for
four channels based on required the cut-off frequency. The range of the frequency
spectrum expands the human hearing range. The set of filters are designed based on
the cochlea implantation filter design. The first filter is chosen to be a low pass filter
with cut-off between 0-250Hz and the other filters are designed as shown in Table 4.1.
The filter outputs are then given to the array of four vibrators through the motor drive
as shown in Figure 4.7.

Table 4.1 Filter Bank

To design the filters MATLAB is used with the filter being used is Kaiser Window
with a window length of 877 20. The Kaiser Window is mainly preferred among
other FIR filters because it is better in implementation for audio signals.
2. BAND-PASS FILTER -1 (BPF1) 250-350Hz
3. BAND-PASS FILTER- 2 (BPF 2) 350-450Hz


Fig. 4.7 Block-Diagram of FIR filter design

The Kaiser window is implemented in MATLAB using the toolbox used for filter
design known as fdatool consisting of many tools required mainly for a analysis
purpose such as frequency response, magnitude and phase plot. Using the filter
designer which is fdatool in MATLAB, the window length, types of filter, response
type, and frequency specifications can be done. The filter design done for the four
various filters is done as shown in Figure 4.8.
The fdatool is used for designing a filter whose sampling frequency is chosen as to be
the 7510 Hz as shown in Figure 4.9. The beta value of the Kaiser Window is chosen to
be 0.6. The audio signal originally is of 44100 Hz. Then down-sampled by a factor of
6 for reducing samples.
4.4 Vibration motor array
The vibration from the each of the filters is given to the array of vibratory motors.
These are chosen because they can be sensed by the skin when given with a particular
range of vibration. The motor is chosen with the better performance of particular size
as tabulated in Table 4.2.



Fig. 4.8 Frequency Distribution

Fig. 4.9 fdatool in MATLAB


The operating range of the vibratory motor is found to be in the range of values
between 0.15 to 1 Duty Ratio. The speed is found to be 9000 rpm. The resolution of
the vibration motor is 0.05 Duty Ratio.
Table 4.2 Specification of the vibration motor

4.5 Arduino
As already known Arduino is an open-source hardware wherein the coding can be
done easily. The Arduino is a single board microcontroller which helps in
miniaturization.In this device designing Arduino Uno is been used for its user-friendly
coding availability. The operating range is of 5V, the coding is done through
MATLAB. Since the add-ons are done in MATLAB for Arduino processing of signal
and controlling can be done on a single platform. The PWM (Pulse Width Modulation)
pins of the Arduino are used for connecting the vibratory motors which operate for
these signals as illustrated in Figure 4.10. The range of PWM (Pulse Width
Modulation) is 0 – 255 values which is divided from 0 – 1 on the Arduino board. The
four pins of Arduino board are connected to the four channels the vibration motor
array placed on the skin.
Parameter Specification Condition
Body Diameter 6mm Max. body Diameter
Body Length 12.3mm –
Unit weight 2.1g –
Rated Vibration
Speed 9,000 rpm At rated voltage using
the inertial test load
Typical Vibration
1G Peak-to-peak value at
rated voltage using the
inertial test load
Typical Vibration
9.5G/W At rated voltage using
the inertial test load
Max. Start Voltage 0.8V Measured at no load


Fig. 4.10 Arduino board pin mapping

4.6. Algorithm for speech processing
Input : Speech signal (Mic./File)
Output : Voltage signal to Arduino
Step: 1 To acquire the speech signal and provide as a wav file to MATLAB.
Step: 2 The audio signal is down-sampled by a factor of 6 to reduce the number of
Step: 3 The segmentation of the speech signal into different frequency spectrum
using filter banks.
Step: 4 The FFT are done for the various filters and the spectrum is analyzed.
Step: 5 Adjustment of the gains of each filter banks are done by plotting the
Step: 6 Command is given to the vibration motors according to the speech




The prototype of the assistive device is shown in Figure 5.1(a) with connection to the
Arduino Uno board. The coding is done for acquiring of signal and providing it to the
motors. Then the device is placed around the hand making all the four vibratory
motors in contact with the skin for the sense of touch as shown in the Figure 5.1(b)

(a) Prototype with Arduino (b) Placement of Prototype
Fig. 5.1 Prototype of the assistive device

5.1 Evaluation of vibration sensitivity
In general, sensitivity of any device is stated as the minimum magnitude of the input
signal required to produce a specified or detectable output signal. For the proposed
device, we are interested in finding the sensitivity of the human skin i.e. to find the
tactile sensitivity. To test the sensitivity the vibration motor is placed on the skin.


Then different Duty-Ratios are given to the motor through the Arduino. The confusion
matrix is obtained with the data obtained after testing. As a first part of testing, the
vibration motor is checked for the sensitivity on the human skin. For this purpose the
motor is placed in contact with the human skin. Then different random duty cycles are
provided for testing to the person. The sensitivity matrix is obtained for the same using
MATLAB as shown in Figure 5.2.
The classification of the data is done into three classes as on, off and increment. The
analysis of the confusion matrix provides the sensitivity of the motor. The output of
the confusion matrix obtained is an output of 99% i.e. the sensitivity with an error of

Fig. 5.2 Confusion matrix for sensitivity
5.1 Validation using standard speech signal
The vowels are chosen for the purpose of testing. The analysis of the spectrum and
envelope is done in MATLAB using various tools. The continuous speech signal for
the vowel ‘a’ is shown in Figure 5.3.


The signal obtained has sampling frequency of 44100 Hz. This signal is down-sampled
to reduce the number of samples to 7510 Hz .The single sided frequency spectrum is
shown in Figure 5.4 (a). The single sided spectrum after sampling of the signal is
shown in Figure 5.4 (b). The spectrum output can be analyzed and the signal peak
energy frequencies can be identified using the amplitude envelope. This data can be
used to change the gains of the filters based on the maximum peak value of energy
obtained in the amplitude plot. The gain is increased so that the motor will rotated for
those values in a higher voltage value.

Fig. 5.3 Continuous time signal of vowel ‘a’


(a) before down-sampling (b) after down-sampling
Fig. 5.4 Single-sided frequency spectrum of vowel ‘a’
Then the sampled signal is passed through the Filter bank consisting of four filters
namely low, band-pass 1, band-pass 2 and high pass filters.
The frequency spectrum for each filter is chosen between 0Hz – 20kHz. The fdatool is
used for the design purpose. The coefficients of each filter are obtained and given to
the filter design. The graph of the low-pass in the range of 0 – 250Hz is obtained in the
Figure 5.5(a). The graph of band-pass filter 1 is obtained in range of 250Hz – 350Hz
as shown in Figure 5.5(b). Thereby the graph of band-pass filter2 is obtained in the
350Hz – 450Hz range shown in Figure 5.6(a). Similarly the high-pass is designed for
above 450Hz. As shown in Figure 5.6(a).


(a) Low Pass Filter (b) Band-Pass Filter 1
Fig. 5.5 Filter banks for two channels

(a) Band-Pass Filter 2 (b) High Pass Filter
Fig. 5.6 Design of filter bank


A certain number of profoundly deaf subjects were chosen and the vowels were given
randomly as stimuli. Initial testing of the device was done by acquiring vowels from
the standard database known as International Phonetic Alphabet (IPA).The training
was done for a longer period for the vowels ‘a’, ‘e’ and ‘i’ .Then the results were
analyzed using confusion matrix and found to be 98% accurate as shown in Figure 5.7.
Furthermore, online voice recording of the vowels was provided to the two people and
required more time for learning. The testing for these online data acquired is done for
the vowels ‘a’ and vowel ‘e’.

Fig. 5.7 Confusion matrix for vowel a, e ,i


5.2 Validation using actual speech signal
The accuracy is decreased to around 86.7% showing a lot of variation as shown in
Figure 5.8.Online speech signal output for vowels ‘a’, ‘e’ .

Fig. 5.8 Confusion matrix for actual speech signal

Signals are obtained but with different training periods. The online speech signals are
obtained through the microphone and passed through the filter banks. It is found that
the amount of error increased.
5.3 Limitations
It is found during the training period that the person undergoing had problems in
learning the vowels beyond ‘a’, ‘e’, ‘i’. The learning period also increased as the
number of vowels increased. The vowels are chosen as they are periodic in nature. But
if the training is increased to phonetics and other words there would be more
difficulties and challenges while teaching. But the fact of interest is that the person
would get the sense of hearing while using the proposed device.




According to the WHO, it is found that a large number of world populations are facing
with the problem of hearing loss. There are different causes of hearing loss such as
aging, exposure to loud noises or hereditary. They are treated separately using a
hearing aid, CI or ALD. Unlike other assistive devices, the proposed device is
formulated on the basis of place theory of ear which is similar to that of skin.
Therefore, the device contains vibrators which are used to stimulate the grids present
on the skin. The filter design is done for the speech signal acquired using MATLAB.
The filter design is done for the window length 877 using fdatool. The output is given
to the array of four vibration motors. Since four motors are being used, this forms a
four-channel motor array.
The sensitivity and the resolution of the vibration motor is found using the confusion
matrix. The prototype is placed on the hand and various vowels are given. The output
is plotted using a confusion matrix which gives the accuracy of the vowels ‘a’, ‘e’, ‘i’
with accuracy of desired range. The frequency spectrum and envelope is used for the
design of the filters. In future scope, the inclusion of the lip-reading might help in
increasing the accuracy rate.


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vibrotactile device, Queen’s University, Kingston, Canada, 1979.

8. Brooks PL, Frost BJ (1983) Evaluation of a tactile vocoder for word recognition.
J Acoust, Soc Am 74:34-39.
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deaf subjects using the Queen’ s University tactile vocoder, Queen’s University,
PhD diss., Ontario, Canada.

10. Gibson DM (1983), Tactile Vocoder User Manual, Queen’s University, Kingston,
Canada, Dept Electrical Engineering.

11. Yeni-Komshian GH, Goldstein MH (1977)Identification of speech sounds
displayed on a vibrotactile vocoder. J Acoust Soc Am, 62 :194-198.

12. EILERS, R. E., OZDAMAR,OLLER, D. K., MISKIEL, E. and URBAN (1989) The
effect of vocoder filter configuration on tactual perception of Speech”, J. Rehab.
Res. Dev.,26, 51–64.

13. Jianwen Li (2014) Cutaneous sensory nerve as a substitute for auditory nerve in
solving deaf-mutes’ hearing problem: an innovation in multi-channel- array skin-
hearing technology, Neural Regeneration Research, 9, Issue 16, 1532-1540.


14. Beachler CA, Carney AE (1986), “Vibrotactile perception of suprasegmental
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mechanical Vibration”. Journal of Experimental Psychophysics, 74, 294-299.

16. Bolanowski, S. J., Jr., Gescheider, G. A., Verrillo, R. T. and Checkosky,
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A.1 Program to initializes arduino

This program is to initialize the arduino and connect the four motors,

a = arduino(‘COM3’, ‘Uno’, ‘Libraries’, ‘AdafruitMotorShieldV2’)
addOnShield = addon(a, ‘AdafruitMotorShieldV2’);

A.2 Program for cross coupled controller

This program is to obtain an online audio signal

recObj = audiorecorder
disp(‘Start speaking.’)
recordblocking(recObj, 1);
disp(‘End of Recording.’);

A.3 Program for Filter design

This program helps in implementing the data obtained from microphone to FIR
x,fs = audioread(‘C:UsersuserDesktopevowel.wav’); %audio signal from
TotalTime = length(x)./fs;
t= 0:TotalTime/(length(x)):TotalTime-TotalTime/length(x);
f0 = (0:length1-1)*(fs/length1);


pow0 = abs(orig_fft).^2/length1;
y=downsample(x,6,0); % down-sampling of the signal
total1 = length(y)./tdown1;
t11= 0:total1/(length(y)):total1-total1/length(y)
f1 = (0:length1-1)*(tdown1/length1);
pow1 = abs(y11).^2/length1;
% Coefficients of LPF
F2 = (0:n10-1)*(tdown1/n10);
pow2 = abs(f_low).^2/n10;


Num12=-1.84603780799603e-06,-2.09491419898238e-06… %Coefficients
of %BPF-1
F3= (0:n11-1)*(tdown1/n11);
pow3 = abs(f_bp1).^2/n11;
Num13=-1.51183845499752e-06,-1.22754109430845e-0… %coefficients of
F4= (0:n12-1)*(tdown1/n12);
pow4 = abs(fbp2).^2/n12;
Num14=9.54656491058925e-06,2.19734152608253e-05… %coefficients of


F5= (0:n13-1)*(tdown1/n13);
pow5 = abs(fhigh1).^2/n13;
for( i=1:100:length(bp_2))
writePWMDutyCycle(a,’D11′,0); % to make PWM values to zero


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