Design of EOG based Human Machine Interface system

Similar documents
An EOG based Human Computer Interface System for Online Control. Carlos A. Vinhais, Fábio A. Santos, Joaquim F. Oliveira

1. INTRODUCTION: 2. EOG: system, handicapped people, wheelchair.

Design and Experiment of Electrooculogram (EOG) System and Its Application to Control Mobile Robot

A Study on Gaze Estimation System using Cross-Channels Electrooculogram Signals

Using Eye Blinking for EOG-Based Robot Control

Retina Based Mouse Control (RBMC)

ELECTROOCULOGRAPHIC GUIDANCE OF A WHEELCHAIR USING EYE MOVEMENTS CODIFICATION

Florida Atlantic University Biomedical Signal Processing Lab Experiment 2 Signal Transduction: Building an analog Electrocardiogram (ECG)

CHAPTER 3. Instrumentation Amplifier (IA) Background. 3.1 Introduction. 3.2 Instrumentation Amplifier Architecture and Configurations

SMART Wheelchair by using EMG & EOG

Human Computer Interaction using Eyes (HCIE)

Motor Imagery based Brain Computer Interface (BCI) using Artificial Neural Network Classifiers

Design and development of a Virtual Instrument for Bio-signal Acquisition and Processing using LabVIEW

International Journal of Electronics and Communication Engineering & Technology (IJECET), ISSN COMMUNICATION ENGINEERING & TECHNOLOGY (IJECET)

DESIGN AND IMPLEMENTATION OF EMG TRIGGERED - STIMULATOR TO ACTIVATE THE MUSCLE ACTIVITY OF PARALYZED PATIENTS

Portable, Low Cost, Low Power Cardiac Interpreter

Non-Invasive EEG Based Wireless Brain Computer Interface for Safety Applications Using Embedded Systems

About the Tutorial. Audience. Prerequisites. Copyright & Disclaimer. Linear Integrated Circuits Applications

EDL Group #3 Final Report - Surface Electromyograph System

TRANSDUCER INTERFACE APPLICATIONS

ELG3336 Design of Mechatronics System

Review on Eye Movement Controlled Wheelchair

Proceedings of the 6th WSEAS International Conference on Applied Computer Science, Tenerife, Canary Islands, Spain, December 16-18,

Non Invasive Brain Computer Interface for Movement Control

Kanchan S. Shrikhande. Department of Instrumentation Engineering, Vivekanand Education Society s Institute of.

STM32 microcontroller core ECG acquisition Conditioning System. LIU Jia-ming, LI Zhi

An Electooculogram Based Virtual Instrumentation System

Biomedical Sensor Systems Laboratory. Institute for Neural Engineering Graz University of Technology

Ques on (2): [18 Marks] a) Draw the atrial synchronous Pacemaker block diagram and explain its operation. Benha University June 2013

Brain-computer Interface Based on Steady-state Visual Evoked Potentials

EECE Circuits and Signals: Biomedical Applications. Lab ECG I The Instrumentation Amplifier

Deepali Shukla 1 (Asst.Professor), Vandana Pandya 2 (Asst.Professor) Medicaps Institute of Technology & Management, Indore (M.P.

Massachusetts Institute of Technology MIT

Lecture 14 Interface Electronics (Part 2) ECE 5900/6900 Fundamentals of Sensor Design

A Finite Impulse Response (FIR) Filtering Technique for Enhancement of Electroencephalographic (EEG) Signal

Operational Amplifier BME 360 Lecture Notes Ying Sun

Available online at ScienceDirect. Procedia Computer Science 105 (2017 )

Denoising EOG Signal using Stationary Wavelet Transform

When input, output and feedback voltages are all symmetric bipolar signals with respect to ground, no biasing is required.

BIOMEDICAL INSTRUMENTATION PROBLEM SHEET 1

Fluxgate Magnetometer

Precision in Practice Achieving the best results with precision Digital Multimeter measurements

Laboratory 4 Operational Amplifier Department of Mechanical and Aerospace Engineering University of California, San Diego MAE170

BME 3113, Dept. of BME Lecture on Introduction to Biosignal Processing

DESIGN OF LOW POWER SAR ADC FOR ECG USING 45nm CMOS TECHNOLOGY

Operational Amplifiers

ANALYSIS AND DESIGN OF HIGH CMRR INSTRUMENTATION AMPLIFIER FOR ECG SIGNAL ACQUISITION SYSTEM USING 180nm CMOS TECHNOLOGY

Analysis of Instrumentation Amplifier at 180nm technology

Ultra Low Power Multistandard G m -C Filter for Biomedical Applications

Design and Implementation of Digital Stethoscope using TFT Module and Matlab Visualisation Tool

ADVANCES in NATURAL and APPLIED SCIENCES

A Body Area Network through Wireless Technology

Towards a Google Glass Based Head Control Communication System for People with Disabilities. James Gips, Muhan Zhang, Deirdre Anderson

Analog I/O. ECE 153B Sensor & Peripheral Interface Design Winter 2016

Research Article Gaze Estimation Method Using Analysis of Electrooculogram Signals and Kinect Sensor

Data acquisition and instrumentation. Data acquisition

Electronics basics for MEMS and Microsensors course

BRAINWAVE CONTROLLED WHEEL CHAIR USING EYE BLINKS

Biomedical Instrumentation (BME420 ) Chapter 6: Biopotential Amplifiers John G. Webster 4 th Edition

CHAPTER 7 HARDWARE IMPLEMENTATION

Analog front-end electronics

Research Article. ISSN (Print) *Corresponding author Jaydip Desai

LOW VOLTAGE / LOW POWER RAIL-TO-RAIL CMOS OPERATIONAL AMPLIFIER FOR PORTABLE ECG

AD8232 EVALUATION BOARD DOCUMENTATION

Identification of Electrooculography Signals Frequency Energy Distribution Using Wavelet Algorithm

Eye Tracking Computer Control-A Review

Voice based Control Signal Generation for Intelligent Patient Vehicle

Lecture 4 Biopotential Amplifiers

Special-Purpose Operational Amplifier Circuits

Sensing and Processing of EOG Signals to Control Human Machine Interface System

EE 230 Experiment 10 ECG Measurements Spring 2010

Bio-signal research. Julita de la Vega Arias. ACHI January 30 - February 4, Valencia, Spain

Instrumentation amplifier

Concepts to be Reviewed

Operational amplifiers

EXAM Amplifiers and Instrumentation (EE1C31)

Analysis and simulation of EEG Brain Signal Data using MATLAB

Design of Virtual Sphygmomanometer Based on LABVIEWComparison, Reflection, Biological assets, Accounting standard.

INTERNATIONAL JOURNAL OF COMPUTER ENGINEERING & TECHNOLOGY (IJCET) DESIGN OF A LINE FOLLOWING SENSOR FOR VARIOUS LINE SPECIFICATIONS

EMG click PID: MIKROE-2621

Bio-Potential Amplifiers

BRAINWAVE RECOGNITION

Operational Amplifiers

HUMAN DETECTION AND RESCUE USING BIO POTENTIAL SIGNALS

EOG artifact removal from EEG using a RBF neural network

A Study on Ocular and Facial Muscle Artifacts in EEG Signals for BCI Applications

IMPLEMENTATION OF REAL TIME BRAINWAVE VISUALISATION AND CHARACTERISATION

Portable EEG Signal Acquisition System

WIRELESS ELECTRONIC STETHOSCOPE USING ZIGBEE

Obstacle Avoiding Robot

Intro To Engineering II for ECE: Lab 7 The Op Amp Erin Webster and Dr. Jay Weitzen, c 2014 All rights reserved.

ENGR 499: Wireless ECG

STATION NUMBER: LAB SECTION: RC Oscillators. LAB 5: RC Oscillators ELECTRICAL ENGINEERING 43/100. University Of California, Berkeley

DEMONSTRATION OF AUTOMATIC WHEELCHAIR CONTROL BY TRACKING EYE MOVEMENT AND USING IR SENSORS

A Low-Noise AC coupled Instrumentation Amplifier for Recording Bio Signals

BME 405 BIOMEDICAL ENGINEERING SENIOR DESIGN 1 Fall 2005 BME Design Mini-Project Project Title

ECE 480 Design Team 6 Electrocardiography and Design

Physiology Lessons for use with the BIOPAC Student Lab

International Journal of Advanced Research in Electrical, Electronics and Instrumentation Engineering. (An ISO 3297: 2007 Certified Organization)

NEWS RELEASE IMEC REPORTS TWO WIRELESS PLATFORMS FOR BIOMEDICAL MONITORING

Transcription:

Design of EOG based Human Machine Interface system Subash Khanal, Rajesh N., Prajwal Bhandari Dept. of ECE, Nitte Meenakshi Institute of Technology, Bangalore, India Email: subash.khanal33@gmail.com Abstract According to study on physically disabled individuals with severe paralysis, it is found that those patients still retain the ability of eyeball movements. Various systems are being developed to assist the mobility of such patients. Electroencephalogram (EEG) based Human Machine Interface (HMI) systems are being developed which not only require high computational complexity but also are not cost effective. In this paper we have discussed a cost effective and reliable approach towards Human Machine Interface using Electrooculography (EOG). EOG is a physiological signal which can be recorded from temple of eyes during eyeball movements. EOG being a voluntary biomedical signal, it can be used in HMI applications which make the desired control of a machine, a reality. In our work, we have designed a signal acquisition and conditioning unit which gives out the filtered and amplified signal used for the demonstration of HMI based on EOG. The designed system is found to showcase reliable performance in terms of obtaining EOG signal, its conditioning and its desired application. Keywords Electrooculography (EOG), paralysis, eye movements, electrodes, filters, signal conditioning, Human Machine Interface (HMI). I. INTRODUCTION According to world health organization 2-5% of people living in our society are suffering from motor disabilities, they cannot move their hand and/ or leg but they can think or they can move their eyes.[1]. In order to assist them for mobility various systems are being developed. Such systems should possess reliable interface between the disabled individual and the assisting machine. Electroencephalogram (EEG) based Brain Computer Interface (BCI) can be used to cater this need. However, the complexity involved, cost, number of electrodes required and discomfort experienced by the patient makes EEG based HMI rather an unsuitable approach. Then comes an easier and reliable approach, which exploits the fact that even severely paralyzed individuals retain their ability to move their eyes in the desired direction. Thus, in our work we have discussed about EOG based HMI targeted to individuals with motor disabilities. The signal acquisition and conditioning unit has been designed. EOG signal, filtered and amplified is fed to Arduino board. Finally, Light Emitting Diodes (LEDs) are used to demonstrate the interface with the help of movement of eyeballs by the subject. II. Electrooculogram (EOG) Various eye tracking methods like video-oculography with pupil and corneal reflection, video-oculography with pupil only and Electro-potential oculography are in practice [2], [3], [4].The eye is known to have a resting potential and acts as a dipole in which the anterior pole (cornea) is positive and the posterior pole (retina) is negative. The magnitude of this cornea-retinal potential is in the range 0.4-1.0 mv. This difference in potential can be explained by the metabolic activities in the eye.the Electrooculogram (EOG) signal thus is derived from the polarization potential, also known as the Corneal-Retinal Potential (CRP), generated within the eyeball by the metabolically active retinal epithelium. The CRP is produced by means of hyper-polarizations and de-polarizations of the nervous cells in the retina [5].Electrooculography (EOG) is a technique for measuring this resting potential.the resulting signal is called the Electrooculogram [6]. Fig 1. Polarity of Eye The amplitude of the EOG signal is known to be in microvolt range (15-200 uv) and most of the information is contained in 0 Hz to 38 Hz frequency range with dominant component in 0 to 25 Hz range [7], [8], [9]. Specially designed electrodes for EOG are placed 377 www.ijergs.org

on the corners (lateral canthi) of both the eyes. When the eyes look left the positive end of the dipole (the eye) comes closer to the electrode on the left canthus and the negative end to the right canthus.the vice versa is observed for the eyes looking towards right. Ideally the difference in potential should be proportional to the sine of the angle the eye produces with respect to the central axis. Fig 2. EOG signal based on eyeball movement Silver/Silver Chloride (Ag/AgCl) Electrodes These are specialized bio potential electrodes which are mainly used for bio signal acquisition. The signal from the eye is of low magnitude and is acquired through low impedance electrodes which minimizes signal attenuation. Non-invasive surface ECG Ag/AgCl electrodes were used for picking up EOG signals in our project. These electrodes are attached to the patients skin and can be easily removed. The signal from the lateral canthi of the eyes is converted into voltage by electrodes. In our case, we have used only one pair of ECG surface electrode on the lateral canthi of the eyes. The system developed gives a single channel output to detect lateral eye movements. However, placing the same set of electrodes above and below the user s eye, vertical movement and blink of eyes can be detected. Fig 3. Ag/AgCl electrodes Fig 4. Placement of electrodes 378 www.ijergs.org

III. Literature review Satish Kumar et.al, 2015[1] have proposed a low-cost Electrooculogram (EOG) acquisition system that can be used efficiently in Human Machine Interface (HMI) systems. The proposed system consists of an Op-Amp based EEG/EOG amplifier circuit and ATMega8 microcontroller for analog to digital conversion and transferring of acquired data to PC. In this system five electrodes are used to acquire eye blinking, horizontal and vertical eye movements. In this system, the signals are first captured using EEG surface electrodes, amplified, filtered and then converted into digital form before stored into PC. Theacquired EOG signal provides different eye related activities.depending upon these eye related activities various systems canbe developed to perform different tasks in real world, which provides a degree of independence to the user. Kousik Srathy Sridharan, 2012[10] in his thesis work has built a portable system to acquire and analyse electro-oculographic (EOG) signals in real-time. The system contains two sub-systems; a hardware sub-system that consists of the filters, amplifiers, data acquisition card and isolation and the software sub-system that contains the program to acquire and analyse the signal and present the results to the observer.in his work, one paradigm records only normal blinks while the other records long blinks and the results showed differences in detection and error rates. The observations made from performance tests at various levels gave satisfactory results and proved the usefulness of the system for sleep state and drowsiness detection. A Saravananet. al, 2015[11] have designed a system which incorporates Texas embedded processor, wireless communication solutions and highly-customized analog front ends. As a demonstration of concept, this technology uses instrumentation amplifiers as analog front end and further single supply quad op-amp for analog signal processing in an effective manner. W S Wijesoma et.al, 2005[12].In this paper a complete system is presented that can be used by people with extremely limited peripheral mobility but having the ability for eye motor coordination. The Electrooculogram signals (EOG) that results from the eye displacement in the orbit of the subject are processed in real time to interpret the information and hence generate appropriate control signals to the assistive device. The effectiveness of the proposed methodology and the algorithms are demonstrated using a mobile robot for a limited vocabulary. Ali Marjaninejad,Sabalan Daneshvar, 2014 [13]. In this paper an EOG based low-cost real-time wheelchair navigation system for severely disabled people is presented using signal processing techniques, bio-amplifiers and a microcontroller driven servomotor. All the digital signal processing and execution of commands were performed utilizing a microcontroller which drastically reduced the total cost of this project. The servomotor has been synchronized with the computed eye direction resulted from processing the horizontal EOG signal. The speed of the wheelchair was also regulated with the same EOG signal. Performed tests indicated that in 98.5% of trials, subjects could navigate to their targets in presence of simple obstacles in their first attempts which confirm the feasibility of the proposed system. IV EOG acquisition and conditioning unit EOG signal picked by the surface electrodes is in microvolts range and also contaminated by various noises eg.high frqueuncy noise,junction potential noise between skin and the electrodes,etc. In order to extract essential features from the EOG signal proper signal conditioning is required. EOG acquisition and signal conditioning circuit has two main objectives: 1) To amplify the signal to necessary level and 2) Filter the signal to eliminate noise. Figure 5 depicts the components that were designed to achieve this purpose. Fig 5. System block diagram of EOG acquisition and conditioning circuit 379 www.ijergs.org

1. Instrumentation Amplifier Stage An important stage of all bio-potential amplifiers is the input preamplifier which substantially contributes to the overall quality of the system. The main tasks of the preamplifier are to sense the voltage between two measuring electrodes while rejecting the common mode signal, and minimizing the effect of electrode polarization over potentials. Crucial to the performance of the preamplifier is the input impedance which should be as high as possible. Such a differential amplifier cannot be realized using a standard single operational amplifier design since this does not provide the necessary high input impedance. Hence, instrumentation amplifiers were used to meet the desired requirements. Design: G= Rg +1 For Gain=50, Rg=1K ohm 2. Active Band Pass filter: Fig1. Instrumentation amplifier designed The output obtained from first stage preamplifier has to pass through a band pass filter to remove the unwanted high and low frequencies from the desired EOG signal. Band pass filter used is the combination of a low pass filter (cut off frequency, f c =4.5 Hz) and a high pass filter (f c =0.5 Hz). Band Pass Filter used here is an active band pass filter. High pass filter removes any DC offset at the output of the preamplifier. It means necessary gain can be included in the pass band of the filter while attenuating out of band frequencies. A 100 K ohm potentiometer was used to adjust the gain required. (Filter Design equation: RC= ) Figure 7. Band Pass Filter 380 www.ijergs.org

3. Fixed Gain Amplifier A fixed gain amplifier was used after the band pass filter amplifies the signal with the necessary gain. Inverting amplifier configuration in an op amp was used to achieve this fixed gain amplification. Gain = Fig 8. Fixed gain Amplifier 4. Active Low Pass Filter While amplifying the signal using a fixed gain amplifier, there is a chance for unwanted high frequency noise getting amplified. Therefore, it became necessary to make use of an Active Low Pass filter which not only attenuates the high frequency components but also provides substantial gain to the signal within the required bandwidth. A variable gain can be implemented in the Low Pass Filter by making use of a potentiometer on the feedback path.a 100K potentiometer is used for adjusting required variable gain. Figure 9. Active Low Pass Filter 381 www.ijergs.org

5. DC Level Shifter The EOG signal obtained after above signal conditioning steps is bipolar in nature, i.e. the signal has positive and negative peaks corresponding to the eyeball movements. However, in order to use the signal further into microcontroller we require to level shift the signal in such a way that no negative peaks are present in the signal. For this reason a DC level shifter was used followed by a negative voltage clipper (using a diode). This ensures the EOG signal have both the peaks above 0 V reference. Fig 10. DC Level Shifter To implement all the above circuit components after the pre amplification provided by an instrumentation amplifier, a Quad- Operational Amplifier (LM324) was used. The overall EOG conditioning circuit was designed and simulated to get the desired frequency response as shown in the figure 11. Fig 11. Frequency response of the EOG conditioning circuit 382 www.ijergs.org

V Demonstration of EOG based HMI The amplified and filtered EOG signal obtained from the designed signal conditioning circuit was sampled by using Analog to Digital Converter (ADC) which is already inbuilt in most of the available development boards. For the type of electrode placement used during our project, it was quite evident that the magnitude of the signal increases above the reference level as the subject moves his eye toward right direction. The signal reaches its positive peak when the eye is at the extreme right position. If the eye is not moving or at the center position the signal comes back to the reference level. Here the magnitude of reference level can be varied by making use of potentiometer available for the DC level shifter in the signal conditioning circuit. Similarly, if the eye ball moves towards the left direction, the signal drops below the reference level and reaches to minimum when the eye is at extreme left. The information about the magnitude of the EOG signal during the eyeball movement can be easily utilized to generate the necessary control signals. Thus, this demonstrates a cost effective, simple yet reliable solution for Human Machine Interface based on eye ball movement. The algorithm to extract the signal features for the eyeball location makes use of simple thresholds. Three thresholds are arbitrarily set for a center, extreme left and extreme right location of the eye. (Say th1, th, th2 respectively). If signal_sample>th1 this indicates eye movement towards right If signal_sample<th2 this indicates eye movement toward left Else, this indicates eye ball is located at the center. However during the implementation of the crude algorithm above, care should be taken that the decision of the generation of control signals is due to the real movements. There can be sudden momentary peaks occurring in the signals that cross the above mentioned thresholds, in such cases a concept of counter can be implemented in the algorithm, i.e. if the signal meets the threshold condition, counter for that particular case is increased. If both the conditions, the amplitude threshold and the counter number threshold, are met the decision is made and a control signal is generated according to that. In our case, for the idea demonstration we have used simple inexpensive LEDs (Light Emitting Diodes). Three LEDs are connected to output pin of the microcontroller used, one each for the three cases of the eye ball movement, LEFT, CENTER and RIGHT. Fig 12. EOG conditioning unit designed Fig 13. Demonstration of EOG based HMI Fig 14. EOG signal displayed in DSO 383 www.ijergs.org

ACKNOWLEDGMENT We express our sincere thanks to every faculty member of the Department of Electronics and Communication Engineering, Nitte Meenakshi Institute of Technology, Bangalore for the support they have provided for successful completion of the project. CONCLUSION The frequency response of the designed EOG conditioning circuit clearly shows that there is a significant gain provided to signal within the desired frequency range (0.5 to 4 Hz) while attenuating the other high and low frequency components. The EOG signal acquired from eye using the designed conditioning circuit was found to be good enough, which was further used to generate control signals to demonstrate led blinks in accordance with eyeball movement. The approach was simple, inexpensive and yet so effective. This meets the objective of our project which aimed at utilizing a biomedical signal for Human Machine Interface targeted for physically disabled individuals. The performance of this approach was really promising in terms of its simplicity and reliability. REFERENCES: [1] Satish Kumar, Adyasha Dash, Manoj Kumar Mukul Design and Development of Low-Cost EOGAcquisition Circuit for HMI Application 2015 2nd International Conference on Signal Processing and Integrated Networks (SPIN). [2] Young L. R. and Sheena D: Survey of Eye Movement Recording Methods, Behavioural Research Methods and Instructions, Volume 7(5), 1975, pp.397 429. [3] Hansen D. W., Hansen, J. P., Nielsen, M., Johansen, A. S. and Stegmann M. B.: Eye Typing using Markov and Active Appearance Models, IEEE Workshop on Applications on Computer Vision, Orlando, FL, USA, 2002, pp.32 136. [4] Gips J., DiMattia P., Curran F.X. and Olivieri P.: Using EagleEyes: An Electrodes based Device for Controlling the Computer with Your Eyes to Help People with Special Needs, In Klaus, J. et al. (eds.) Interdisciplinary Aspects on Computers Helping People with Special Needs, Vienna, 1996. [5] S. Venkataramanan, Pranay Prabhat, Shubhodeep Roy Choudhury, Harshal B. Nemade, J.S. Sahambi Biomedical Instrumentation based on Electrooculogram (EOG) Signal Processing and Application to a Hospital Alarm System Proceedings of ICISIP 2005 [6] Jaakko Malmivuo, Robert Plonsey,: Bioelectromagnetism-Principles and Applications of Bioelectric and Biomagnetic Fields, Oxford University Press,1995, Chapter 28, pp. 437-441. [7] Zhao Lv, Xiao-Pei Wu, Mi Li, De-Xiang Zhang, Development of a human computer interface system, Health vol. 1, 2009. [8] Daud, W.M.B.W. Sudirman, R. ; Al Haddad, A., Wavelet frequency energy distribution of electrooculogram potential towards vertical and horizontal movement, 2nd international conference on computational intelligence modelling and simulation, September 2010. [9] Daud, W.M.B.W., Sudirman, R., A wavelet approach on energydistribution of eye movement potential towards direction, IEEE Symposium on Industrial Electronics & Applications (ISIEA), October 2010. [10] Kousik Sarathy Sridharan, Real-time acquisition and analysis ofelectro-oculography signals, Masters thesis, 2012 [11] A Saravanan et al., Design and implementation of Low power, Cost effective Human Machine Interface by Left and Right Eye Movement Technique,978-1-4673-7910-6/15 20 15 IEEE [12] W S Wijesoma et al., EOG Based Control of MobileAssistive Platforms for the Severely Disabled, 2005 IEEE International Conference on Robotics and Biomimetics. [13] Ali Marjaninejad, Sabalan Daneshvar A Low-cost Real-time Wheelchair Navigation System Using Electrooculography, The 22nd Iranian Conference on Electrical Engineering (ICEE 2014), May 20-22, 2014 384 www.ijergs.org