Body Sensor Networks to Evaluate Standing Balance: Interpreting Muscular Activities Based on Intertial Sensors Rohith Ramachandran Lakshmish Ramanna Hassan.

Slides:



Advertisements
Similar presentations
Effect of an Unstable Shoe Construction on Lower Extremity Gait Characteristics Nigg, Benno M. Ferber, Reed Gormley Tim Human Performance Laboratory University.
Advertisements

An Integrated Approach to Measuring Human Performance.
Research and Coaching Application for USA Seated Shot Put Paralympians.
Data Mining Classification: Alternative Techniques
Abstract Overview Analog Circuit EEG signals have magnitude in the microvolt range. A much larger voltage magnitude is needed to detect changes in the.
Sport Training Using Body Sensor Networks: A Statistical Approach to Measure Wrist Rotation for Golf Swing Paper by Ghasemzadeh, Hassan, et al. Presentation.
Dwaipayan Biswas University of Southampton, U.K. ESS Open Day.
Enabling Always-Available Input with Muscle-Computer Interfaces T. Scott Saponas University of Washington Desney S. Tan Microsoft Research Dan Morris Microsoft.
Doorjamb: Unobtrusive Room-level Tracking of People in Homes using Doorway Sensors Timothy W. Hnat, Erin Griffiths, Ray Dawson, Kamin Whitehouse U of Virginia.
EHealth Workshop 2003Virginia Tech e-Textiles Group An E-Textile System for Motion Analysis Mark Jones, Thurmon Lockhart, and Thomas Martin Virginia Tech.
Studying Relationships between Human Posture and Health Risk Factors during Sedentary Activities Tejas Srinivasan Mentors: Vladimir Pavlovic Saehoon Yi.
Standard electrode arrays for recording EEG are placed on the surface of the brain. Detection of High Frequency Oscillations Using Support Vector Machines:
Forearm Electromyography Muscle-Computer Interfaces Demonstrating the Feasibility of Using Forearm Electromyography for Muscle-Computer Interfaces T. Scott.
A Hierarchical Energy-Efficient Framework for Data Aggregation in Wireless Sensor Networks IEEE TRANSACTIONS ON VEHICULAR TECHNOLOGY, VOL. 55, NO. 3, MAY.
Online classifier construction algorithm for human activity detection using a tri-axial accelerometer Yen-Ping Chen, Jhun-Ying Yang, Shun-Nan Liou, Gwo-Yun.
Presented by Zeehasham Rasheed
Multiple Object Class Detection with a Generative Model K. Mikolajczyk, B. Leibe and B. Schiele Carolina Galleguillos.
Collaborative Signal Processing CS 691 – Wireless Sensor Networks Mohammad Ali Salahuddin 04/22/03.
Distributed and Efficient Classifiers for Wireless Audio-Sensor Networks Baljeet Malhotra Ioanis Nikolaidis Mario A. Nascimento University of Alberta Canada.
Shanshan Chen, Christopher L. Cunningham, John Lach UVA Center for Wireless Health University of Virginia BSN, 2011 Extracting Spatio-Temporal Information.
Involved in bench press and squats. Muscle Forces  The force generated by a muscle action  Depends on: number and type of motor units activated the.
SensEye: A Multi-Tier Camera Sensor Network by Purushottam Kulkarni, Deepak Ganesan, Prashant Shenoy, and Qifeng Lu Presenters: Yen-Chia Chen and Ivan.
Bag of Video-Words Video Representation
ERP DATA ACQUISITION & PREPROCESSING EEG Acquisition: 256 scalp sites; vertex recording reference (Geodesic Sensor Net)..01 Hz to 100 Hz analogue filter;
This week: overview on pattern recognition (related to machine learning)
Sarthak Pati1, Deepak Joshi2, Ashutosh Mishra2 and Sneh Anand2
1 A Portable Tele-Emergent System With ECG Discrimination in SCAN Devices Speaker : Ren-Guey Lee Date : 2004 Auguest 25 B.E. LAB National Taipei University.
ELECTROMYOGRAM Amit Sethi Pre-doc Rehab Sciences, MS OTR/L.
TRAINING AFFECTS KNEE KINEMATICS AND KINETICS IN CUTTING MANEUVERS IN SPORT CASEY GRAHAM TIFFANY MEIER MICHELE BENANTI.
Presented by Tienwei Tsai July, 2005
General Tensor Discriminant Analysis and Gabor Features for Gait Recognition by D. Tao, X. Li, and J. Maybank, TPAMI 2007 Presented by Iulian Pruteanu.
1 Methods for detection of hidden changes in the EEG H. Hinrikus*, M.Bachmann*, J.Kalda**, M.Säkki**, J.Lass*, R.Tomson* *Biomedical Engineering Center.
Automatic Ballistocardiogram (BCG) Beat Detection Using a Template Matching Approach Adviser: Ji-Jer Huang Presenter: Zhe-Lin Cai Date:2014/12/24 30th.
The surface mechanomyogram as a tool to describe the influence of fatigue on biceps brachii motor unit activation strategy. Historical basis and novel.
Moulali.P Central Scientific Instruments Organization (CSIO), Council for Scientific and Industrial Research (CSIR), Chandigarh, India.
Amsterdam – February 2015 Technical Quality Assurance of GA The aim of Technical Quality Assurance (TQA) was to assess the quality of the measurements.
Spam Detection Ethan Grefe December 13, 2013.
Breast Cancer Diagnosis via Neural Network Classification Jing Jiang May 10, 2000.
Presenter: Wei-Chen Lin Adviser: Dr. Cheng-Jui Hung
Efficient Energy Management Protocol for Target Tracking Sensor Networks X. Du, F. Lin Department of Computer Science North Dakota State University Fargo,
Classifying Event-Related Desynchronization in EEG, ECoG, and MEG Signals Kim Sang-Hyuk.
Interactive Learning of the Acoustic Properties of Objects by a Robot
Singer similarity / identification Francois Thibault MUMT 614B McGill University.
CVPR2013 Poster Detecting and Naming Actors in Movies using Generative Appearance Models.
1Ellen L. Walker Category Recognition Associating information extracted from images with categories (classes) of objects Requires prior knowledge about.
Hand Motion Identification Using Independent Component Analysis of Data Glove and Multichannel Surface EMG Pei-Jarn Chen, Ming-Wen Chang, and and Yi-Chun.
IEEE JOURNAL OF BIOMEDICAL AND HEALTH INFORMATICS, VOL. 19, NO
Presented By, Shivvasangari Subramani. 1. Introduction 2. Problem Definition 3. Intuition 4. Experiments 5. Real Time Implementation 6. Future Plans 7.
Chapter 20 Classification and Estimation Classification – Feature selection Good feature have four characteristics: –Discrimination. Features.
Detection, Classification and Tracking in Distributed Sensor Networks D. Li, K. Wong, Y. Hu and A. M. Sayeed Dept. of Electrical & Computer Engineering.
1 Extracting Spatiotemporal Gait Properties from Parkinson's Disease Patients Albert Sama Andreu Català Cecilio Angulo Alejandro Rodríguez-Molinero.
Next, this study employed SVM to classify the emotion label for each EEG segment. The basic idea is to project input data onto a higher dimensional feature.
Smartphone-based Wi-Fi Pedestrian-Tracking System Tolerating the RSS Variance Problem Yungeun Kim, Hyojeong Shin, and Hojung Cha Yonsei University Bing.
Data Mining Techniques Applied in Advanced Manufacturing PRESENT BY WEI SUN.
Trajectory-Based Ball Detection and Tracking with Aid of Homography in Broadcast Tennis Video Xinguo Yu, Nianjuan Jiang, Ee Luang Ang Present by komod.
An E-Textiles. Virginia Tech e-Textiles Group Design of an e-textile computer architecture – Networking – Fault tolerance – Power aware – Programming.
Two-Dimensional Rotational Dynamics 8.01 W09D2
Behavior Recognition Based on Machine Learning Algorithms for a Wireless Canine Machine Interface Students: Avichay Ben Naim Lucie Levy 14 May, 2014 Ort.
Audio-spinal reflex response in human limb muscles
Variation in Shoulder Elevation
My Tiny Ping-Pong Helper
Posture Monitoring System for Context Awareness in Mobile Computing
Automatic Sleep Stage Classification using a Neural Network Algorithm
Dejavu:An accurate Energy-Efficient Outdoor Localization System
Walking Speed Detection from 5G Prototype System
Human Activity Recognition Using Smartphone Sensor Data
Enhancing Diagnostic Quality of ECG in Mobile Environment
Progress Seminar 권순빈.
Machine Learning with Clinical Data
A STUDY ON MOTION MODE IDENTIFICATION FOR CYBORG ROACHES
Presentation transcript:

Body Sensor Networks to Evaluate Standing Balance: Interpreting Muscular Activities Based on Intertial Sensors Rohith Ramachandran Lakshmish Ramanna Hassan Ghasemzadeh Gaurav Pradhan Roozbeh Jafari Balakrishnan Prabhakaran University of Texas at Dallas Presented by, Corey Nichols

Introduction Why i nterpret muscle activities for balance performance based on intertial sensors ? – Rehabilitation, sports medicine, gait analysis, & fall detection all can make use of a balance evaluation. – Inertial sensors currently in use, but do not measure muscle activity directly – Measuring muscle activity may provide additional info Goal – Investigate EMG signals to interpret standing balance – Use inertial sensors to help interpret these signals

Balance Parameters [1] Mayagoitia, R.E., et al., Standing balance evaluation using a triaxial accelerometer. Gait and Posture, : p Parameters are classified as low, medium, and high Want to analyze EMG signals to make the same classifications using Linear Discriminant Analysis (LDA) – LDA: Method in statistics and machine learning to find a linear combination of features that best separates multiple classes of objects or events (source: wikipedia)

Evaluation Model Uses the Balance Evaluation Model from [1] – Uses a single accelerometer Height of the center of mass – Build and trace an acceleration vector

Building and tracing an Acceleration vector

Combined Acceleration: Directional angles using Cartesian Coordinates: D is the combined coordinates in all three directions:

Quantitative Features Total Distance: Mean Speed: Mean Radius: Mean Frequency: Anterior/Posterior Displacement: Medial/Lateral Displacement:

Quantitative Features

System Architecture Inertial Sensor Subsystem EMG Sensor Subsystem Balance Platform

Inertial Sensor Subsystem Body sensor network of two nodes – A tri-axial 2g accelerometer Samples at 40Hz – Base station Collects data over wireless channel Relays info to PC via USB – Sensor data is collected and processed using MATLAB

EMG Sensor Subsystem Four EMG sensors used – Measures electric activity generated by muscle contractions – Electrodes acquire EMG signal – Sample at 1000Hz – Signal is amplified and band-pass filtered to Hz – Data is transferred to a PC and processed off line

Balance Platform Balance ball (half sphere w/ standing platform) – Use a level to control the experiment or for coaching

Signal Processing Feature Analysis Five stages of operation – Data Collection – Parameter Extraction – Quantization – Feature Extraction on EMG – Feature Analysis

Signal Processing Feature Analysis Data Collection – Accelerometer & EMG signals recorded every 4 seconds Parameter Extraction – Extract 5 quantization factors using the accelerometer data Quantization – Classify data into 'low', 'medium' and 'high Within 1 std. Dev. of the mean implies 'medium'

Signal Processing Feature Analysis Feature Extraction on EMG – Obtain an exhaustive set of statistical features from the EMG signals Signal Energy, Maximum Peak, Number of Peaks, Avg. Peak Value, and Average Peak rate Feature Analysis – Using LDA, extract significant features from EMG signals – Determine if the EMG signals are representative of the quantitative features for balance evaluation from the accelerometer

Experimental Procedure Subjects: – 5 males aged and m tall with no disorders – Wore the accelerometer on a belt around the waist with the sensor positioned in the back. – 4 EMG electrodes attached on the lower leg Right/Left-Front (Tibalis Anterior muscle) Right/Left-Back leg (Gastrocnemius muscle)

Experimental Procedure Sensors : – Delsys “Trigger Module” allows the EMG to work sychronously with the accelerometer – MATLAB tool sends the trigger To EMG through the trigger module To accelerometer through USB – MATLAB tool analyzes the data – Data was recorded every 4 seconds

Experimental Procedure Test Conditions: – Nine test conditions – Two trials per condition

Experimental Results 90 trials performed Classifies each trial into 'low', 'medium', & 'high' qualities – Done for each accelerometer parameter – Each EMG feature is assigned the same quality label as its corresponding accelerometer data

Experimental Results Made EMG signals representative of performance parameter for balance evaluation – Used 50% of trials to find significant features – The remaining trials were for evaluation of the system – Extracted 5 signals from each of the four EMG – Form a 20 dimensional space that is representative of some muscle activity properties – LDA is used to select the most prominent feature from the subset

Experimental Results Uses the k-Nearest Neighbor classifier to determine the effectiveness of the EMG features K-NN classifies objects using training examples

Questions?

Related Work A lot of work has been done based on human performance and quality of balance A study on children compared EMG with kinetic parameters for balance responses shows that muscle activities contribute to balance This is the first work that uses inertial sensors to help interpret EMG signals

Conclusion & Future Work Uses acceleration and muscle activity data to perform an analysis during standing balance Break the accelerometer data down into five metrics Prominent features are extracted from EMG signals using the accelerometer data to evaluate the balance Future goals: – Integrate a “gold standard balance system” with their experiments – deploying a system that performs the data processing in real-time