iitb.ac.in, ee.iitb.ac.in 1/25 Indicon2013, Mumbai, 13-15 December 2013, Paper ID 1084 Track 4.1 Signal Processing & VLSI (Biomedical.

Slides:



Advertisements
Similar presentations
Tri-Band RF Transceivers for Dynamic Spectrum Access By Nishant Kumar and Yu-Dong Yao.
Advertisements

DATA COLLECTION USING ZIGBEE NETWORK Timothy Melton Moscow, ID.
Microcontroller – PIC – 4 PIC types PIC architecture
Swish Sleeve Software Design Narrative Team 7: Stephen MacNeil, Michael Kobit, Sriharsh Achukola, Augustus Hong 1Team 7 - Swish Sleeve.
Autonomous Helicopter: James Lyden Harris Okazaki EE 496 A project to create a system that would allow a remote- controlled helicopter to fly without user.
Ryan Roberts Gyroscopes.
RADIO FREQUENCY MODULE. Introduction  An RF module is a small electronic circuit used to transmit and receive radio signals.  As the name suggests,
Electrical and Computer Engineering SMART GOGGLES To Chong Ryan Offir Matt Ferrante James Kestyn Advisor: Dr. Tilman Wolf Preliminary Design Review.
Initial Position Orientation Tracking System (IPOTS) Group Members: Keiichi McGuireHenry Pham Marc TakamoriScott Spiro.
Mica: A Wireless Platform for Deeply Embedded Networks Jason Hill and David Culler Presented by Arsalan Tavakoli.
Ping Project Justin Knowles Kurt Lorhammer Brian Smith Andrew Tank ECEN 4610.
Integrated  -Wireless Communication Platform Jason Hill.
ME 224 Final Presentation Fall 2005 Joni Stegeman Ingrid Lin Giovanni Wuisan Patrick Luckow Brent Willson.
A Framework for Patient Monitoring A. L. Praveen Aroul, William Walker, Dinesh Bhatia Department of Electrical Engineering University of Texas at Dallas.
BLDC MOTOR SPEED CONTROL USING EMBEDDED PROCESSOR
Hardware Overview Net+ARM – Well Suited for Embedded Ethernet
Camera Interfacing using ARM7
Introduction to the Orbit Edu Board Ahmad Rahmati Teaching Assistant, ELEC424 Rice Efficient Computing Group Sep 12, 2007.
1 Daniel Micheletti Darren Allen Daniel Mazo Jon Lamb Lyle Johnson Pixel Perfect WiCam: A Wireless Digital Camera Presented by : Kyle Swenson.
RFID for Health Care Tracking and Monitoring
ECE 477 Design Review – Spring 2010 Team 15. Team Members.
4.0 rtos implementation part II
DESIGN & IMPLEMENTATION OF SMALL SCALE WIRELESS SENSOR NETWORK
Kaitlin Peranski Spencer Wasilewski Kyle Jensen Kyle Lasher Jeremy Berke Chris Caporale.
Wireless Intelligent Sensor Modules for Home Monitoring and Control Presented by: BUI, Phuong Nhung, 裴芳绒 António M. Silva1, Alexandre Correia1, António.
Shiv Yukeun Donghan Robert.  Project overview  Project-specific success criteria  Block diagram  Component selection rationale  Packaging design.
1 Department of Electrical and Computer Engineering Advisor: Professor Hollot Team RCA March 1, 2013 Cumulative Design Review.
DLS Digital Controller Tony Dobbing Head of Power Supplies Group.
Gesture Recognition Interface Device
VLSI and Embedded Systems Conference, 5-9 Jan 2014, IIT Bombay, India (VLSIDES14) Session: B-2 Embedded Platform, Venue: VMCC-21, Session Time: 4:30 pm.
Typical Microcontroller Purposes
EWatch: A Wearable Sensor and Notification Platform Paper By: Uwe Maurer, Anthony Rowe, Asim Smailagic, Daniel P. Siewiorek Presenter: Ke Gao.
SunSPOT Wireless Modules Gurdip Singh and Shravanthi Kallem Pervasive Sensor Network Laboratory Computing and Information Sciences.
International Conference on Circuits, Systems, Communication & Information Technology Applications, Mumbai, India April 4-5, 2014 (CSCITA-2014) A V ERSATILE.
Wi-Fi Interface for medical devices Academic Supervisor- Prof.Karen Reynolds Industrial Supervisor- Mrs Jodie Hobbs.
Robotic Arm and Dexterous Hand Critical Design Review February 18, 2005.
Electrocardiogram (ECG) application operation – Part B Performed By: Ran Geler Mor Levy Instructor:Moshe Porian Project Duration: 2 Semesters Spring 2012.
Done By: Amnon Balanov & Yosef Solomon Supervisor: Boaz Mizrachi Project ID: d02310.
ATtiny23131 A SEMINAR ON AVR MICROCONTROLLER ATtiny2313.
EA PROJETO EM ELETRÔNICA APLICADA Bruno Mourão Siqueira.
Interfacing External Sensors to Telosb Motes April 06,2005 Raghul Gunasekaran.
OBSTACLE AVOIDANCE ROBOT
Formula SAE Ryan Langley
SATIRE: A Software Architecture for Smart AtTIRE R. Ganti, P. Jayachandran, T. F. Abdelzaher, J. A. Stankovic (Presented by Linda Deng)
A Compact Wireless Modular Sensor Platform Ari Y. Benbasat and Joseph A. Paradiso To simplify the rapid prototyping and testing of wireless sensor systems,
Design Constraint Presentation Team 5: Sports Telemetry Device.
 The wireless module must sustain a transmission rate that allows for image data to be transferred in real-time.  The camera must be able to capture.
Development of a Fall Detecting System for the Elderly Residents speaker: 林佑威 Author: Chia-Chi Wang, Chih-Yen Chiang, Po-Yen Lin, Yi-Chieh Chou, I-Ting.
Maze Twinbots Group 28 Uyen Nguyen – EE Ly Nguyen – EE Luke Ireland - EE.
CONTENTS Objective Software &Hardware requirements Block diagram Mems technology Implementation Applications &Advantages Future scope Conclusion References.
Product Overview 박 유 진박 유 진.  Nordic Semiconductor ASA(Norway 1983)  Ultra Low Power Wireless Communication System Solution  Short Range Radio Communication(20.
SmartCup – Team 42 Harington Lee, Chirag Patil, Arjun Sharma 1.
HOT CAR BABY DETECTOR Group #20 Luis Pabon, Jian Gao ECE 445 Dec. 8, 2014.
Magic Wand Battle Game Team 53 Shanoon Martin, Jialin Sun, Manfei Wu.
TRANSMISSION LINE MULTIPLE FAULT DETECTION AND INDICATION TO EB
HOME SECURITY USING WIRELESS SENSOR NETWORK UNDER THE ESTEEMED GUIDANCE OF: P.RAMESH D.SIVOM( ) KANMANI RAVI( ) B.SAI RAJSEKHAR( )
WIRELESS MULTIMETER. Introduction Wireless multimeter acquires data from far off locations and from places not accessible to human beings (e.g. Boiler.
DALCON RFID IMPROVEMENT ECE 599, SPRING 2011 Brad Gasior, ECE Mike Fradkin, ECE Richard Young, ECE Sean Rinehart, ECE.
Voice Controlled Robot by Cell Phone with Android App
Instrumented Sensor Technology, Inc
Propeller Clock.
Application Case Study Security Camera Controller
Microcontrollers & GPIO
SCADA for Remote Industrial Plant
RAILWAY TRACK SNAP NOTIFICATION
Today’s Smart Sensors January 25, 2013 Randy Frank.
P14372 Actively Stabilized Hand-Held Laser Pointer
AVR – ATmega103(ATMEL) Architecture & Summary
Image Acquisition and Processing of Remotely Sensed Data
Presentation transcript:

iitb.ac.in, ee.iitb.ac.in 1/25 Indicon2013, Mumbai, December 2013, Paper ID 1084 Track 4.1 Signal Processing & VLSI (Biomedical Systems & Signal Processing ) Sunday, , 1540 – 1710 IIT Bombay Praveen Kumar Prem C. Pandey iitb.ac.in, ee.iitb.ac.in A Wearable Inertial Sensing Device for Fall Detection and Motion Tracking

iitb.ac.in, ee.iitb.ac.in 2/25 1.Introduction 2.Hardware Design 3.Data Acquisition & Testing 4.Real-Time Fall Detection 5.Summary & Conclusion Outline

iitb.ac.in, ee.iitb.ac.in 3/25 Posture & Motion Monitoring Aids for assisted living  Fall detection & alarm device to be worn by elderly persons and patients with risk of losing balance.  Monitoring of limb movement for analysis of gait disorders in patients suffering from neuromuscular diseases. Actigraphy Logging of orientation & movement of limbs and torso for analysis & treatment of sleep disorders. Techniques ▫ Optical ▫ Image based ▫ Acoustic ▫ Magnetic ▫ Inertial sensing 1. INTRODUCTION

iitb.ac.in, ee.iitb.ac.in 4/25 MEMS inertial sensors: accelerometer (linear acceleration) & gyroscope (angular velocity) Low-cost, compact, & free from interference problems. No restrictions on the movement space. Observations based on the literature Only accelerometer or only gyroscope: good results for restricted movement in specific directions. Multiple sensors: recognition of a larger types of activities, better accuracy. System with sensors on multiple body parts for tracking relative movement of different body parts. System for fall detection: head, waist, trunk, and thigh found to be good sensor placement locations, wrist found to be unsuitable. Multiple signal fusion & fuzzy inference systems: enhanced accuracy but not well suited for real-time applications. Threshold based fall detection: well suited for real-time fall detection but lower accuracy.

iitb.ac.in, ee.iitb.ac.in 5/25 Objective Development of a wearable inertial sensing device with wireless connectivity Real-time fall detection & alarm Recording for gait analysis Logging for actigraphy Hardware: Tri-axial integrated accelerometer & gyroscope, microcontroller, nonvolatile memory, Bluetooth. Signal processing for fall detection: Multiple decomposition and thresholding of tri-axial accelerometer outputs. Software: interfacing, recording, signal processing.

iitb.ac.in, ee.iitb.ac.in 6/25 2. HARDWARE DESIGN Design objective Continuous acquisition of acceleration & angular velocity data: settable sampling frequency: 100 Hz or higher for gait monitoring and fall detection, < 20 hz for actigtraphy. Processing capacity for real-time fall detection. Wireless connectivity : operation control, data transfer, fusion of data from multiple devices Internal memory: data recording Compact & wearable: single supply operation with low power consumption, no switches & connectors. Components MEMS-based sensor with integrated tri-axial accelerometer & gyroscope; Microcontroller; Flash memory; Serially interfaced Bluetooth module; Regulator

iitb.ac.in, ee.iitb.ac.in 7/25 Sensor MEMS-based sensor with integrated tri-axial accelerometer & gyroscope: InvenSense MPU 6000  Acc. range: ±2 g, ±4 g, ±8 g, ±16 g; Gyro. range: ±250 °/s, ±500 °/s, ±1000 °/s, ±2000 °/s  Sampling frequency: 4 Hz – 8 kHz  16-bit ADCs, clock, temp. sensor, interrupts  Digital output: I2C, SPI  FIFO: 1024 bytes (85 samples)  Vdd: – 3.46 V, Idd: 3.9 mA

iitb.ac.in, ee.iitb.ac.in 8/25 Microcontroller 16-bit microcontroller: Microchip PIC24F64GB004 (44 pin)  35 I/O pins, Two SPI, two I2C, two UART, one USB  64 KB program memory, 8 KB RAM,.  Internal clock of 8 MHz FRC with f CY of 4 MHz  Vdd: 2 – 3.6 V, Idd: 2.9 mA (at 4 MIPS) Memory 64-Mb serial dual I/O flash memory: Microchip SST25VF064C  Nonvolatile memory for recording more than 12 hours of data for actigraphy; Burst mode data transfer to save processor time for real-time fall detection and data transfer from multiple modules in a time multiplexed manner  Vdd: 2.7 – 3.6 V, Idd: 25 mA

iitb.ac.in, ee.iitb.ac.in 9/25 Bluetooth Module Serially interfaced Bluetooth module: Roving Networks RN-42 Range: 20 m range Data rate: 240 kbps in slave mode Vdd: 3.3 V, Idd: 3 mA (connected) & 30 mA (data transfer) Power MCP 1802 LDO regulator: 3.3 V output for 3.5 – 12 V input, with max current of 300 mA.

iitb.ac.in, ee.iitb.ac.in 10/25 Block diagram

iitb.ac.in, ee.iitb.ac.in 11/25 Micro-controller pin connections

iitb.ac.in, ee.iitb.ac.in 12/25 Sensor inter- facing

iitb.ac.in, ee.iitb.ac.in 13/25 Memory inter- facing

iitb.ac.in, ee.iitb.ac.in 14/25 Serial communication & Bluetooth interface

iitb.ac.in, ee.iitb.ac.in 15/25 Circuit assembly 2-layer 36 mm x 29 mm PCB, No switches & connectors

iitb.ac.in, ee.iitb.ac.in 16/25 3. DATA ACQUISITION & TESTING Sample-by-sample data acquisition Read the 6-axis sensor data at each sampling interval; save the data in internal 252 bytes buffer. If internal buffer is full, write 252 byte- data to the memory using page program Burst mode data acquisition Read 1024 bytes from FIFO at each interrupt; write to flash using page program; check for IRQ from UART and service it if needed.

iitb.ac.in, ee.iitb.ac.in 17/25 Testing & calibration PC based GUI for operation control & data transfer through Bluetooth Test setup: Control Moment Gyroscope Model 750 (Educational Control Products)  Central platform with two outer rings  Encoders to record the angles of rotation using a PC  Brakes for fixing angular positions Testing  Device mounted on central platform  Movements of platform or the rings  Simultaneous recording of the sensor outputs by the device & encoder outputs using PC

iitb.ac.in, ee.iitb.ac.in 18/25 Results Accelerometer outputs: Max deviations of 0.06, 0.01, 0.09 g in x, y, z Gyroscope outputs: Close match to CMG encoder outputs Example: device output for x-axis (solid), CMG output (broken)

iitb.ac.in, ee.iitb.ac.in 19/25 Accelerometer outputs during simulated falls

iitb.ac.in, ee.iitb.ac.in 20/25 4. REAL-TIME FALL DETECTION Observations from the accelerometer recordings Fall: Large variation from the mean value for a certain duration and in a certain direction. Multiple direction decomposition of accelerometer output and thresholding can help in improving sensitivity & specificity of the detection, without using gyroscope outputs. Real-time fall detection method: Thresholding & duration window on 7 directional components Components: Three axial components of the acceleration, magnitudes of the acceleration in three orthogonal planes, and the magnitude in the three- dimensional space v 1 (n) = x(n), v 2 (n) = y(n), v 3 (n) = z(n) v 4 (n) = √(x(n) 2 + y(n) 2 ), v 5 (n) = √(y(n) 2 + z(n) 2 ), v 6 (n) = √(x(n) 2 + z(n) 2 ) v 7 (n) = √(x(n) 2 + y(n) 2 + z(n) 2 )

iitb.ac.in, ee.iitb.ac.in 21/25 Variation function for each component 100-point moving avg. m i (n) = m i (n − 1) + [v i (n) − v i (n − 100)]/100 d i (n) = │v i (n) − m i (n) │ Thresholding & duration window on each variation function If d i (n) > θ for duration less than t 1., reset. If d i (n) > θ for duration greater than t 1 but less than t 2, declare fall. If d i (n) > θ for duration greater than t 2, wait for d i (n) < θ and then reset.

iitb.ac.in, ee.iitb.ac.in 22/25 Tests with falls & activities of daily life (ADL) Simulated fallReal fall & ADL Falls: forward, backward, sideways. ADL: walking, sitting, getting up, stair climbing, jogging, skipping. No of trials: 5 of each type.

iitb.ac.in, ee.iitb.ac.in 23/25 Test results 100% sensitivity and specificity, with θ = 2g, t 1 = 250 ms, t 2 = 850 ms. Variation functions crossed threshold (for less than t 1 = 250 ms) during skipping, jogging, and fast sitting, but not during other ADLs. Fall successfully detected with any orientation of the device. Current drain of 40 mA during wireless transmission and 3 mA during sleep mode. Data recording for approx. 2 hours at sampling freq. of 100 Hz.

iitb.ac.in, ee.iitb.ac.in 24/25 5. SUMMARY & CONCLUSION A wearable inertial sensing device for Continuously sensing and recording of the motion related variables, & transmitting the data wirelessly Real-time fall detection and wireless alert to a base station A low complexity fall detection algorithm for separation of activities of daily life from the fall using the acceleration data with any orientation of the waist-worn device. Further work Extensive testing on a large number of subjects. Fusion of accelerometer and gyroscope data and fusion of data from multiple devices.

iitb.ac.in, ee.iitb.ac.in 25/25 Thank You