Title :
Activity monitoring of workers using single wearable inertial sensor
Author :
Khan, S.H. ; Sohail, Muhammad
Abstract :
This Activity monitoring of workers in installations such as industries, underground tunnels, sewerage lines, remote field deployments etc. is a daunting task. Due to lack of communication systems and scarce energy resources, these scenarios pose great challenges in developing a monitoring system for workers. The design of activity recognition system for workers, using a single tri-axial accelerometer is presented in this paper. Time, frequency and spatial domain features were extracted using a naturalistic dataset and were used to analyze the performance of various classifiers. FFT energy, entropy and correlation between axes showed good results in classification of 9 different activities. The various classification algorithms were tested using Weka classification tool and we have achieved up to 93.9% successful classification results using Random Forest algorithm.
Keywords :
accelerometers; entropy; fast Fourier transforms; feature extraction; frequency-domain analysis; monitoring; pattern classification; sensors; time-domain analysis; FFT energy; Weka classification tool; activity recognition system; communication system; energy resource; entropy; fast Fourier transform; frequency domain feature extraction; naturalistic dataset; random forest algorithm; remote field deployment; sewerage line; single triaxial accelerometer; single wearable inertial sensor; spatial domain feature extraction; time domain feature extraction; underground tunnel; worker activity monitoring; Accelerometers; Accuracy; Classification algorithms; Correlation; Entropy; Monitoring; Standards; activity classification; entropy; fall detection; harsh environments; logistic regression; tri-axis accelerometer;
Conference_Titel :
Open Source Systems and Technologies (ICOSST), 2013 International Conference on
Conference_Location :
Lahore
Print_ISBN :
978-1-4799-2047-1
DOI :
10.1109/ICOSST.2013.6720607