A Novel Multi-Stage Training Approach for Human Activity Recognition From Multimodal Wearable Sensor Data Using Deep Neural Network

Deep neural network is an effective choice to automatically recognize human actions utilizing data from various wearable sensors. These networks automate the process of feature extraction relying completely on data. However, various noises in time series data with complex inter-modal relationships a...

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Veröffentlicht in:IEEE sensors journal 2021-01, Vol.21 (2), p.1715-1726
Hauptverfasser: Mahmud, Tanvir, Sazzad Sayyed, A. Q. M., Fattah, Shaikh Anowarul, Kung, Sun-Yuan
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container_title IEEE sensors journal
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creator Mahmud, Tanvir
Sazzad Sayyed, A. Q. M.
Fattah, Shaikh Anowarul
Kung, Sun-Yuan
description Deep neural network is an effective choice to automatically recognize human actions utilizing data from various wearable sensors. These networks automate the process of feature extraction relying completely on data. However, various noises in time series data with complex inter-modal relationships among sensors make this process more complicated. In this article, we have proposed a novel multi-stage training approach that increases diversity in this feature extraction process to make accurate recognition of actions by combining varieties of features extracted from diverse perspectives. Initially, instead of using single type of transformation, numerous transformations are employed on time series data to obtain variegated representations of the features encoded in raw data. An efficient deep CNN architecture is proposed that can be individually trained to extract features from different transformed spaces. Later, these CNN feature extractors are merged into an optimal architecture finely tuned for optimizing diversified extracted features through a combined training stage or multiple sequential training stages. This approach offers the opportunity to explore the encoded features in raw sensor data utilizing multifarious observation windows with immense scope for efficient selection of features for final convergence. Extensive experimentations have been carried out in three publicly available datasets that provide outstanding performance consistently with average five-fold cross-validation accuracy of 99.29% on UCI HAR database, 99.02% on USC HAR database, and 97.21% on SKODA database outperforming other state-of-the-art approaches.
doi_str_mv 10.1109/JSEN.2020.3015781
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subjects activity recognition
Artificial neural networks
CNN
Data mining
Feature extraction
feature learning
Human activity recognition
Moving object recognition
multi-stage training
Neural networks
Optimization
Sensor data processing
Sensor phenomena and characterization
Sensors
Time series
Time series analysis
Training
Wearable technology
title A Novel Multi-Stage Training Approach for Human Activity Recognition From Multimodal Wearable Sensor Data Using Deep Neural Network
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