Divide and Conquer-Based 1D CNN Human Activity Recognition Using Test Data Sharpening

Human Activity Recognition (HAR) aims to identify the actions performed by humans using signals collected from various sensors embedded in mobile devices. In recent years, deep learning techniques have further improved HAR performance on several benchmark datasets. In this paper, we propose one-dime...

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Main Authors: Heeryon Cho, Sang Min Yoon
Format: Article
Language:English
Published: MDPI AG 2018-04-01
Series:Sensors
Subjects:
Online Access:http://www.mdpi.com/1424-8220/18/4/1055
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spelling doaj-4a18c09a6e714ceea8fa087b0eec35812020-11-24T21:07:57ZengMDPI AGSensors1424-82202018-04-01184105510.3390/s18041055s18041055Divide and Conquer-Based 1D CNN Human Activity Recognition Using Test Data SharpeningHeeryon Cho0Sang Min Yoon1HCI Lab., College of Computer Science, Kookmin University, 77, Jeongneung-ro, Seongbuk-gu, Seoul 02707, KoreaHCI Lab., College of Computer Science, Kookmin University, 77, Jeongneung-ro, Seongbuk-gu, Seoul 02707, KoreaHuman Activity Recognition (HAR) aims to identify the actions performed by humans using signals collected from various sensors embedded in mobile devices. In recent years, deep learning techniques have further improved HAR performance on several benchmark datasets. In this paper, we propose one-dimensional Convolutional Neural Network (1D CNN) for HAR that employs a divide and conquer-based classifier learning coupled with test data sharpening. Our approach leverages a two-stage learning of multiple 1D CNN models; we first build a binary classifier for recognizing abstract activities, and then build two multi-class 1D CNN models for recognizing individual activities. We then introduce test data sharpening during prediction phase to further improve the activity recognition accuracy. While there have been numerous researches exploring the benefits of activity signal denoising for HAR, few researches have examined the effect of test data sharpening for HAR. We evaluate the effectiveness of our approach on two popular HAR benchmark datasets, and show that our approach outperforms both the two-stage 1D CNN-only method and other state of the art approaches.http://www.mdpi.com/1424-8220/18/4/1055human activity recognitionone-dimensional convolutional neural networktest data sharpening
collection DOAJ
language English
format Article
sources DOAJ
author Heeryon Cho
Sang Min Yoon
spellingShingle Heeryon Cho
Sang Min Yoon
Divide and Conquer-Based 1D CNN Human Activity Recognition Using Test Data Sharpening
Sensors
human activity recognition
one-dimensional convolutional neural network
test data sharpening
author_facet Heeryon Cho
Sang Min Yoon
author_sort Heeryon Cho
title Divide and Conquer-Based 1D CNN Human Activity Recognition Using Test Data Sharpening
title_short Divide and Conquer-Based 1D CNN Human Activity Recognition Using Test Data Sharpening
title_full Divide and Conquer-Based 1D CNN Human Activity Recognition Using Test Data Sharpening
title_fullStr Divide and Conquer-Based 1D CNN Human Activity Recognition Using Test Data Sharpening
title_full_unstemmed Divide and Conquer-Based 1D CNN Human Activity Recognition Using Test Data Sharpening
title_sort divide and conquer-based 1d cnn human activity recognition using test data sharpening
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2018-04-01
description Human Activity Recognition (HAR) aims to identify the actions performed by humans using signals collected from various sensors embedded in mobile devices. In recent years, deep learning techniques have further improved HAR performance on several benchmark datasets. In this paper, we propose one-dimensional Convolutional Neural Network (1D CNN) for HAR that employs a divide and conquer-based classifier learning coupled with test data sharpening. Our approach leverages a two-stage learning of multiple 1D CNN models; we first build a binary classifier for recognizing abstract activities, and then build two multi-class 1D CNN models for recognizing individual activities. We then introduce test data sharpening during prediction phase to further improve the activity recognition accuracy. While there have been numerous researches exploring the benefits of activity signal denoising for HAR, few researches have examined the effect of test data sharpening for HAR. We evaluate the effectiveness of our approach on two popular HAR benchmark datasets, and show that our approach outperforms both the two-stage 1D CNN-only method and other state of the art approaches.
topic human activity recognition
one-dimensional convolutional neural network
test data sharpening
url http://www.mdpi.com/1424-8220/18/4/1055
work_keys_str_mv AT heeryoncho divideandconquerbased1dcnnhumanactivityrecognitionusingtestdatasharpening
AT sangminyoon divideandconquerbased1dcnnhumanactivityrecognitionusingtestdatasharpening
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