Leveraging Wearable Sensors for Human Daily Activity Recognition with Stacked Denoising Autoencoders

Activity recognition has received considerable attention in many research fields, such as industrial and healthcare fields. However, many researches about activity recognition have focused on static activities and dynamic activities in current literature, while, the transitional activities, such as...

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Main Authors: Qin Ni, Zhuo Fan, Lei Zhang, Chris D. Nugent, Ian Cleland, Yuping Zhang, Nan Zhou
Format: Article
Language:English
Published: MDPI AG 2020-09-01
Series:Sensors
Subjects:
Online Access:https://www.mdpi.com/1424-8220/20/18/5114
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spelling doaj-deea7ebae4864e109ff880cd00eb8ac62020-11-25T02:58:37ZengMDPI AGSensors1424-82202020-09-01205114511410.3390/s20185114Leveraging Wearable Sensors for Human Daily Activity Recognition with Stacked Denoising AutoencodersQin Ni0Zhuo Fan1Lei Zhang2Chris D. Nugent3Ian Cleland4Yuping Zhang5Nan Zhou6College of Information, Mechanical and Electrical Engineering, Shanghai Normal University, Shanghai 201418, ChinaCollege of Information, Mechanical and Electrical Engineering, Shanghai Normal University, Shanghai 201418, ChinaCollege of Information Science and Technology, Donghua University, Shanghai 201620, ChinaSchool of Computing and Mathematics, University of Ulster, Belfast BT370QB, UKSchool of Computing and Mathematics, University of Ulster, Belfast BT370QB, UKCollege of Information, Mechanical and Electrical Engineering, Shanghai Normal University, Shanghai 201418, ChinaCollege of Information, Mechanical and Electrical Engineering, Shanghai Normal University, Shanghai 201418, ChinaActivity recognition has received considerable attention in many research fields, such as industrial and healthcare fields. However, many researches about activity recognition have focused on static activities and dynamic activities in current literature, while, the transitional activities, such as stand-to-sit and sit-to-stand, are more difficult to recognize than both of them. Consider that it may be important in real applications. Thus, a novel framework is proposed in this paper to recognize static activities, dynamic activities, and transitional activities by utilizing stacked denoising autoencoders (SDAE), which is able to extract features automatically as a deep learning model rather than utilize manual features extracted by conventional machine learning methods. Moreover, the resampling technique (random oversampling) is used to improve problem of unbalanced samples due to relatively short duration characteristic of transitional activity. The experiment protocol is designed to collect twelve daily activities (three types) by using wearable sensors from 10 adults in smart lab of Ulster University, the experiment results show the significant performance on transitional activity recognition and achieve the overall accuracy of 94.88% on three types of activities. The results obtained by comparing with other methods and performances on other three public datasets verify the feasibility and priority of our framework. This paper also explores the effect of multiple sensors (accelerometer and gyroscope) to determine the optimal combination for activity recognition.https://www.mdpi.com/1424-8220/20/18/5114activity recognitiontransitional activitiesstacked denoising autoencoderswearable sensorsresampling technique
collection DOAJ
language English
format Article
sources DOAJ
author Qin Ni
Zhuo Fan
Lei Zhang
Chris D. Nugent
Ian Cleland
Yuping Zhang
Nan Zhou
spellingShingle Qin Ni
Zhuo Fan
Lei Zhang
Chris D. Nugent
Ian Cleland
Yuping Zhang
Nan Zhou
Leveraging Wearable Sensors for Human Daily Activity Recognition with Stacked Denoising Autoencoders
Sensors
activity recognition
transitional activities
stacked denoising autoencoders
wearable sensors
resampling technique
author_facet Qin Ni
Zhuo Fan
Lei Zhang
Chris D. Nugent
Ian Cleland
Yuping Zhang
Nan Zhou
author_sort Qin Ni
title Leveraging Wearable Sensors for Human Daily Activity Recognition with Stacked Denoising Autoencoders
title_short Leveraging Wearable Sensors for Human Daily Activity Recognition with Stacked Denoising Autoencoders
title_full Leveraging Wearable Sensors for Human Daily Activity Recognition with Stacked Denoising Autoencoders
title_fullStr Leveraging Wearable Sensors for Human Daily Activity Recognition with Stacked Denoising Autoencoders
title_full_unstemmed Leveraging Wearable Sensors for Human Daily Activity Recognition with Stacked Denoising Autoencoders
title_sort leveraging wearable sensors for human daily activity recognition with stacked denoising autoencoders
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2020-09-01
description Activity recognition has received considerable attention in many research fields, such as industrial and healthcare fields. However, many researches about activity recognition have focused on static activities and dynamic activities in current literature, while, the transitional activities, such as stand-to-sit and sit-to-stand, are more difficult to recognize than both of them. Consider that it may be important in real applications. Thus, a novel framework is proposed in this paper to recognize static activities, dynamic activities, and transitional activities by utilizing stacked denoising autoencoders (SDAE), which is able to extract features automatically as a deep learning model rather than utilize manual features extracted by conventional machine learning methods. Moreover, the resampling technique (random oversampling) is used to improve problem of unbalanced samples due to relatively short duration characteristic of transitional activity. The experiment protocol is designed to collect twelve daily activities (three types) by using wearable sensors from 10 adults in smart lab of Ulster University, the experiment results show the significant performance on transitional activity recognition and achieve the overall accuracy of 94.88% on three types of activities. The results obtained by comparing with other methods and performances on other three public datasets verify the feasibility and priority of our framework. This paper also explores the effect of multiple sensors (accelerometer and gyroscope) to determine the optimal combination for activity recognition.
topic activity recognition
transitional activities
stacked denoising autoencoders
wearable sensors
resampling technique
url https://www.mdpi.com/1424-8220/20/18/5114
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