Smartphone Motion Sensor-Based Complex Human Activity Identification Using Deep Stacked Autoencoder Algorithm for Enhanced Smart Healthcare System

Human motion analysis using a smartphone-embedded accelerometer sensor provided important context for the identification of static, dynamic, and complex sequence of activities. Research in smartphone-based motion analysis are implemented for tasks, such as health status monitoring, fall detection an...

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Main Authors: Uzoma Rita Alo, Henry Friday Nweke, Ying Wah Teh, Ghulam Murtaza
Format: Article
Language:English
Published: MDPI AG 2020-11-01
Series:Sensors
Subjects:
Online Access:https://www.mdpi.com/1424-8220/20/21/6300
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spelling doaj-5d286f8ffdd34c47b886580e1cccae782020-11-25T03:59:57ZengMDPI AGSensors1424-82202020-11-01206300630010.3390/s20216300Smartphone Motion Sensor-Based Complex Human Activity Identification Using Deep Stacked Autoencoder Algorithm for Enhanced Smart Healthcare SystemUzoma Rita Alo0Henry Friday Nweke1Ying Wah Teh2Ghulam Murtaza3Computer Science Department, Alex Ekwueme Federal University, Ndufu-Alike, Ikwo, P.M.B 1010, Abakaliki, Ebonyi State 480263, NigeriaComputer Science Department, Ebonyi State University, P.M.B 053, Abakaliki, Ebonyi State 480211, NigeriaDepartment of Information Systems, Faculty of Computer Science and Information Technology, University of Malaya, Kuala Lumpur 50603, MalaysiaDepartment of Information Systems, Faculty of Computer Science and Information Technology, University of Malaya, Kuala Lumpur 50603, MalaysiaHuman motion analysis using a smartphone-embedded accelerometer sensor provided important context for the identification of static, dynamic, and complex sequence of activities. Research in smartphone-based motion analysis are implemented for tasks, such as health status monitoring, fall detection and prevention, energy expenditure estimation, and emotion detection. However, current methods, in this regard, assume that the device is tightly attached to a pre-determined position and orientation, which might cause performance degradation in accelerometer data due to changing orientation. Therefore, it is challenging to accurately and automatically identify activity details as a result of the complexity and orientation inconsistencies of the smartphone. Furthermore, the current activity identification methods utilize conventional machine learning algorithms that are application dependent. Moreover, it is difficult to model the hierarchical and temporal dynamic nature of the current, complex, activity identification process. This paper aims to propose a deep stacked autoencoder algorithm, and orientation invariant features, for complex human activity identification. The proposed approach is made up of various stages. First, we computed the magnitude norm vector and rotation feature (pitch and roll angles) to augment the three-axis dimensions (3-D) of the accelerometer sensor. Second, we propose a deep stacked autoencoder based deep learning algorithm to automatically extract compact feature representation from the motion sensor data. The results show that the proposed integration of the deep learning algorithm, and orientation invariant features, can accurately recognize complex activity details using only smartphone accelerometer data. The proposed deep stacked autoencoder method achieved 97.13% identification accuracy compared to the conventional machine learning methods and the deep belief network algorithm. The results suggest the impact of the proposed method to improve a smartphone-based complex human activity identification framework.https://www.mdpi.com/1424-8220/20/21/6300activity identificationdeep learningacceleration sensorsmart healthcaredeep stacked autoencoderhealth monitoring
collection DOAJ
language English
format Article
sources DOAJ
author Uzoma Rita Alo
Henry Friday Nweke
Ying Wah Teh
Ghulam Murtaza
spellingShingle Uzoma Rita Alo
Henry Friday Nweke
Ying Wah Teh
Ghulam Murtaza
Smartphone Motion Sensor-Based Complex Human Activity Identification Using Deep Stacked Autoencoder Algorithm for Enhanced Smart Healthcare System
Sensors
activity identification
deep learning
acceleration sensor
smart healthcare
deep stacked autoencoder
health monitoring
author_facet Uzoma Rita Alo
Henry Friday Nweke
Ying Wah Teh
Ghulam Murtaza
author_sort Uzoma Rita Alo
title Smartphone Motion Sensor-Based Complex Human Activity Identification Using Deep Stacked Autoencoder Algorithm for Enhanced Smart Healthcare System
title_short Smartphone Motion Sensor-Based Complex Human Activity Identification Using Deep Stacked Autoencoder Algorithm for Enhanced Smart Healthcare System
title_full Smartphone Motion Sensor-Based Complex Human Activity Identification Using Deep Stacked Autoencoder Algorithm for Enhanced Smart Healthcare System
title_fullStr Smartphone Motion Sensor-Based Complex Human Activity Identification Using Deep Stacked Autoencoder Algorithm for Enhanced Smart Healthcare System
title_full_unstemmed Smartphone Motion Sensor-Based Complex Human Activity Identification Using Deep Stacked Autoencoder Algorithm for Enhanced Smart Healthcare System
title_sort smartphone motion sensor-based complex human activity identification using deep stacked autoencoder algorithm for enhanced smart healthcare system
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2020-11-01
description Human motion analysis using a smartphone-embedded accelerometer sensor provided important context for the identification of static, dynamic, and complex sequence of activities. Research in smartphone-based motion analysis are implemented for tasks, such as health status monitoring, fall detection and prevention, energy expenditure estimation, and emotion detection. However, current methods, in this regard, assume that the device is tightly attached to a pre-determined position and orientation, which might cause performance degradation in accelerometer data due to changing orientation. Therefore, it is challenging to accurately and automatically identify activity details as a result of the complexity and orientation inconsistencies of the smartphone. Furthermore, the current activity identification methods utilize conventional machine learning algorithms that are application dependent. Moreover, it is difficult to model the hierarchical and temporal dynamic nature of the current, complex, activity identification process. This paper aims to propose a deep stacked autoencoder algorithm, and orientation invariant features, for complex human activity identification. The proposed approach is made up of various stages. First, we computed the magnitude norm vector and rotation feature (pitch and roll angles) to augment the three-axis dimensions (3-D) of the accelerometer sensor. Second, we propose a deep stacked autoencoder based deep learning algorithm to automatically extract compact feature representation from the motion sensor data. The results show that the proposed integration of the deep learning algorithm, and orientation invariant features, can accurately recognize complex activity details using only smartphone accelerometer data. The proposed deep stacked autoencoder method achieved 97.13% identification accuracy compared to the conventional machine learning methods and the deep belief network algorithm. The results suggest the impact of the proposed method to improve a smartphone-based complex human activity identification framework.
topic activity identification
deep learning
acceleration sensor
smart healthcare
deep stacked autoencoder
health monitoring
url https://www.mdpi.com/1424-8220/20/21/6300
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