A Deep Learning Network with Aggregation Residual Transformation for Human Activity Recognition Using Inertial and Stretch Sensors

Comput. Pub Date : 2023-07-17 DOI:10.3390/computers12070141
S. Mekruksavanich, A. Jitpattanakul
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引用次数: 4

Abstract

With the rise of artificial intelligence, sensor-based human activity recognition (S-HAR) is increasingly being employed in healthcare monitoring for the elderly, fitness tracking, and patient rehabilitation using smart devices. Inertial sensors have been commonly used for S-HAR, but wearable devices have been demanding more comfort and flexibility in recent years. Consequently, there has been an effort to incorporate stretch sensors into S-HAR with the advancement of flexible electronics technology. This paper presents a deep learning network model, utilizing aggregation residual transformation, that can efficiently extract spatial–temporal features and perform activity classification. The efficacy of the suggested model was assessed using the w-HAR dataset, which included both inertial and stretch sensor data. This dataset was used to train and test five fundamental deep learning models (CNN, LSTM, BiLSTM, GRU, and BiGRU), along with the proposed model. The primary objective of the w-HAR investigations was to determine the feasibility of utilizing stretch sensors for recognizing human actions. Additionally, this study aimed to explore the effectiveness of combining data from both inertial and stretch sensors in S-HAR. The results clearly demonstrate the effectiveness of the proposed approach in enhancing HAR using inertial and stretch sensors. The deep learning model we presented achieved an impressive accuracy of 97.68%. Notably, our method outperformed existing approaches and demonstrated excellent generalization capabilities.
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基于汇聚残差变换的深度学习网络在惯性和拉伸传感器人体活动识别中的应用
随着人工智能的兴起,基于传感器的人类活动识别(S-HAR)越来越多地应用于老年人的医疗监测、健身跟踪和使用智能设备的患者康复。惯性传感器通常用于S-HAR,但近年来可穿戴设备对舒适性和灵活性的要求越来越高。因此,随着柔性电子技术的进步,一直在努力将拉伸传感器纳入S-HAR。本文提出了一种利用聚集残差变换的深度学习网络模型,该模型可以有效地提取时空特征并进行活动分类。使用w-HAR数据集评估了建议模型的有效性,该数据集包括惯性和拉伸传感器数据。该数据集用于训练和测试五个基本深度学习模型(CNN, LSTM, BiLSTM, GRU和BiGRU)以及所提出的模型。w-HAR调查的主要目的是确定利用拉伸传感器识别人类行为的可行性。此外,本研究旨在探讨在S-HAR中结合惯性和拉伸传感器数据的有效性。结果清楚地证明了所提出的方法在使用惯性和拉伸传感器增强HAR方面的有效性。我们提出的深度学习模型达到了令人印象深刻的97.68%的准确率。值得注意的是,我们的方法优于现有的方法,并展示了出色的泛化能力。
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