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Multi-ResAtt: Multilevel Residual Network With Attention for Human Activity Recognition Using Wearable Sensors

Mohammed A. A. Al‐qaness, Abdelghani Dahou, Mohamed Abd Elaziz, Ahmed M. Helmi

2022IEEE Transactions on Industrial Informatics162 citationsDOI

Abstract

Human activity recognition (HAR) applications have received much attention due to their necessary implementations in various domains, including Industry 5.0 applications such as smart homes, e-health, and various Internet of Things applications. Deep learning (DL) techniques have shown impressive performance in different classification tasks, including HAR. Accordingly, in this article, we develop a comprehensive HAR system based on a novel DL architecture called Multi-ResAtt (multilevel residual network with attention). This model incorporates initial blocks and residual modules aligned in parallel. Multi-ResAtt learns data representations on the inertial measurement units level. Multi-ResAtt integrates a recurrent neural network with attention to extract time-series features and perform activity recognition. We consider complex human activities collected from wearable sensors to evaluate the Multi-ResAtt using three public datasets, Opportunity; UniMiB-SHAR; and PAMAP2. Additionally, we compared the proposed Multi-ResAtt to several DL models and existing HAR systems, and it achieved significant performance.

Topics & Concepts

Activity recognitionComputer scienceWearable computerResidualImplementationArtificial neural networkArtificial intelligenceMachine learningWearable technologyDeep learningData miningEmbedded systemSoftware engineeringAlgorithmContext-Aware Activity Recognition SystemsIoT and Edge/Fog ComputingAnomaly Detection Techniques and Applications