Please use this identifier to cite or link to this item: http://hdl.handle.net/2080/5298
Title: A Deep Learning Framework using Attention Mechanism for Human Activity Recognition
Authors: Senapati, Ashwani
Das, Payal
Priyadarshinee, Sanchita
Ari, Samit
Keywords: Human Activity Recognition (HAR)
Convolutional Neural Networks (CNNs)
Attention Mechanism
Sensor Data Classification
Deep Learning Hybrid Models
Issue Date: Aug-2025
Publisher: IEEE
Citation: 6th IEEE India Council International Subsections Conference (INDISCON), NIT Rourkela, 21-23 August 2025
Abstract: This paper introduces a hybrid deep learning model integrating Convolutional Neural Networks (CNNs) with attention blocks in order to improve the precision and robustness of Human Activity Recognition (HAR). The suggested method makes advantage of the features of both architectures: While attention blocks dynamically recalibrate channel-wise feature responses to underline valuable features and suppress less relevant ones, CNNs are used for effective extraction of spatial dependencies and local patterns from raw sensor data. This mix helps the model to manage noisy input data more efficiently and to learn more significant feature representations for activity classification. Using an end-to-end learning approach, the model jointly maximises spatial and channel-wise characteristics. Because it shows great generalisation across many activities and subjects, this integrated architecture is well-suited for a wide spectrum of realworld HAR applications including fitness tracking, healthcare monitoring, and smart settings. In the WISDM data set, a commonly used benchmark in HAR research, the model obtains an outstanding overall accuracy of 99.61% indicating its efficacy and its possible implementation in pragmatic situations.
Description: Copyright belongs to the proceeding publisher.
URI: http://hdl.handle.net/2080/5298
Appears in Collections:Conference Papers

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