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Human Activity Recognition from Wearable Sensor Data Using Self-Attention

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Human Activity Recognition from body-worn sensor data poses an inherent challenge in capturing spatial and temporal dependencies of time-series signals. In this regard, the existing recurrent or convolutional or their hybrid models for activity recognition struggle to capture spatio-temporal context from the feature space of sensor reading sequence. To address this complex problem, we propose a self-attention based neural network model that foregoes recurrent architectures and utilizes different types of attention mechanisms to generate higher dimensional feature representation used for classification. We performed extensive experiments on four popular publicly available HAR datasets: PAMAP2, Opportunity, Skoda and USC-HAD. Our model achieve significant performance improvement over recent state-of-the-art models in both benchmark test subjects and Leave-one-subject-out evaluation. We also observe that the sensor attention maps produced by our model is able capture the importance of the modality and placement of the sensors in predicting the different activity classes.

Saif Mahmud, M Tanjid Hasan Tonmoy, Kishor Kumar Bhaumik, A K M Mahbubur Rahman, M Ashraful Amin, Mohammad Shoyaib, Muhammad Asif Hossain Khan, Amin Ahsan Ali• 2020

Related benchmarks

TaskDatasetResultRank
Human Activity RecognitionREALDISP
F168
94
Human Activity RecognitionHHAR--
37
Activity RecognitionPAMAP2
Accuracy83
22
Human Activity RecognitionHAPT--
20
Human Activity RecognitionDSADS
F1 Score80.77
16
Human Activity RecognitionOPPO
F1 Score48.83
10
Human Activity RecognitionMobiAct
Macro-F180.37
10
Human Activity RecognitionSHL 2018
F1 Score66.77
10
Human Activity RecognitionSHO
F1 Score81.97
10
Gesture RecognitionP0123-I
Macro F185.3
3
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