Deep Adversarial Learning with Activity-Based User Discrimination Task for Human Activity Recognition
- URL: http://arxiv.org/abs/2410.12819v1
- Date: Tue, 01 Oct 2024 11:58:33 GMT
- Title: Deep Adversarial Learning with Activity-Based User Discrimination Task for Human Activity Recognition
- Authors: Francisco M. Calatrava-Nicolás, Oscar Martinez Mozos,
- Abstract summary: We present a new adversarial deep learning framework for the problem of human activity recognition.
Our framework incorporates a novel activity-based discrimination task that addresses inter-person variability.
- Score: 0.0
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- Abstract: We present a new adversarial deep learning framework for the problem of human activity recognition (HAR) using inertial sensors worn by people. Our framework incorporates a novel adversarial activity-based discrimination task that addresses inter-person variability-i.e., the fact that different people perform the same activity in different ways. Overall, our proposed framework outperforms previous approaches on three HAR datasets using a leave-one-(person)-out cross-validation (LOOCV) benchmark. Additional results demonstrate that our discrimination task yields better classification results compared to previous tasks within the same adversarial framework.
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