Unsupervised Statistical Feature-Guided Diffusion Model for Sensor-based Human Activity Recognition
Abstract
Recognizing human activities from sensor data is a vital task in various domains, but obtaining diverse and labeled sensor data remains challenging and costly. In this paper, we propose an unsupervised statistical <PRE_TAG>feature-guided</POST_TAG> diffusion model for sensor-based human activity recognition. The proposed method aims to generate <PRE_TAG>synthetic time-series sensor data</POST_TAG> without relying on labeled data, addressing the scarcity and annotation difficulties associated with real-world sensor data. By conditioning the diffusion model on statistical information such as mean, standard deviation, Z-score, and skewness, we generate diverse and representative synthetic sensor data. We conducted experiments on public human activity recognition datasets and compared the proposed method to conventional oversampling methods and state-of-the-art generative adversarial network methods. The experimental results demonstrate that the proposed method can improve the performance of human activity recognition and outperform existing techniques.
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