Physical activity recognition is an important research area in pervasive computing because of its importance for e-healthcare, security, and human–machine interaction. Among various approaches, passive radio frequency sensing is a… Click to show full abstract
Physical activity recognition is an important research area in pervasive computing because of its importance for e-healthcare, security, and human–machine interaction. Among various approaches, passive radio frequency sensing is a well-tried radar principle that has potential to provide the unique solution for non-invasive activity detection and recognition. However, this technology is still far from mature. This paper presents a novel hidden Markov model-based log-likelihood matrix for characterizing the Doppler shifts to break the fixed sliding window limitation in traditional feature extraction approaches. We prove the effectiveness of the proposed feature extraction method by K-means & K-medoids clustering algorithms with experimental Doppler data gathered from a passive radar system. The results show that the time adaptive log-likelihood matrix outperforms the traditional singular value decomposition, principal component analysis, and physical feature-based approaches, and reaches 80% in recognizing rate.
               
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