Authors
Jun Ye, Hao Hu, Guo-Jun Qi, Kien A Hua
Publication date
2017/3/6
Journal
ACM Transactions on Multimedia Computing, Communications, and Applications (TOMM)
Volume
13
Issue
2
Pages
1-22
Publisher
ACM
Description
From wearable devices to depth cameras, researchers have exploited various multimodal data to recognize human actions for applications, such as video gaming, education, and healthcare. Although there many successful techniques have been presented in the literature, most current approaches have focused on statistical or local spatiotemporal features and do not explicitly explore the temporal dynamics of the sensor data. However, human action data contain rich temporal structure information that can characterize the unique underlying patterns of different action categories. From this perspective, we propose a novel temporal order modeling approach to human action recognition. Specifically, we explore subspace projections to extract the latent temporal patterns from different human action sequences. The temporal order between these patterns are compared, and the index of the pattern that appears first is …
Total citations
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