Abstract

Recent works have shown that mid-level feature is superior to low-level feature, which can not only improve discriminative power, but also enhance descriptive capability. In this paper, the classical STIP, spatial star-graph and temporal star-graph are first extracted to represent human action from multi-perspectives. Then a principled feature learning algorithm is proposed to embed these multi-cues into a unified space and enhance all low-level features using diffusion map. Unlike treating spatio-temporal patch as mid-level primitive, we use a graph to model different types of primitives, then apply graph partitioning to co-cluster them into visual-word clusters called mid-level distinctive feature, which can bridge the semantic gap across low-level features. Experimental results show that our approach can successfully classify human activities with higher accuracies both on single-person actions (KTH and UCF) and complex interactional activities (UT-Interaction and HMDB51).

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