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Probabilistic Subspace-based Learning of Shape Dynamics Modes For Multi-view Action Recognition
|Title||Probabilistic Subspace-based Learning of Shape Dynamics Modes For Multi-view Action Recognition|
|Publication Type||Conference Paper|
|Year of Publication||2011|
|Authors||Karthikeyan, S, Gaur, U, Manjunath, BS, Grafton, S|
|Conference Name||2011 IEEE International Conference on Computer Vision Workshops (iccv Workshops)|
We propose a human action recognition algorithm by capturing a compact signature of shape dynamics from multi-view videos. First, we compute Rfr transforms and its temporal velocity on action silhouettes from multiple views to generate a robust low level representation of shape. The spatio-temporal shape dynamics across all the views is then captured by fusion of eigen and multiset partial least squares modes. This provides us a lightweight signature which is classified using a probabilistic subspace similarity technique by learning inter-action and intra-action models. Quantitative and qualitative results of our algorithm are reported on MuHAVi a publicly available multi-camera multi-action dataset.