Title :
Action Recognition by Hierarchical Sequence Summarization
Author :
Yale Song ; Morency, Louis-Philippe ; Davis, Ronald W.
Abstract :
Recent progress has shown that learning from hierarchical feature representations leads to improvements in various computer vision tasks. Motivated by the observation that human activity data contains information at various temporal resolutions, we present a hierarchical sequence summarization approach for action recognition that learns multiple layers of discriminative feature representations at different temporal granularities. We build up a hierarchy dynamically and recursively by alternating sequence learning and sequence summarization. For sequence learning we use CRFs with latent variables to learn hidden spatio-temporal dynamics, for sequence summarization we group observations that have similar semantic meaning in the latent space. For each layer we learn an abstract feature representation through non-linear gate functions. This procedure is repeated to obtain a hierarchical sequence summary representation. We develop an efficient learning method to train our model and show that its complexity grows sub linearly with the size of the hierarchy. Experimental results show the effectiveness of our approach, achieving the best published results on the Arm Gesture and Canal9 datasets.
Keywords :
computer vision; feature extraction; image representation; image resolution; learning (artificial intelligence); object recognition; CRF; abstract feature representation; action recognition; computer vision; discriminative feature representation; hierarchical feature representation; hierarchical sequence summarization; hierarchical sequence summary representation; human activity data; latent space; nonlinear gate function; semantic meaning; sequence learning; spatio-temporal dynamics; temporal granularity; temporal resolution; Abstracts; Complexity theory; Logic gates; Mathematical model; Optimization; Semantics; Training; Action Recognition; Conditional Random Fields; Hierarchical Model;
Conference_Titel :
Computer Vision and Pattern Recognition (CVPR), 2013 IEEE Conference on
Conference_Location :
Portland, OR
DOI :
10.1109/CVPR.2013.457