Unsupervised Action Proposal Ranking through Proposal Recombination

3 Apr 2017 Waqas Sultani Dong Zhang Mubarak Shah

Recently, action proposal methods have played an important role in action recognition tasks, as they reduce the search space dramatically. Most unsupervised action proposal methods tend to generate hundreds of action proposals which include many noisy, inconsistent, and unranked action proposals, while supervised action proposal methods take advantage of predefined object detectors (e.g., human detector) to refine and score the action proposals, but they require thousands of manual annotations to train... (read more)

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