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Who's Better? Who's Best? Pairwise Deep Ranking for Skill Determination

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arxiv 1703.09913 v2 pith:UAXEVVOV submitted 2017-03-29 cs.CV

Who's Better? Who's Best? Pairwise Deep Ranking for Skill Determination

classification cs.CV
keywords skillvideorankingvideosapplicablebestbettercollections
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We present a method for assessing skill from video, applicable to a variety of tasks, ranging from surgery to drawing and rolling pizza dough. We formulate the problem as pairwise (who's better?) and overall (who's best?) ranking of video collections, using supervised deep ranking. We propose a novel loss function that learns discriminative features when a pair of videos exhibit variance in skill, and learns shared features when a pair of videos exhibit comparable skill levels. Results demonstrate our method is applicable across tasks, with the percentage of correctly ordered pairs of videos ranging from 70% to 83% for four datasets. We demonstrate the robustness of our approach via sensitivity analysis of its parameters. We see this work as effort toward the automated organization of how-to video collections and overall, generic skill determination in video.

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