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Published byBenedict Russell Modified over 9 years ago
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Reporters: R98922004 Yun-Nung Chen, R98922033 Yu-Cheng Liu
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Ming Actor Correlations with Hierarchical Concurrence Parsing (ICASSP 2010) Kun Yuan, Hongxun Yao, Rongrong Ji, Xiaoshuai Sun Computer Science & Technology, Harbin Institute of Technology
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Introduction Actor Indexing Mining Actor Correlations Context-Based Actor Concurrence Graph Ranking Concurrent Shots Actor Correlation Changes Analysis Experimental Results
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Actor correlations graph interfaces
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Top 20 shots
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Shot boundary detection (SBD) Shots and scenes Locating actor faces & face tracking algorithm Face set: different poses from the same actor
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2D-PCA reduces dimension Features of same person may distribute discretely in feature space Given 2 face sets F k and F l, 2 pose sets If distance < T, 2 face sets belong to the same person
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A shot and its surrounding shots may present a plot between two actors in video Gaussian weight measurement
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Scene level correlation Video level correlation
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Construct correlations graph from
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A single character i Character correlations between i and j
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Given i, j, sort RankScore (k) for all k Show top 20 shots
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Two actors’ correlation changes with story Analyze the difference of concurrence R(i, j) A correlation measure between i and j in the part A Change ratio Hlp
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20 hours video of “Friends” TV series About 4000 shots Over 800 face sets Clustering into about 60 face sets (T = 0.25) Manual labeling to 17 actors
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The actor concurrence precision in all ranking shots is up to 90% The precision of each two actor’s co-occurrence in ranking top 20 is up to 98%
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