PKU-AIPL' Solution for MediaEval 2015 Emotion in Music Task
نویسندگان
چکیده
In this paper, we describe the PKU-AIPL Team solution of Emotion in Music task in MediaEval benchmarking campaign 2015. We extracted and designed several sets of features and used continuous conditional random field(CCRF) for dynamic emotion characterization task.
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