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      Listen to Dance: Music-driven choreography generation using Autoregressive Encoder-Decoder Network

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          Abstract

          Automatic choreography generation is a challenging task because it often requires an understanding of two abstract concepts - music and dance - which are realized in the two different modalities, namely audio and video, respectively. In this paper, we propose a music-driven choreography generation system using an auto-regressive encoder-decoder network. To this end, we first collect a set of multimedia clips that include both music and corresponding dance motion. We then extract the joint coordinates of the dancer from video and the mel-spectrogram of music from audio, and train our network using music-choreography pairs as input. Finally, a novel dance motion is generated at the inference time when only music is given as an input. We performed a user study for a qualitative evaluation of the proposed method, and the results show that the proposed model is able to generate musically meaningful and natural dance movements given an unheard song.

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          An audio-driven dancing avatar

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            Author and article information

            Journal
            02 November 2018
            Article
            1811.00818
            45ce224c-f591-446b-b4ba-3cc5f8356fbb

            http://arxiv.org/licenses/nonexclusive-distrib/1.0/

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            Custom metadata
            5 pages
            cs.MM

            Graphics & Multimedia design
            Graphics & Multimedia design

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