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arxiv: 1703.06891 · v3 · submitted 2017-03-20 · 💻 cs.LG · cs.MM· cs.NE· cs.SD· stat.ML

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Dance Dance Convolution

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classification 💻 cs.LG cs.MMcs.NEcs.SDstat.ML
keywords dancestepstepschartchartstaskaudiodeciding
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Dance Dance Revolution (DDR) is a popular rhythm-based video game. Players perform steps on a dance platform in synchronization with music as directed by on-screen step charts. While many step charts are available in standardized packs, players may grow tired of existing charts, or wish to dance to a song for which no chart exists. We introduce the task of learning to choreograph. Given a raw audio track, the goal is to produce a new step chart. This task decomposes naturally into two subtasks: deciding when to place steps and deciding which steps to select. For the step placement task, we combine recurrent and convolutional neural networks to ingest spectrograms of low-level audio features to predict steps, conditioned on chart difficulty. For step selection, we present a conditional LSTM generative model that substantially outperforms n-gram and fixed-window approaches.

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