Anais Do XXXIV Concurso De Teses E Dissertações Da SBC (CTD-SBC 2021) 2021
DOI: 10.5753/ctd.2021.15762
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Synthesizing Realistic Human Dance Motions Conditioned by Musical Data using Graph Convolutional Networks

Abstract: Learning to move naturally from music, i.e., to dance, is one of the most complex motions humans often perform effortlessly. Existing techniques of automatic dance generation with classical CNN and RNN models undergo training and variability issues due to the non-Euclidean geometry of the motion manifold. We design a novel method based on GCNs to tackle the problem of automatic dance generation from audio. Our method uses an adversarial learning scheme conditioned on the input music audios to create natural mo… Show more

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