TL;DR
This paper introduces a system that synthesizes realistic dancing videos from music by learning cross-modal alignment, predicting continuous dance movements, and synchronizing dance with music rhythm.
Contribution
It presents a novel multi-module framework that models the relationship between music and dance, enabling automatic dance video synthesis from audio input.
Findings
Generated videos match music content and rhythm
System effectively predicts and aligns dance movements
Subjective evaluations confirm promising results
Abstract
Close your eyes and listen to music, one can easily imagine an actor dancing rhythmically along with the music. These dance movements are usually made up of dance movements you have seen before. In this paper, we propose to reproduce such an inherent capability of the human-being within a computer vision system. The proposed system consists of three modules. To explore the relationship between music and dance movements, we propose a cross-modal alignment module that focuses on dancing video clips, accompanied on pre-designed music, to learn a system that can judge the consistency between the visual features of pose sequences and the acoustic features of music. The learned model is then used in the imagination module to select a pose sequence for the given music. Such pose sequence selected from the music, however, is usually discontinuous. To solve this problem, in the spatial-temporal…
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