Litcius/Paper detail

Temporally Guided Music-to-Body-Movement Generation

Hsuan-Kai Kao, Li Su

202039 citationsDOIOpen Access PDF

Abstract

This paper presents a neural network model to generate virtual violinist's 3-D skeleton movements from music audio. Improved from the conventional recurrent neural network models for generating 2-D skeleton data in previous works, the proposed model incorporates an encoder-decoder architecture, as well as the self-attention mechanism to model the complicated dynamics in body movement sequences. To facilitate the optimization of self-attention model, beat tracking is applied to determine effective sizes and boundaries of the training examples. The decoder is accompanied with a refining network and a bowing attack inference mechanism to emphasize the right-hand behavior and bowing attack timing. Both objective and subjective evaluations reveal that the proposed model outperforms the state-of-the-art methods. To the best of our knowledge, this work represents the first attempt to generate 3-D violinists? body movements considering key features in musical body movement.

Topics & Concepts

Computer scienceArtificial intelligenceArtificial neural networkBowingInferenceMechanism (biology)Key (lock)Movement (music)Speech recognitionHidden Markov modelData modelingNetwork modelMachine learningComputer visionTracking (education)Pattern recognition (psychology)Beat (acoustics)Point (geometry)Set (abstract data type)Skeleton (computer programming)Training setSpline (mechanical)Work (physics)BiometricsRecurrent neural networkNonlinear systemMusic Technology and Sound StudiesMusic and Audio ProcessingNeuroscience and Music Perception