2021.12.14 翁政弘報告

20211214_Dual LearningMM ’21 MultiMedia: October 20–24, 2021, Virtual Event, China

Topic: Dual Learning Music Composition and Dance Choreography [Paper][ppt][pdf]

Author: Shuang Wu et al.

Abstract:
Music and dance have always co-existed as pillars of human activities, contributing immensely to the cultural, social, and entertainment functions in virtually all societies. Notwithstanding the gradual systematization of music and dance into two independent disciplines, their intimate connection is undeniable and one artform often appears incomplete without the other. Recent research works have studied generative models for dance sequences conditioned on music. The dual task of composing music for given dances, however, has been largely overlooked.

In this paper, we propose a novel extension, where we jointly model both tasks in a dual learning approach. To leverage the duality of the two modalities, we introduce an optimal transport objective to align feature embeddings, as well as a cycle consistency loss to foster overall consistency. Experimental results demonstrate that our dual learning framework improves individual task performance, delivering generated music compositions and dance choreographs that are realistic and faithful to the conditioned inputs.

本篇發表於 110上學期。將永久鏈結加入書籤。