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Learning as Performance: Autoencoding and Generating Dance Movements in Real Time

  • Alexander Berman
  • Valencia James
Conference paper
Part of the Lecture Notes in Computer Science book series (LNCS, volume 10783)

Abstract

This paper describes the technology behind a performance where human dancers interact with an “artificial” performer projected on a screen. The system learns movement patterns from the human dancers in real time. It can also generate novel movement sequences that go beyond what it has been taught, thereby serving as a source of inspiration for the human dancers, challenging their habits and normal boundaries and enabling a mutual exchange of movement ideas. It is central to the performance concept that the system’s learning process is perceivable for the audience. To this end, an autoencoder neural network is trained in real time with motion data captured live on stage. As training proceeds, a “pose map” emerges that the system explores in a kind of improvisational state. The paper shows how this method is applied in the performance, and shares observations and lessons made in the process.

Keywords

Human-computer co-creativity Movement generation Real-time learning Autoencoder 

Notes

Acknowledgments

The work presented in this paper was supported by Kulturbryggan/Swedish Arts Grants Committee, European Commission Culture Program, Life Long Burning, National Cultural Fund of Hungary, Trafó House of Contemporary Arts, CAFe Budapest Contemporary Arts Festival and 3:e Våningen.

Supplementary material

465633_1_En_17_MOESM1_ESM.mp4 (12.2 mb)
Supplementary material 1 (mp4 12506 KB)
465633_1_En_17_MOESM2_ESM.mp4 (9.9 mb)
Supplementary material 2 (mp4 10088 KB)

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Copyright information

© Springer International Publishing AG, part of Springer Nature 2018

Authors and Affiliations

  1. 1.AI_amGothenburgSweden
  2. 2.AI_amRedwood CityUSA

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