Learning Three-dimensional Skeleton Data from Sign Language Video

Author:

Brock Heike1ORCID,Law Felix2,Nakadai Kazuhiro1,Nagashima Yuji3

Affiliation:

1. Honda Research Institute, Saitama, Japan

2. University of British Columbia, Vancouver, Canada

3. Kougakuin University, Tokyo, Japan

Abstract

Data for sign language research is often difficult and costly to acquire. We therefore present a novel pipeline able to generate motion three-dimensional (3D) skeleton data from single-camera sign language videos only. First, three recurrent neural networks are learned to infer the three-dimensional position data of body, face, and finger joints for a high resolution of the signer’s skeleton. Subsequently, the angular displacements of all joints over time are estimated using inverse kinematics and mapped to a virtual sign avatar for animation. Last, the generated data are evaluated in detail, including a sign language recognition and sign language synthesis scenario. Utilizing a neural word classifier trained on real motion capture data, we reliably classify word segments built from our newly generated position data with similar accuracy as motion capture data (absolute difference 3.8%). Furthermore, qualitative evaluation of sign animations shows that the avatar performs natural movements that are comprehensible and resemble animations created with original motion capture data.

Funder

Honda Research Institute Europe

Publisher

Association for Computing Machinery (ACM)

Subject

Artificial Intelligence,Theoretical Computer Science

Reference52 articles.

1. Data-driven development of Virtual Sign Language Communication Agents

2. Heike Brock Juliette Rengot and Kazuhiro Nakadai. 2018. Augmenting sparse corpora for enhanced sign language recognition and generation. In Proceedings of the 11th International Conference on Language Resources and Evaluation (LREC 2018) and the 8th Workshop on the Representation and Processing of Sign Languages: Involving the Language Community. European Language Resources Association (ELRA). Heike Brock Juliette Rengot and Kazuhiro Nakadai. 2018. Augmenting sparse corpora for enhanced sign language recognition and generation. In Proceedings of the 11th International Conference on Language Resources and Evaluation (LREC 2018) and the 8th Workshop on the Representation and Processing of Sign Languages: Involving the Language Community. European Language Resources Association (ELRA).

3. Upper Body Detection and Tracking in Extended Signing Sequences

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