ASE

Author:

Peng Xue Bin1,Guo Yunrong2,Halper Lina2,Levine Sergey3,Fidler Sanja4

Affiliation:

1. University of California and NVIDIA, Canada

2. NVIDIA, Canada

3. University of California

4. University of Toronto, Canada and NVIDIA, Canada

Abstract

The incredible feats of athleticism demonstrated by humans are made possible in part by a vast repertoire of general-purpose motor skills, acquired through years of practice and experience. These skills not only enable humans to perform complex tasks, but also provide powerful priors for guiding their behaviors when learning new tasks. This is in stark contrast to what is common practice in physics-based character animation, where control policies are most typically trained from scratch for each task. In this work, we present a large-scale data-driven framework for learning versatile and reusable skill embeddings for physically simulated characters. Our approach combines techniques from adversarial imitation learning and unsupervised reinforcement learning to develop skill embeddings that produce life-like behaviors, while also providing an easy to control representation for use on new downstream tasks. Our models can be trained using large datasets of unstructured motion clips, without requiring any task-specific annotation or segmentation of the motion data. By leveraging a massively parallel GPU-based simulator, we are able to train skill embeddings using over a decade of simulated experiences, enabling our model to learn a rich and versatile repertoire of skills. We show that a single pre-trained model can be effectively applied to perform a diverse set of new tasks. Our system also allows users to specify tasks through simple reward functions, and the skill embedding then enables the character to automatically synthesize complex and naturalistic strategies in order to achieve the task objectives.

Publisher

Association for Computing Machinery (ACM)

Subject

Computer Graphics and Computer-Aided Design

Reference111 articles.

1. Joshua Achiam and Shankar Sastry . 2017. Surprise-Based Intrinsic Motivation for Deep Reinforcement Learning. CoRR abs/1703.01732 ( 2017 ). arXiv:1703.01732 http://arxiv.org/abs/1703.01732 Joshua Achiam and Shankar Sastry. 2017. Surprise-Based Intrinsic Motivation for Deep Reinforcement Learning. CoRR abs/1703.01732 (2017). arXiv:1703.01732 http://arxiv.org/abs/1703.01732

2. Trajectory Optimization for Full-Body Movements with Complex Contacts

3. Kate Baumli , David Warde-Farley , Steven Hansen , and Volodymyr Mnih . 2020. Relative Variational Intrinsic Control. CoRR abs/2012.07827 ( 2020 ). arXiv:2012.07827 https://arxiv.org/abs/2012.07827 Kate Baumli, David Warde-Farley, Steven Hansen, and Volodymyr Mnih. 2020. Relative Variational Intrinsic Control. CoRR abs/2012.07827 (2020). arXiv:2012.07827 https://arxiv.org/abs/2012.07827

4. Marc Bellemare , Sriram Srinivasan , Georg Ostrovski , Tom Schaul , David Saxton , and Remi Munos . 2016 . Unifying Count-Based Exploration and Intrinsic Motivation. In Advances in Neural Information Processing Systems, D. Lee, M. Sugiyama, U. Luxburg, I. Guyon, and R . Garnett (Eds.) , Vol. 29 . Curran Associates, Inc. https://proceedings.neurips.cc/paper/ 2016/file/afda332245e2af431fb7b672a68b659d-Paper.pdf Marc Bellemare, Sriram Srinivasan, Georg Ostrovski, Tom Schaul, David Saxton, and Remi Munos. 2016. Unifying Count-Based Exploration and Intrinsic Motivation. In Advances in Neural Information Processing Systems, D. Lee, M. Sugiyama, U. Luxburg, I. Guyon, and R. Garnett (Eds.), Vol. 29. Curran Associates, Inc. https://proceedings.neurips.cc/paper/2016/file/afda332245e2af431fb7b672a68b659d-Paper.pdf

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