5
0

Learning Task-Agnostic Skill Bases to Uncover Motor Primitives in Animal Behaviors

Jiyi Wang
Jingyang Ke
Bo Dai
Anqi Wu
Main:9 Pages
8 Figures
Bibliography:3 Pages
Appendix:4 Pages
Abstract

Animals flexibly recombine a finite set of core motor primitives to meet diverse task demands, but existing behavior-segmentation methods oversimplify this process by imposing discrete syllables under restrictive generative assumptions. To reflect the animal behavior generation procedure, we introduce skill-based imitation learning (SKIL) for behavior understanding, a reinforcement learning-based imitation framework that (1) infers interpretable skill sets, i.e., latent basis functions of behavior, by leveraging representation learning on transition probabilities, and (2) parameterizes policies as dynamic mixtures of these skills. We validate our approach on a simple grid world, a discrete labyrinth, and unconstrained videos of freely moving animals. Across tasks, it identifies reusable skill components, learns continuously evolving compositional policies, and generates realistic trajectories beyond the capabilities of traditional discrete models. By exploiting generative behavior modeling with compositional representations, our method offers a concise, principled account of how complex animal behaviors emerge from dynamic combinations of fundamental motor primitives.

View on arXiv
@article{wang2025_2506.15190,
  title={ Learning Task-Agnostic Skill Bases to Uncover Motor Primitives in Animal Behaviors },
  author={ Jiyi Wang and Jingyang Ke and Bo Dai and Anqi Wu },
  journal={arXiv preprint arXiv:2506.15190},
  year={ 2025 }
}
Comments on this paper