Disentangling 3D Animal Pose Dynamics with Scrubbed Conditional Latent Variables

0citations
Project
0
Citations
#1996
in ICLR 2025
of 3827 papers
9
Authors
4
Data Points

Abstract

Methods for tracking lab animal movements in unconstrained environments have become increasingly common and powerful tools for neuroscience. The prevailing hypothesis is that animal behavior in these environments comprises sequences of discrete stereotyped body movements ("motifs" or "actions"). However, the same action can occur at different speeds or heading directions, and the same action may manifest slightly differently across subjects due to, for example, variation in body size. These and other forms of nuisance variability complicate attempts to quantify animal behavior in terms of discrete action sequences and draw meaningful comparisons across individual subjects. To address this, we present a framework for motion analysis that uses conditional variational autoencoders in conjunction with adversarial learning paradigms to disentangle behavioral factors. We demonstrate the utility of this approach in downstream tasks such as clustering, decodability, and motion synthesis. Further, we apply our technique to improve disease detection in a Parkinsonian mouse model.

Citation History

Jan 25, 2026
0
Jan 26, 2026
0
Jan 26, 2026
0
Jan 28, 2026
0