Point Tracking Improves World Action Models
摘要
Robot policy learning benefits from world-action models that capture environment dynamics, but pixel-level prediction entangles dynamics with nuisance factors such as lighting and texture, making learned representations vulnerable to task-irrelevant visual variation. We propose JOPAT, a JOint Pixel-And-Track World-Action Model that predicts latent visual observations, 2D point tracks with visibility, and actions in a single denoising diffusion transformer. The key insight is that tracks provide an explicit representation of motion that captures long-horizon dynamics and remains robust under occlusion or partial out-of-frame motion, offering greater utility than modeling pixel appearance alone. On LIBERO and real-world LeRobot tasks, JOPAT improves over pixel-based baselines, with the largest gains on long-horizon tasks involving occlusion, object interaction, and off-screen motion.
引用
@article{arxiv.2605.23856,
title = {Point Tracking Improves World Action Models},
author = {Jiarui Guan and Wenshuai Zhao and Yue Pei and Ziliang Chen and Arno Solin and Juho Kannala},
journal= {arXiv preprint arXiv:2605.23856},
year = {2026}
}