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arxiv:2603.13904

Pixel-level Scene Understanding in One Token: Visual States Need What-is-Where Composition

Published on Mar 14
· Submitted by
seokminlee
on Mar 27
Authors:
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Abstract

CroBo is a visual state representation learning framework that uses global-to-local reconstruction to capture semantic identities and spatial locations of scene elements for robotic decision making.

AI-generated summary

For robotic agents operating in dynamic environments, learning visual state representations from streaming video observations is essential for sequential decision making. Recent self-supervised learning methods have shown strong transferability across vision tasks, but they do not explicitly address what a good visual state should encode. We argue that effective visual states must capture what-is-where by jointly encoding the semantic identities of scene elements and their spatial locations, enabling reliable detection of subtle dynamics across observations. To this end, we propose CroBo, a visual state representation learning framework based on a global-to-local reconstruction objective. Given a reference observation compressed into a compact bottleneck token, CroBo learns to reconstruct heavily masked patches in a local target crop from sparse visible cues, using the global bottleneck token as context. This learning objective encourages the bottleneck token to encode a fine-grained representation of scene-wide semantic entities, including their identities, spatial locations, and configurations. As a result, the learned visual states reveal how scene elements move and interact over time, supporting sequential decision making. We evaluate CroBo on diverse vision-based robot policy learning benchmarks, where it achieves state-of-the-art performance. Reconstruction analyses and perceptual straightness experiments further show that the learned representations preserve pixel-level scene composition and encode what-moves-where across observations. Project page available at: https://seokminlee-chris.github.io/CroBo-ProjectPage.

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We propose CroBo, a self-supervised visual representation framework for robotics that encodes both what is in the scene and where it is, all in a single compact token. By reconstructing masked local crops from a global bottleneck token, CroBo learns pixel-level scene composition and achieves state-of-the-art results on robot policy learning benchmarks.

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