TRACER: Texture-Robust Affordance Chain-of-Thought for Deformable-Object Refinement
Wanjun Jia, Kang Li, Fan Yang, Mengfei Duan, Wenrui Chen, Yiming Jiang, Hui Zhang, Kailun Yang, Zhiyong Li, Yaonan Wang

TL;DR
TRACER is a novel framework that improves robotic manipulation of deformable objects by robustly mapping high-level instructions to physical interaction points, effectively handling complex textures and appearance variations.
Contribution
It introduces a hierarchical affordance reasoning method with boundary refinement and convergence flow to enhance spatial accuracy and physical plausibility in deformable-object manipulation.
Findings
Significantly improves affordance grounding precision.
Enhances success rates of long-horizon manipulation tasks.
Robustly handles diverse textures and appearance variations.
Abstract
The central challenge in robotic manipulation of deformable objects lies in aligning high-level semantic instructions with physical interaction points under complex appearance and texture variations. Due to near-infinite degrees of freedom, complex dynamics, and heterogeneous patterns, existing vision-based affordance prediction methods often suffer from boundary overflow and fragmented functional regions. To address these issues, we propose TRACER, a Texture-Robust Affordance Chain-of-thought with dEformable-object Refinement framework, which establishes a cross-hierarchical mapping from hierarchical semantic reasoning to appearance-robust and physically consistent functional region refinement. Specifically, a Tree-structured Affordance Chain-of-Thought (TA-CoT) is formulated to decompose high-level task intentions into hierarchical sub-task semantics, providing consistent guidance…
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Taxonomy
TopicsRobot Manipulation and Learning · Modular Robots and Swarm Intelligence · Reinforcement Learning in Robotics
