TACTFUL: Tactile-Driven Exploration For Object Localization and Identification in Confined Environments

June 23, 2026 ยท Grace Period ยท ๐Ÿ› IROS 2026

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Authors Shivani Kamtikar, Chung Hee Kim, Camilla Tabasso, Tye Brady, Joshua Migdal, Taskin Padir arXiv ID 2606.24712 Category cs.RO: Robotics Cross-listed cs.AI Citations 0 Venue IROS 2026
Abstract
Humans effortlessly locate and identify objects by touch alone, even without vision. In contrast, robotic systems rely heavily on vision and struggle with autonomous tactile exploration and object identification. We present TACTFUL, a vision-free tactile exploration framework that enables a multi-fingered robot to autonomously explore confined workspaces, discover objects through contact, and identify them via tactile reconstruction. Trained entirely on real hardware without simulation, our system learns a single policy that balances global workspace exploration with local surface refinement through a dynamic reward schedule. Our results demonstrate that tactile sensing, when paired with structured learning, can serve as an effective primary modality for object-level reasoning, achieving 77% success with 0.015 m average reconstruction error and outperforming baseline approaches on real-world objects.
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