ROAIFeb 20

Zero-shot Interactive Perception

arXiv:2602.18374v1
Originality Incremental advance
AI Analysis

This addresses the problem of robotic perception in complex, occluded environments for robotics applications, representing an incremental improvement with novel components like pushlines.

The paper tackles the problem of enabling robots to interact with objects to extract hidden information in partially observable scenarios, presenting Zero-Shot Interactive Perception (ZS-IP) which integrates multi-strategy manipulation with a Vision Language Model, and demonstrates that it outperforms passive and viewpoint-based perception techniques, particularly in pushing tasks.

Interactive perception (IP) enables robots to extract hidden information in their workspace and execute manipulation plans by physically interacting with objects and altering the state of the environment -- crucial for resolving occlusions and ambiguity in complex, partially observable scenarios. We present Zero-Shot IP (ZS-IP), a novel framework that couples multi-strategy manipulation (pushing and grasping) with a memory-driven Vision Language Model (VLM) to guide robotic interactions and resolve semantic queries. ZS-IP integrates three key components: (1) an Enhanced Observation (EO) module that augments the VLM's visual perception with both conventional keypoints and our proposed pushlines -- a novel 2D visual augmentation tailored to pushing actions, (2) a memory-guided action module that reinforces semantic reasoning through context lookup, and (3) a robotic controller that executes pushing, pulling, or grasping based on VLM output. Unlike grid-based augmentations optimized for pick-and-place, pushlines capture affordances for contact-rich actions, substantially improving pushing performance. We evaluate ZS-IP on a 7-DOF Franka Panda arm across diverse scenes with varying occlusions and task complexities. Our experiments demonstrate that ZS-IP outperforms passive and viewpoint-based perception techniques such as Mark-Based Visual Prompting (MOKA), particularly in pushing tasks, while preserving the integrity of non-target elements.

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