Active Visuo-Tactile Interactive Robotic Perception for Accurate Object Pose Estimation in Dense Clutter
Abstract
This work presents a novel active visuo-tactile based framework for robotic systems to accurately estimate pose of objects in dense cluttered environments. The scene representation is derived using a novel declutter graph (DG) which describes the relationship among objects in the scene for decluttering by leveraging semantic segmentation and grasp affordances networks. The graph formulation allows robots to efficiently declutter the workspace by autonomously selecting the next best object to remove and the optimal action (prehensile or non-prehensile) to perform. Furthermore, we propose a novel translation-invariant Quaternion filter (TIQF) for active vision and active tactile based pose estimation. Both active visual and active tactile points are selected by maximizing the expected information gain. We evaluate our proposed framework on a system with two robots coordinating on randomized scenes of dense cluttered objects and perform ablation studies with static vision and active vision based estimation prior and post decluttering as baselines. Our proposed active visuo-tactile interactive perception framework shows upto 36% improvement in pose accuracy compared to the active vision baseline.
Cite
@article{arxiv.2202.02207,
title = {Active Visuo-Tactile Interactive Robotic Perception for Accurate Object Pose Estimation in Dense Clutter},
author = {Prajval Kumar Murali and Anirvan Dutta and Michael Gentner and Etienne Burdet and Ravinder Dahiya and Mohsen Kaboli},
journal= {arXiv preprint arXiv:2202.02207},
year = {2022}
}
Comments
Accepted for publication at IEEE Robotics and Automation Letters and IEEE International Conference on Robotics and Automation (ICRA) 2022