Task-driven Perception and Manipulation for Constrained Placement of Unknown Objects
Chaitanya Mitash, Rahul Shome, Bowen Wen, Abdeslam Boularias and, Kostas Bekris

TL;DR
This paper introduces a novel manipulation planning algorithm for robotic pick-and-place tasks involving unknown objects, ensuring safe placement in constrained spaces without geometric models, with high success rates demonstrated in real-world experiments.
Contribution
The work presents a dual-estimate volumetric manipulation planning framework for unknown objects, enabling safe and efficient constrained placement without prior shape information.
Findings
Achieves over 95% success rate in real-world experiments.
Outperforms straightforward pick-sense-and-place methods in constrained tasks.
Reduces sensing and execution time compared to baseline approaches.
Abstract
Recent progress in robotic manipulation has dealt with the case of previously unknown objects in the context of relatively simple tasks, such as bin-picking. Existing methods for more constrained problems, however, such as deliberate placement in a tight region, depend more critically on shape information to achieve safe execution. This work deals with pick-and-constrained placement of objects without access to geometric models. The objective is to pick an object and place it safely inside a desired goal region without any collisions, while minimizing the time and the sensing operations required to complete the task. An algorithmic framework is proposed for this purpose, which performs manipulation planning simultaneously over a conservative and an optimistic estimate of the object's volume. The conservative estimate ensures that the manipulation is safe while the optimistic estimate…
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