$\kappa$-PMP: Enhancing Physics-based Motion Planners with Knowledge-based Reasoning
Muhayyuddin, Aliakbar Akbari, Jan Rosell

TL;DR
This paper introduces $7$-PMP, a knowledge-enhanced physics-based motion planning method that improves success rates, path quality, and power efficiency by integrating semantic reasoning into kinodynamic planners.
Contribution
It presents a novel approach combining a dynamic engine with geometric reasoning and semantic knowledge inference to enhance kinodynamic motion planning.
Findings
Significant reduction in power consumption.
Improved success rate in complex environments.
Enhanced quality of solution paths.
Abstract
Physics-based motion planning is a challenging task, since it requires the computation of the robot motions while allowing possible interactions with (some of) the obstacles in the environment. Kinodynamic motion planners equipped with a dynamic engine acting as state propagator are usually used for that purpose. The difficulties arise in the setting of the adequate forces for the interactions and because these interactions may change the pose of the manipulatable obstacles, thus either facilitating or preventing the finding of a solution path. The use of knowledge can alleviate the stated difficulties. This paper proposes the use of an enhanced state propagator composed of a dynamic engine and a low-level geometric reasoning process that is used to determine how to interact with the objects, i.e. from where and with which forces. The proposal, called \k{appa}-PMP can be used with any…
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