Visualizing High-Dimensional Configuration Spaces: A Comprehensive Analytical Approach
The representation of a Configuration Space C plays a vital role in accelerating the finding of a collision-free path for sampling-based motion planners where the majority of computation time is spent in collision checking of states. Traditionally, planners evaluate C's representations through...
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Zusammenfassung: | The representation of a Configuration Space C plays a vital role in
accelerating the finding of a collision-free path for sampling-based motion
planners where the majority of computation time is spent in collision checking
of states. Traditionally, planners evaluate C's representations through limited
evaluations of collision-free paths using the collision checker or by reducing
the dimensionality of C for visualization. However, a collision checker may
indicate high accuracy even when only a subset of the original C is
represented; limiting the motion planner's ability to find paths comparable to
those in the original C. Additionally, dealing with high-dimensional Cs is
challenging, as qualitative evaluations become increasingly difficult in
dimensions higher than three, where reduced-dimensional C evaluation may
decrease accuracy in cluttered environments. In this paper, we present a novel
approach for visualizing representations of high-dimensional Cs of manipulator
robots in a 2D format. We provide a new tool for qualitative evaluation of
high-dimensional Cs approximations without reducing the original dimension.
This enhances our ability to compare the accuracy and coverage of two different
high-dimensional Cs. Leveraging the kinematic chain of manipulator robots and
human color perception, we show the efficacy of our method using a
7-degree-of-freedom CS of a manipulator robot. This visualization offers
qualitative insights into the joint boundaries of the robot and the coverage of
collision state combinations without reducing the dimensionality of the
original data. To support our claim, we conduct a numerical evaluation of the
proposed visualization. |
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DOI: | 10.48550/arxiv.2312.10918 |