A-OctoMap: An Adaptive OctoMap for Online Path Planning
Yihui Mao, Shuo Liu

TL;DR
This paper introduces A-OctoMap, an adaptive hierarchical map structure that improves geometric information preservation and path planning accuracy in robotics, while maintaining computational efficiency in complex environments.
Contribution
The paper presents a novel adaptive OctoMap that enhances downsampling and path planning by preserving key geometric details and increasing success rates in complex scenes.
Findings
Significant reduction in information loss during map reconstruction.
Improved pathfinding success rate and shorter paths in simulations.
Enhanced computational efficiency over existing methods.
Abstract
Downsampling and path planning are essential in robotics and autonomous systems, as they enhance computational efficiency and enable effective navigation in complex environments. However, current downsampling methods often fail to preserve crucial geometric information while maintaining computational efficiency, leading to challenges such as information loss during map reconstruction and the need to balance precision with computational demands. Similarly, current graph-based search algorithms for path planning struggle with fixed resolutions in complex environments, resulting in inaccurate obstacle detection and suboptimal or failed pathfinding. To address these issues, we introduce an adaptive OctoMap that utilizes a hierarchical data structure. This innovative approach preserves key geometric information during downsampling and offers a more flexible representation for pathfinding…
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Taxonomy
TopicsRobotic Path Planning Algorithms · Human Motion and Animation · Control and Dynamics of Mobile Robots
