D*+: A Risk Aware Platform Agnostic Heterogeneous Path Planner
Samuel Karlsson, Anton Koval, Christoforos Kanellakis, George, Nikolakopoulos

TL;DR
D$^*_+$ is a novel, risk-aware, platform-agnostic global path planner that improves robotic navigation by modeling unknown spaces, incorporating risk layers, and dynamically updating maps to handle complex environments effectively.
Contribution
It introduces a comprehensive path planning approach combining risk modeling, unknown space handling, and dynamic map updates, addressing limitations of occupancy-based planners in complex environments.
Findings
Reduces path errors in poorly reconstructed map areas
Prevents unsafe shortcuts near obstacles
Adapts to real-time map changes effectively
Abstract
This article establishes the novel D, a risk-aware and platform-agnostic heterogeneous global path planner for robotic navigation in complex environments. The proposed planner addresses a fundamental bottleneck of occupancy-based path planners related to their dependency on accurate and dense maps. More specifically, their performance is highly affected by poorly reconstructed or sparse areas (e.g. holes in the walls or ceilings) leading to faulty generated paths outside the physical boundaries of the 3-dimensional space. As it will be presented, D addresses this challenge with three novel contributions, integrated into one solution, namely: a) the proximity risk, b) the modeling of the unknown space, and c) the map updates. By adding a risk layer to spaces that are closer to the occupied ones, some holes are filled, and thus the problematic short-cutting through them to the…
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Taxonomy
TopicsRobotic Path Planning Algorithms · Robotics and Sensor-Based Localization · Computational Geometry and Mesh Generation
