CUTE-Planner: Confidence-aware Uneven Terrain Exploration Planner

Citations

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초록

Planetary exploration robots must navigate uneven terrain while building reliable maps for space missions. However, most existing methods incorporate traversability constraints but may not handle high uncertainty in elevation estimates near complex features like craters, do not consider exploration strategies for uncertainty reduction, and typically fail to address how elevation uncertainty affects navigation safety and map quality. To address the problems, we propose a framework integrating safe path generation, adaptive confidence updates, and confidence-aware exploration strategies. Using Kalman-based elevation estimation, our approach generates terrain traversability and confidence scores, then incorporates them into Graph-Based exploration Planner (GBP) to prioritize exploration of traversable low-confidence regions. We evaluate our framework through simulated lunar experiments using a novel low-confidence region ratio metric, achieving 69% uncertainty reduction compared to baseline GBP. In terms of mission success rate, our method achieves 100% while baseline GBP achieves 0%, demonstrating improvements in exploration safety and map reliability. © 2025 IEEE.

제목
CUTE-Planner: Confidence-aware Uneven Terrain Exploration Planner
저자
Park, MiryeongCho, DongjinKim, SanghyunCho, Younggun
DOI
10.1109/iSpaRo66239.2025.11436759
발행일
2025
유형
Conference paper
저널명
2025 International Conference on Space Robotics, iSpaRo 2025
페이지
72 ~ 78