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CaMeRL: Collision-Aware and Memory-Enhanced Reinforcement Learning for UAV Navigation in Multi-Scale Obstacle Environments

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In obstacle avoidance navigation of unmanned aerial vehicles (UAVs), variations in obstacle scale have received strangely less attention than obstacle number or density. Existing methods typically extract purely geometric features from single-frame depth observations. Such representations tend to neglect small obstacles and lose spatial context under occlusions caused by large obstacles, leading to noticeable degradation in environments with multi-scale obstacles. To address this issue, we propose CaMeRL, a Collision-aware and Memory-enhanced Reinforcement Learning framework for UAV navigation. The collision-aware latent representation encodes risk-sensitive depth cues to preserve fine-grained obstacle structures, thereby improving sensitivity to small obstacles. The temporal memory module integrates observations across frames, mitigating partial observability caused by large-obstacle occlusions. We evaluate CaMeRL with multi-scale obstacles, including ultra-small and extra-large obstacle settings. Results show that CaMeRL outperforms state-of-the-art baselines across all scales, with success rate gains of 0.48 and 0.28 in the ultra-small and extra-large settings, respectively. More importantly, CaMeRL achieves reliable navigation in cluttered outdoor environments.

Hong Hong, Feiyu Liao, Yongheng Liang, Boning Zhang, Haitao Wang, Hejun Wu• 2026

Related benchmarks

TaskDatasetResultRank
Obstacle Avoidance NavigationObstacle Scale Ultra-small
Success Rate77
3
Obstacle Avoidance NavigationObstacle Scale Small
Success Rate83
3
Obstacle Avoidance NavigationObstacle Scale Medium
Success Rate91
3
Obstacle Avoidance NavigationObstacle Scale Large
Success Rate90
3
Obstacle Avoidance NavigationObstacle Scale Extra-large
Success Rate72
3
Obstacle Avoidance NavigationObstacle Scale Mixed
Success Rate79
3
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