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arxiv: 2403.11661 · v1 · pith:WRNCJFO7 · submitted 2024-03-18 · cs.RO · cs.SY· eess.SY

Combining Local and Global Perception for Autonomous Navigation on Nano-UAVs

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classification cs.RO cs.SYeess.SY
keywords autonomousnavigationperceptiondepthglobalinformationlocalnano-uavs
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A critical challenge in deploying unmanned aerial vehicles (UAVs) for autonomous tasks is their ability to navigate in an unknown environment. This paper introduces a novel vision-depth fusion approach for autonomous navigation on nano-UAVs. We combine the visual-based PULP-Dronet convolutional neural network for semantic information extraction, i.e., serving as the global perception, with 8x8px depth maps for close-proximity maneuvers, i.e., the local perception. When tested in-field, our integration strategy highlights the complementary strengths of both visual and depth sensory information. We achieve a 100% success rate over 15 flights in a complex navigation scenario, encompassing straight pathways, static obstacle avoidance, and 90{\deg} turns.

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