Engineering and Technologynpj Robotics
Smart insect-computer hybrid robots empowered with enhanced obstacle avoidance capabilities using onboard monocular camera
R. Li, Q. Lin, et al.
This paper introduces a groundbreaking navigation algorithm equipped with an integrated obstacle avoidance module for insect-computer hybrid robots, utilizing a monocular camera. By harnessing a deep learning-based monocular depth estimation algorithm, the system has drastically improved navigation success rates from a meager 6.7% to an impressive 73.3%. This innovative research was conducted by Rui Li, Qifeng Lin, Phuoc Thanh Tran-Ngoc, Duc Long Le, and Hirotaka Sato.
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