TY - JOUR A1 - de Croon, Guido C. H. E. A1 - De Wagter, Christophe A1 - Seidl, Tobias T1 - Enhancing optical-flow-based control by learning visual appearance cues for flying robots T2 - Nature machine intelligence N2 - Flying insects employ elegant optical-flow-based strategies to solve complex tasks such as landing or obstacle avoidance. Roboticists have mimicked these strategies on flying robots with only limited success, because optical flow (1) cannot disentangle distance from velocity and (2) is less informative in the highly important flight direction. Here, we propose a solution to these fundamental shortcomings by having robots learn to estimate distances to objects by their visual appearance. The learning process obtains supervised targets from a stability-based distance estimation approach. We have successfully implemented the process on a small flying robot. For the task of landing, it results in faster, smooth landings. For the task of obstacle avoidance, it results in higher success rates at higher flight speeds. Our results yield improved robotic visual navigation capabilities and lead to a novel hypothesis on insect intelligence: behaviours that were described as optical-flow-based and hardwired actually benefit from learning processes. Y1 - 2021 UR - https://whge.opus.hbz-nrw.de/frontdoor/index/index/docId/4040 SN - 2522-5839 VL - 3 IS - 1 SP - 33 EP - 41 ER -