ROCVDec 16, 2019

Evolution of Robust High Speed Optical-Flow-Based Landing for Autonomous MAVs

arXiv:1912.07735v113 citations
Originality Incremental advance
AI Analysis

This addresses the reality gap in evolutionary robotics for autonomous MAV landing, offering incremental improvements in robustness for real-world deployment.

The paper tackled the problem of optimizing neurocontrollers for quick, safe landing maneuvers of quadrotor MAVs using optical flow divergence, and the result was that a piece-wise linear control scheme outperformed simple linear schemes, with abstracted inputs enabling near-seamless transfer from simulation to real-world testing on CMOS and dynamic vision sensors.

Automatic optimization of robotic behavior has been the long-standing goal of Evolutionary Robotics. Allowing the problem at hand to be solved by automation often leads to novel approaches and new insights. A common problem encountered with this approach is that when this optimization occurs in a simulated environment, the optimized policies are subject to the reality gap when implemented in the real world. This often results in sub-optimal behavior, if it works at all. This paper investigates the automatic optimization of neurocontrollers to perform quick but safe landing maneuvers for a quadrotor micro air vehicle using the divergence of the optical flow field of a downward looking camera. The optimized policies showed that a piece-wise linear control scheme is more effective than the simple linear scheme commonly used, something not yet considered by human designers. Additionally, we show the utility in using abstraction on the input and output of the controller as a tool to improve the robustness of the optimized policies to the reality gap by testing our policies optimized in simulation on real world vehicles. We tested the neurocontrollers using two different methods to generate and process the visual input, one using a conventional CMOS camera and one a dynamic vision sensor, both of which perform significantly differently than the simulated sensor. The use of the abstracted input resulted in near seamless transfer to the real world with the controllers showing high robustness to a clear reality gap.

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