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Reduced Simulation: Real-to-Sim Approach toward Collision Detection in Narrowly Confined Environments
2021
Robotics
Recently, several deep-learning based navigation methods have been achieved because of a high quality dataset collected from high-quality simulated environments. However, the cost of creating high-quality simulated environments is high. In this paper, we present a concept of the reduced simulation, which can serve as a simplified version of a simulated environment yet be efficient enough for training deep-learning based UAV collision avoidance approaches. Our approach deals with the reality gap
doi:10.3390/robotics10040131
fatcat:npeqjdgstzcnrhkjxw6hct3u4u