Publication | Closed Access
Deep Reinforcement Learning to Acquire Navigation Skills for Wheel-Legged Robots in Complex Environments
47
Citations
18
References
2018
Year
Unknown Venue
Artificial IntelligenceEngineeringMachine LearningField RoboticsIntelligent RoboticsCognitive RoboticsAcquire Navigation SkillsData ScienceLegged RobotAction PoliciesRobot LearningKinematicsRobotics PerceptionPath PlanningAction Model LearningComputer ScienceTemporal ComplexitiesDeep LearningDeep Reinforcement LearningComplex EnvironmentsRoboticsDomain Randomization Technique
Mobile robot navigation in complex and dynamic environments is a challenging but important problem. Reinforcement learning approaches fail to solve these tasks efficiently due to reward sparsities, temporal complexities and high-dimensionality of sensorimotor spaces which are inherent in such problems. We present a novel approach to train action policies to acquire navigation skills for wheel-legged robots using deep reinforcement learning. The policy maps height-map image observations to motor commands to navigate to a target position while avoiding obstacles. We propose to acquire the multifaceted navigation skill by learning and exploiting a number of manageable navigation behaviors. We also introduce a domain randomization technique to improve the versatility of the training samples. We demonstrate experimentally a significant improvement in terms of data-efficiency, success rate, robustness against irrelevant sensory data, and also the quality of the maneuver skills.
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