Uncertainty-Aware Occupancy Map Prediction Using Generative Networks For Robot Navigation

2019 INTERNATIONAL CONFERENCE ON ROBOTICS AND AUTOMATION (ICRA)(2019)

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摘要
Efficient exploration through unknown environments remains a challenging problem for robotic systems. In these situations, the robot's ability to reason about its future motion is often severely limited by sensor field of view (FOV). By contrast, biological systems routinely make decisions by taking into consideration what might exist beyond their FOV based on prior experience. We present an approach for predicting occupancy map representations of sensor data for future robot motions using deep neural networks. We develop a custom loss function used to make accurate prediction while emphasizing physical boundaries. We further study extensions to our neural network architecture to account for uncertainty and ambiguity inherent in mapping and exploration. Finally, we demonstrate a combined map prediction and information-theoretic exploration strategy using the variance of the generated hypotheses as the heuristic for efficient exploration of unknown environments.
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关键词
sensor field of view,sensor FOV,generated hypotheses,information-theoretic exploration strategy,combined map prediction,neural network architecture,custom loss function,deep neural networks,future robot motions,sensor data,occupancy map representations,biological systems,sensor field,future motion,robotic systems,robot navigation,generative networks,uncertainty-aware occupancy map prediction
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