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Hierarchical Active Tracking Control for UAVs via Deep Reinforcement Learning
2021
Applied Sciences
Active tracking control is essential for UAVs to perform autonomous operations in GPS-denied environments. In the active tracking task, UAVs take high-dimensional raw images as input and execute motor actions to actively follow the dynamic target. Most research focuses on three-stage methods, which entail perception first, followed by high-level decision-making based on extracted spatial information of the dynamic target, and then UAV movement control, using a low-level dynamic controller.
doi:10.3390/app112210595
fatcat:4yzj47nofzbrho72tlvrwn7qgm