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POMDP-based online target detection and recognition for autonomous UAVs

机译:基于POMDP的在线目标检测和识别自主无人机

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This paper presents a target detection and recognition mission by an autonomous Unmanned Aerial Vehicule (UAV) modeled as a Partially Observable Markov Decision Process (POMDP). The POMDP model deals in a single framework with both perception actions (controlling the camera's view angle), and mission actions (moving between zones and flight levels, landing) needed to achieve the goal of the mission, i.e. landing in a zone containing a car whose model is recognized as a desired target model with sufficient belief. We explain how we automatically learned the probabilistic observation POMDP model from statistical analysis of the image processing algorithm used on-board the UAV to analyze objects in the scene. We also present our "optimize-while-execute" framework, which drives a POMDP sub-planner to optimize and execute the POMDP policy in parallel under action duration constraints, reasoning about the future possible execution states of the robotic system. Finally, we present experimental results, which demonstrate that Artificial Intelligence techniques like POMDP planning can be successfully applied in order to automatically control perception and mission actions hand-in-hand for complex time-constrained UAV missions.
机译:本文介绍了一种自主无人驾驶飞行(UAV)的目标检测和识别使命,其被建模为部分观察到的马尔可夫决策过程(POMDP)。 POMDP模型在一个框架中涉及一种框架,具有感知行动(控制相机的视角),并且使命动作(在区域和飞行水平之间移动,着陆)需要实现使命的目标,即降落在包含汽车的区域其模型被认为是具有足够信仰的所需目标模型。我们解释了我们如何自动学习概率观察POMDP模型从统计分析,用于在滑动UAV中使用的图像处理算法进行分析场景中的对象。我们还提供了我们的“优化 - 执行”框架,该框架驱动POMDP子计划者,以在动作持续时间约束下并行优化和执行POMDP策略,推理关于机器人系统的未来可能的执行状态。最后,我们提出了实验结果,这表明可以成功地应用POMDP规划等人工智能技术,以便自动控制对复杂的时间约束的无人机任务的手写的感知和任务动作。

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