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Active Object Detection Using Double DQN and Prioritized Experience Replay

机译:使用双重DQN和优先体验重放的主动对象检测

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Visual object detection is one of the fundamental tasks in computer vision and robotics. Small scale, partial capture and occlusion often occur in robotic applications, most existing object detection algorithms perform poorly in such situations. While a robot can look at one object from different views and plan its trajectory in the next few steps, which can lead to better observations. We formulate it as a sequential action-decision process, and develop a deep reinforcement learning architecture to solve the active object detection problem. A double deep Q-learning network (DQN) is applied to predict an action at each step. Experimental validation on the Active Vision Dataset shows the efficiency of the proposed method.
机译:视觉对象检测是计算机视觉和机器人技术的基本任务之一。小规模,部分捕获和遮挡通常发生在机器人应用中,大多数现有的对象检测算法在这种情况下的性能都很差。机器人可以从不同的视角观察一个物体,并在接下来的几个步骤中规划其轨迹,这可以带来更好的观察效果。我们将其表述为一个顺序的动作决策过程,并开发一种深度强化学习体系结构来解决主动对象检测问题。双深度Q学习网络(DQN)用于预测每个步骤的动作。对Active Vision数据集的实验验证表明了该方法的有效性。

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