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Enhanced deep reinforcement learning deep q-network models

机译:增强深增强学习深度Q网模型

摘要

A reinforcement learning method and apparatus includes storing video frames in a video memory, performing a first preprocessing step of retrieving a sequence of n image frames of the stored video frames, and merging the n image frames in a fading-in fashion by incrementally increasing the intensity of each frame up to the most recent frame having full intensity to obtain a merged frame; and performing a training step of inputting the merged frame to the DQN and training the DQN to learn Q-values for all possible actions from a state represented by the merged frame with only a single forward pass through the network. The learning method and apparatus includes a second preprocessing step of removing the background from the merged frame. The method can be applied to any DQN learning method that uses a convolution neural network as its core value function approximator.
机译:增强学习方法和装置包括在视频存储器中存储视频帧,执行检索存储的视频帧的n个图像帧的序列的第一预处理步骤,并通过递增地增加逐渐增加时的时尚以逐渐增加的n图像帧合并 每个帧的强度到最近的帧具有完全强度,以获得合并框架; 并执行将合并帧输入到DQN的训练步骤,并训练DQN以学习来自由合并帧表示的状态的所有可能动作的Q值,该帧仅具有单个向前通过网络。 学习方法和装置包括从合并帧中移除背景的第二预处理步骤。 该方法可以应用于任何DQN学习方法,该方法使用卷积神经网络作为其核心值函数近似器。

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