深度视觉运动策略的端到端训练

S. Levine, Chelsea Finn, Trevor Darrell, P. Abbeel
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引用次数: 3012

摘要

策略搜索方法可以让机器人学习各种任务的控制策略,但策略搜索的实际应用通常需要手工设计用于感知、状态估计和低级控制的组件。在本文中,我们的目标是回答以下问题:端到端联合训练感知和控制系统是否比单独训练每个组件提供更好的性能?为此,我们开发了一种方法,可用于学习将原始图像观测直接映射到机器人电机扭矩的策略。策略由具有92,000个参数的深度卷积神经网络(cnn)表示,并使用部分观察引导策略搜索方法进行训练,该方法将策略搜索转换为监督学习,并通过简单的以轨迹为中心的强化学习方法提供监督。我们在一系列现实世界的操作任务中评估了我们的方法,这些任务需要视觉和控制之间的密切协调,例如将瓶盖拧到瓶子上,并与一系列先前的政策搜索方法进行了模拟比较。
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End-to-End Training of Deep Visuomotor Policies
Policy search methods can allow robots to learn control policies for a wide range of tasks, but practical applications of policy search often require hand-engineered components for perception, state estimation, and low-level control. In this paper, we aim to answer the following question: does training the perception and control systems jointly end-to-end provide better performance than training each component separately? To this end, we develop a method that can be used to learn policies that map raw image observations directly to torques at the robot's motors. The policies are represented by deep convolutional neural networks (CNNs) with 92,000 parameters, and are trained using a partially observed guided policy search method, which transforms policy search into supervised learning, with supervision provided by a simple trajectory-centric reinforcement learning method. We evaluate our method on a range of real-world manipulation tasks that require close coordination between vision and control, such as screwing a cap onto a bottle, and present simulated comparisons to a range of prior policy search methods.
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