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Learning to Look Around: Intelligently Exploring Unseen Environments for Unknown Tasks

机译:学习环顾四周:智能地探索未知任务未知的环境

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It is common to implicitly assume access to intelligently captured inputs (e.g., photos from a human photographer), yet autonomously capturing good observations is itself a major challenge. We address the problem of learning to look around: if an agent has the ability to voluntarily acquire new views to observe its environment, how can it learn efficient exploratory behaviors to acquire informative visual observations? We propose a reinforcement learning solution, where the agent is rewarded for actions that reduce its uncertainty about the unobserved portions of its environment. Based on this principle, we develop a recurrent neural network-based approach to perform active completion of panoramic natural scenes and 3D object shapes. Crucially, the learned policies are not tied to any recognition task nor to the particular semantic content seen during training. As a result, 1) the learned 'look around' behavior is relevant even for new tasks in unseen environments, and 2) training data acquisition involves no manual labeling. Through tests in diverse settings, we demonstrate that our approach learns useful generic policies that transfer to new unseen tasks and environments.
机译:隐式地假设访问智能捕获的输入(例如,来自人类摄影师的照片)是很常见的,但是自动捕获好的观察结果本身就是一个重大挑战。我们解决了学习环顾四周的问题:如果一个代理能够自愿获取新的观点来观察其环境,那么它如何学习有效的探索行为来获取信息丰富的视觉观察?我们提出了一种强化学习解决方案,在该解决方案中,可以通过减少行为者对环境中未观察到的部分的不确定性的行动来奖励行为人。基于此原理,我们开发了一种基于递归神经网络的方法来主动完成全景自然场景和3D对象形状。至关重要的是,学习的策略既不与任何识别任务绑定,也不与培训期间看到的特定语义内容绑定。结果,1)习得的“环顾四周”行为即使在看不见的环境中也与新任务有关,并且2)训练数据获取不涉及手动标记。通过在各种环境中进行测试,我们证明了我们的方法学到了有用的通用策略,这些策略可以转移到新的看不见的任务和环境中。

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