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Vacant Parking Space Detection based on Task Consistency and Reinforcement Learning

机译:基于任务一致性和强化学习的空置停车空间检测

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In this paper, we proposed a novel task-consistency learning method that allows training a vacant space detection network (target task) based on the logic consistency with the semantic outcomes from a flow-based motion behavior classifier (source task) in a parking lot. By well designing the reward mechanism upon semantic consistency, we show the possibility to train the target network in a reinforcement learning setting. Compared with conventional supervised detection methods, this work's main contribution is to learn a vacant space detector via semantic consistency rather than supervised labels. The dynamic learning property may make the proposed detector been deployed and updated in different lots easily without heavy human loads. The experiments show that based on the task consistency rewards from the motion behavior classifier, the vacant space detector can be trained successfully.
机译:在本文中,我们提出了一种新颖的任务 - 一致性学习方法,允许基于与停车场中基于流动的运动行为分类器(源任务)的语义结果的逻辑一致性训练空置空间检测网络(目标任务) 。 通过良好设计语义一致性的奖励机制,我们展示了在加强学习环境中培训目标网络的可能性。 与传统的监督检测方法相比,这项工作的主要贡献是通过语义一致性而不是监督标签来学习空置空间探测器。 动态学习属性可以使所提出的探测器在不同的批量中部署和更新,没有沉重的人类负荷。 实验表明,基于任务一致性从运动行为分类器的奖励,空置空间检测器可以成功培训。

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