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Weighing Counts: Sequential Crowd Counting by Reinforcement Learning

机译:称重计数:通过加固学习计数顺序人群

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We formulate counting as a sequential decision problem and present a novel crowd counting model solvable by deep reinforcement learning. In contrast to existing counting models that directly output count values, we divide one-step estimation into a sequence of much easier and more tractable sub-decision problems. Such sequential decision nature corresponds exactly to a physical process in reality - scale weighing. Inspired by scale weighing, we propose a novel 'counting scale' termed LibraNet where the count value is analogized by weight. By virtually placing a crowd image on one side of a scale, LibraNet (agent) sequentially learns to place appropriate weights on the other side to match the crowd count. At each step, LibraNet chooses one weight (action) from the weight box (the pre-defined action pool) according to the current crowd image features and weights placed on the scale pan (state). LibraNet is required to learn to balance the scale according to the feedback of the needle (Q values). We show that LibraNet exactly implements scale weighing by visualizing the decision process how LibraNet chooses actions. Extensive experiments demonstrate the effectiveness of our design choices and report state-of-the-art results on a few crowd counting benchmarks, including Shang-haiTech, UCF_CC_50 and UCF-QNRF. We also demonstrate good cross-dataset generalization of LibraNet.
机译:我们标志着算作作为连续决策问题,并提出了一种通过深度加强学习可解决的新型人群计数模型。与直接输出计数值的现有计数模型相比,我们将一步估计分为更容易更具易行的子决策问题的序列。这种顺序决策性质对应于现实级称量的物理过程。灵感来自秤称重,我们提出了一种新颖的“计数标尺”的Libranet,其中计数值由重量相等。通过实际上将人群图像放在一侧的一侧,Libranet(代理)顺序地学会在另一方上放置适当的权重以匹配人群计数。在每个步骤中,Libranet根据当前人群图像特征和放置在比例平底锅(状态)上的权重选择一个权重(动作)。要求Libranet根据针(Q值)的反馈学会平衡比例。我们显示Libranet通过可视化Libranet如何选择动作的决策过程来完全实现缩放称量。广泛的实验证明了我们的设计选择和报告最先进结果的有效性,在包括Shang-Haitech,UCF_CC_50和UCF-QNRF中的几个人群计数基准。我们还展示了Libranet的良好交叉数据集泛化。

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