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Crowd Counting via Adversarial Cross-Scale Consistency Pursuit

机译:人群通过对抗串级一致性追求计数

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Crowd counting or density estimation is a challenging task in computer vision due to large scale variations, perspective distortions and serious occlusions, etc. Existing methods generally suffer from two issues: 1) the model averaging effects in multi-scale CNNs induced by the widely adopted ?2 regression loss; and 2) inconsistent estimation across different scaled inputs. To explicitly address these issues, we propose a novel crowd counting (density estimation) framework called Adversarial Cross-Scale Consistency Pursuit (ACSCP). On one hand, a U-net structured generation network is designed to generate density map from input patch, and an adversarial loss is directly employed to shrink the solution onto a realistic subspace, thus attenuating the blurry effects of density map estimation. On the other hand, we design a novel scale-consistency regularizer which enforces that the sum up of the crowd counts from local patches (i.e., small scale) is coherent with the overall count of their region union (i.e., large scale). The above losses are integrated via a joint training scheme, so as to help boost density estimation performance by further exploring the collaboration between both objectives. Extensive experiments on four benchmarks have well demonstrated the effectiveness of the proposed innovations as well as the superior performance over prior art.
机译:由于大规模变化,透视扭曲和严重闭塞等计算机视觉中的计算机视觉中的有挑战性的任务。现有方法通常存在两个问题:1)广泛采用的多尺度CNN中的模型平均效应还是 2 回归损失; 2)跨不同缩放输入的估计不一致。要明确解决这些问题,我们提出了一种名为普通串级一致性追求(ACSCP)的新型人群计数(密度估计)框架。一方面,U-Net结构生成网络被设计为从输入贴片产生密度图,并且直接采用对抗损失以将溶液缩小到现实子空间上,从而减轻密度图估计的模糊效应。另一方面,我们设计了一种新颖的规模一致性规范器,该规范器强制执行来自本地补丁(即,小规模)的人群计数的总和与其地区联盟的总体数量相干(即,大规模)。上述损失通过联合培训方案整合,以帮助通过进一步探索两个目标之间的合作来帮助提高密度估算性能。在四个基准测试中的广泛实验良好地证明了拟议的创新的有效性以及对现有技术的卓越性能。

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