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Generating high quality crowd density map based on perceptual loss

机译:基于感知损失产生高质量人群密度图

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摘要

High quality crowd density maps preserve a large amount of spatial information of crowd distribution, which provides significant priori information for the field of crowd behavior analysis and anomaly detection. Recent work on crowd density estimation pays more attention to the accuracy of crowd counting, ignoring the quality of crowd density map estimation. Hence, in this paper, we propose an end-to-end crowd density estimation network to generate high quality crowd density map. The original pixel-level Euclidean distance loss function in the Multi-column Convolutional Neural Network (MCNN) is replaced by the perceptual loss network. By optimizing the perceptual loss function that is defined as the differences between high-level semantic features generated by a pre-trained network, high-quality map estimation can be obtained. At the same time the accuracy of crowd counting and the sensitivity to the external environment can be improved. Extensive experiments conducted on challenging datasets validate the proposed method outperforms the state-of-the-art methods in both the crowd counting accuracy and the density estimation quality.
机译:高质量人群密度图保留了人群分布的大量空间信息,为人群行为分析和异常检测提供了重要的优先信息。最近关于人群密度估计的工作更加关注人群计数的准确性,忽略了人群密度图估计的质量。因此,在本文中,我们提出了端到端的人群密度估计网络来产生高质量的人群密度图。多列卷积神经网络(MCNN)中的原始像素级欧几里德距离损失功能由感知损耗网络代替。通过优化定义为预先训练的网络产生的高电平语义特征之间的差异的感知损失函数,可以获得高质量地图估计。同时可以提高人群计数的准确性和对外部环境的敏感性。在具有挑战性的数据集上进行的广泛实验验证了所提出的方法优于人群计数准确性和密度估计质量的最先进的方法。

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