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A High-Density Crowd Counting Method Based on Convolutional Feature Fusion

机译:基于卷积特征融合的高密度人群计数方法

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摘要

In recent years, the trampling events due to overcrowding have occurred frequently, which leads to the demand for crowd counting under a high-density environment. At present, there are few studies on monitoring crowds in a large-scale crowded environment, while there exists technology drawbacks and a lack of mature systems. Aiming to solve the crowd counting problem with high-density under complex environments, a feature fusion-based deep convolutional neural network method FF-CNN (Feature Fusion of Convolutional Neural Network) was proposed in this paper. The proposed FF-CNN mapped the crowd image to its crowd density map, and then obtained the head count by integration. The geometry adaptive kernels were adopted to generate high-quality density maps which were used as ground truths for network training. The deconvolution technique was used to achieve the fusion of high-level and low-level features to get richer features, and two loss functions, i.e., density map loss and absolute count loss, were used for joint optimization. In order to increase the sample diversity, the original images were cropped with a random cropping method for each iteration. The experimental results of FF-CNN on the ShanghaiTech public dataset showed that the fusion of low-level and high-level features can extract richer features to improve the precision of density map estimation, and further improve the accuracy of crowd counting.
机译:近年来,经常发生了过度拥挤引起的践踏事件,这导致了在高密度环境下对人群计数的需求。目前,很少有关于在大规模拥挤的环境中监测人群的研究,而存在技术缺点和缺乏成熟系统。旨在解决在复杂环境下具有高密度的人群计数问题,本文提出了一种特征融合的深卷积神经网络方法FF-CNN(卷积神经网络的特征融合)。所提出的FF-CNN将人群图像映射到其人群密度图,然后通过集成获得了头部计数。采用几何自适应核来产生高质量的密度图,这些映射被用作网络训练的地面真理。用于达到高级别和低电平特征的融合技术,以获得更富有的特征,以及两个损耗函数,即密度映射损失和绝对计数损失,用于联合优化。为了增加样本分集,将原始图像用随机裁剪方法进行裁剪,每次迭代。 Shanghaitech公共数据集上FF-CNN的实验结果表明,低级和高级功能的融合可以提取更丰富的功能,以提高密度图估计的精度,并进一步提高人群计数的准确性。

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