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A Crowd Counting Framework Combining with Crowd Location

机译:与人群地点相结合的人群计数框架

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In the past ten years, crowd detection and counting have been applied in many fields such as station crowd statistics, urban safety prevention, and people flow statistics. However, obtaining accurate positions and improving the performance of crowd counting in dense scenes still face challenges, and it is worthwhile devoting much effort to this. In this paper, a new framework is proposed to resolve the problem. The proposed framework includes two parts. The first part is a fully convolutional neural network (CNN) consisting of backend and upsampling. In the first part, backend uses the residual network (ResNet) to encode the features of the input picture, and upsampling uses the deconvolution layer to decode the feature information. The first part processes the input image, and the processed image is input to the second part. The second part is a peak confidence map (PCM), which is proposed based on an improvement over the density map (DM). Compared with DM, PCM can not only solve the problem of crowd counting but also accurately predict the location of the person. The experimental results on several datasets (Beijing-BRT, Mall, Shanghai Tech, and UCF_CC_50 datasets) show that the proposed framework can achieve higher crowd counting performance in dense scenarios and can accurately predict the location of crowds.
机译:在过去十年中,人群检测和计数已应用于车站人群统计,城市安全预防和人流统计等许多领域。然而,获得准确的职位和提高人群计数在密集的场景中的表现仍然面临挑战,这是值得注意的很多努力。在本文中,提出了一种解决问题的新框架。该框架包括两部分。第一部分是由后端和上采样组成的完全卷积神经网络(CNN)。在第一部分中,后端使用剩余网络(Reset)来对输入图片的特征进行编码,并且UpSampling使用解码层解码特征信息。第一部分处理输入图像,并将处理的图像输入到第二部分。第二部分是峰值置信图(PCM),其基于对密度图(DM)的改进来提出。与DM相比,PCM不仅可以解决人群计数的问题,还可以准确地预测人的位置。若干数据集的实验结果(北京 - BRT,商场,上海科技和UCF_CC_50数据集)表明,拟议的框架可以实现更高的人群计数性能,以密集的情景,可以准确地预测人群的位置。

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