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CROWD COUNTING AND DENSITY ESTIMATION VIA TWO-COLUMN CONVOLUTIONAL NEURAL NETWORK

机译:通过两列卷积神经网络的人群计数和密度估计

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This paper proposes a Two-Column Convolutional Neural Network (TCCNN) to estimate the density and count of both sparse and highly dense crowd. The architecture of TCCNN derives from VGG-16 and Alexnet. We concatenate parts of these two networks to output the estimated density map and Gaussian Kernel is employed to generate the true density map as ground truth for training. Through integral on the entire density map, the number of people within the image can be obtained. We test the proposed method on such challenging datasets as UCF_CC_50, Shanghaitech and UCSD, to which different data augmenting methods are applied. The results show that our method is of competitive performance in comparison with other state of the art approaches.
机译:本文提出了双列卷积神经网络(TCCNN)来估计稀疏和高密度的人群的密度和计数。 TCCNN的体系结构来自VGG-16和AlexNet。我们连接了这两个网络的部分以输出估计的密度图,而是使用高斯内核以产生真正的密度图作为训练的原始实际。通过整个密度图上的积分,可以获得图像内的人数的数量。我们在将不同数据增强方法应用于UCF_CC_50,Shanghaitech和UCSD等挑战性数据集中测试所提出的方法。结果表明,与其他现有技术相比,我们的方法具有竞争性能。

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