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Crowd counting via Multi-Scale Adversarial Convolutional Neural Networks

机译:通过多尺寸对抗卷积神经网络计数人群

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摘要

The purpose of crowd counting is to estimate the number of pedestrians in crowd images. Crowd counting or density estimation is an extremely challenging task in computer vision, due to large scale variations and dense scene. Current methods solve these issues by compounding multi-scale Convolutional Neural Network with different receptive fields. In this paper, a novel end-to-end architecture based on Multi-Scale Adversarial Convolutional Neural Network (MSA-CNN) is proposed to generate crowd density and estimate the amount of crowd. Firstly, a multi-scale network is used to extract the globally relevant features in the crowd image, and then fractionally-strided convolutional layers are designed for up-sampling the output to recover the loss of crucial details caused by the earlier max pooling layers. An adversarial loss is directly employed to shrink the estimated value into the realistic subspace to reduce the blurring effect of density estimation. Joint training is performed in an end-to-end fashion using a combination of Adversarial loss and Euclidean loss. The two losses are integrated via a joint training scheme to improve density estimation performance.We conduct some extensive experiments on available datasets to show the significant improvements and supremacy of the proposed approach over the available state-of-the-art approaches.
机译:人群计数的目的是估计人群图像中的行人数量。由于大规模变化和密集的场景,人群计数或密度估计是计算机视觉中的一个极其具有挑战性的任务。目前的方法通过用不同的接收领域复制多尺度卷积神经网络来解决这些问题。本文提出了一种基于多尺度对抗卷积神经网络(MSA-CNN)的新型端到端架构,以产生人群密度并估计人群量。首先,多尺度网络被用于提取的人群图像中的全球相关的功能,然后分馏-跨距卷积层被设计用于上采样的输出,以恢复所造成的早期最大池层关键的细节的损失。直接采用对抗性损失以将估计值缩小到现实子空间中,以降低密度估计的模糊效果。使用对抗性丧失和欧几里德损失的组合以端到端时尚以结尾的方式进行联合训练。这两项损失通过联合培训方案整合,以提高密度估算性能。我们对可用数据集进行了一些广泛的实验,以表明所提出的方法对可用最先进的方法的显着改善和至上。

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