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An end-to-end generative adversarial network for crowd counting under complicated scenes

机译:端到端生成对抗网络,用于复杂场景下的人群计数

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Crowd counting and analyzing its distribution is a challenging video surveillance application. In this paper, a totally novel, end-to-end way to estimate the crowd number under complicated scenes is proposed. For the purpose, we apply the conditional adversarial networks to translate the input image to its density map. The conditional generative adversarial model is trained with input image and its corresponding density image. The proposed method avoid the design of complex CNN architecture to extract specific property features. Besides, no more data augmentation is needed in our method. Evaluated on the dataset of Shanghaitech which consists of two challenge parts, our methods shows convincing counting results with high quality estimated density images. Moreover, our experiments can been done in an efficient and labor saving way.
机译:人群计数和分析其分布是具有挑战性的视频监视应用程序。本文提出了一种新颖的,端到端的估计复杂场景下人群数量的方法。为此,我们应用条件对抗网络将输入图像转换为其密度图。用输入图像及其相应的密度图像训练条件生成对抗模型。所提出的方法避免了为提取特定属性特征而设计的复杂CNN体系结构。此外,在我们的方法中不需要更多的数据扩充。在由两个挑战部分组成的Shanghaitech数据集上进行评估,我们的方法以高质量的估计密度图像显示了令人信服的计数结果。此外,我们的实验可以高效而省力的方式完成。

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