Concise Convolutional Neural Network for Crowd Counting

Feifei Tong, Zhaoyang Zhang, Huan Wang, Yuehai Wang
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引用次数: 2

Abstract

Utilizingconvolutional neural network (CNN) for estimating the crowd count in a still image has taken some progress. But the existing models or algorithms are too complex for actual applications and their real-time performance have not been effectively verified. In this paper, we propose a concise and effective CNN model with only five convolutional layers. Our proposed model allows the input image to be of any size or resolution. The model maps the input image to its crowd density map. By integrating the density map we can get the crowd count. The true density map is computed based on geometry-adaptive kernels which can alleviate the perspective problems. We report the performance in terms of mean absolute error, which is a measure of accuracy of the method. We conduct extensive experiments on major crowd counting datasets to verify the effectiveness of the proposed model and apply it to the actual situation successfully. In addition, we created a new dataset to verify the transfer learning performance and real-time performance of our model. Experiments show that it has great transfer learning performance and real-time performance.
用于人群计数的简明卷积神经网络
利用卷积神经网络(CNN)估计静止图像中的人群数量已经取得了一些进展。但现有的模型或算法对于实际应用来说过于复杂,其实时性也没有得到有效的验证。在本文中,我们提出了一个简洁有效的CNN模型,只有五个卷积层。我们提出的模型允许输入图像为任何大小或分辨率。模型将输入图像映射到它的人群密度图。通过积分密度图,我们可以得到人群数量。真正的密度图是基于几何自适应核计算的,可以缓解透视问题。我们根据平均绝对误差报告性能,这是对方法准确性的度量。我们在主要的人群计数数据集上进行了大量的实验,验证了所提出模型的有效性,并成功地将其应用于实际情况。此外,我们创建了一个新的数据集来验证我们的模型的迁移学习性能和实时性能。实验表明,该方法具有良好的迁移学习性能和实时性。
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