Multi-feature Counting of Dense Crowd Image Based on Multi-column Convolutional Neural Network

Songchenchen Gong, E. Bourennane, Junyu Gao
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引用次数: 2

Abstract

The crowd counting task is an important research problem. Now more and more people are concerned about safety issues. When the population density reaches a very high peak, the population density counts, the alarm is sent out, and the crowds are diverted. The trampling of the Shanghai New Year’s stampede will not happen again. The final density map is produced by two steps: at first, extract feature maps from multiple layers, and then adjust their output so that they are all the same size, all these resized layers are combined into the final density map. We also used texture features and target edge detection to reduce the loss of density map detail to better integrate with our convolutional neural network. We tested on several commonly used datasets. Our model achieved good results in crowd counting.
基于多列卷积神经网络的密集人群图像多特征计数
人群计数任务是一个重要的研究问题。现在越来越多的人关心安全问题。当人口密度达到一个非常高的峰值时,进行人口密度计数,发出警报,疏导人群。踩踏上海新年踩踏事件不会再发生。最终的密度图由两个步骤生成:首先,从多个图层中提取特征图,然后调整它们的输出,使它们的大小相同,所有这些调整大小的图层组合成最终的密度图。我们还使用纹理特征和目标边缘检测来减少密度图细节的损失,从而更好地与我们的卷积神经网络相结合。我们在几个常用数据集上进行了测试。我们的模型在人群计数方面取得了很好的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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