A Novel Spatiotemporal Attention Convolutional Neural Network for Video Crowd Counting

Shangjie Zhang, Yuelei Xiao
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Abstract

For most existing crowd counting methods, image-based methods are still used for crowd counting in the presence of video datasets, ignoring powerful time information. Thus, a novel spatiotemporal attention convolutional neural network is proposed to solve the video-based crowd counting problem. Firstly, the first ten layers of VGG-16 are used as the backbone network to extract features, and a single layer of ConvLSTM captures the time correlation of adjacent frames. Then, stacked dilated convolutional layers are used to enlarge the receptive field without increasing the computational load. Finally, a convolutional block attention module is introduced with the adaptive refinement of feature mapping. Its ability to emphasize or suppress information in the channel and spatial dimensions aids information dissemination. Experimental results on the two reference datasets (i.e., Mall and WorldExpo'10) show that the proposed method further improves the accuracy of crowd counting and is superior to the other existing crowd counting methods.
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一种用于视频人群统计的时空注意卷积神经网络
对于大多数现有的人群计数方法,仍然使用基于图像的方法在视频数据集存在的情况下进行人群计数,忽略了强大的时间信息。为此,提出了一种新的时空注意卷积神经网络来解决基于视频的人群计数问题。首先,利用VGG-16的前10层作为主干网提取特征,利用单层ConvLSTM捕获相邻帧的时间相关性;然后,在不增加计算负荷的情况下,使用堆叠的扩展卷积层来扩大接收场。最后,引入了一种基于特征映射自适应细化的卷积块注意力模块。它在渠道和空间维度上强调或抑制信息的能力有助于信息的传播。在Mall和WorldExpo’10两个参考数据集上的实验结果表明,本文方法进一步提高了人群计数的准确性,优于现有的其他人群计数方法。
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