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Single-column CNN for crowd counting with pixel-wise attention mechanism

机译:用于人群计数的单柱CNN,与像素明智的注意机制计数

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摘要

This paper presents a novel method for accurate people counting in highly dense crowd images. The proposed method consists of three modules: extracting foreground regions (EF), pixel-wise attention mechanism (PAM) and single-column density map estimator (S-DME). EF can suppress the disturbance of complex background efficiently with a fully convolutional network, PAM performs pixel-wise classification of crowd images to generate high-quality local crowd density maps, and S-DME is a carefully designed single-column network that can learn more representative features with much fewer parameters. In addition, two new evaluation metrics are introduced to get a comprehensive understanding of the performance of different modules in our algorithm. Experiments demonstrate that our approach can get the state-of-the-art results on several challenging datasets including our dataset with highly cluttered environments and various camera perspectives.
机译:本文提出了一种新的方法,用于准确计算高度密集的人群图像。 该方法由三个模块组成:提取前景区域(EF),像素 - 明智的注意机制(PAM)和单列密度图估计(S-DME)。 EF可以用完全卷积的网络有效地抑制复杂背景的干扰,Pam执行人群图像的像素明智分类以产生高质量的本地人群密度映射,S-DME是一个精心设计的单列网络,可以了解更多 代表性的参数更少。 此外,还引入了两个新的评估指标,以全面了解我们在算法中对不同模块的性能。 实验表明,我们的方法可以获得最先进的结果,其中几个具有挑战性的数据集,包括我们的数据集,具有高度杂乱的环境和各种相机的视角。

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