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Smart Camera Aware Crowd Counting via Multiple Task Fractional Stride Deep Learning

机译:通过多任务分数跨步深度学习实现智能相机感知人群计数

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摘要

Estimating the number of people in highly clustered crowd scenes is an extremely challenging task on account of serious occlusion and non-uniformity distribution in one crowd image. Traditional works on crowd counting take advantage of different CNN like networks to regress crowd density map, and further predict the count. In contrast, we investigate a simple but valid deep learning model that concentrates on accurately predicting the density map and simultaneously training a density level classifier to relax parameters of the network to prevent dangerous stampede with a smart camera. First, a combination of atrous and fractional stride convolutional neural network (CAFN) is proposed to deliver larger receptive fields and reduce the loss of details during down-sampling by using dilated kernels. Second, the expanded architecture is offered to not only precisely regress the density map, but also classify the density level of the crowd in the meantime (MTCAFN, multiple tasks CAFN for both regression and classification). Third, experimental results demonstrated on four datasets (Shanghai Tech A (MAE = 88.1) and B (MAE = 18.8), WorldExpo’10(average MAE = 8.2), NS UCF_CC_50(MAE = 303.2) prove our proposed method can deliver effective performance.
机译:由于一个人群图像中的严重遮挡和不均匀分布,估计高度聚集的人群场景中的人数是一项极富挑战性的任务。关于人群计数的传统作品利用诸如CNN之类的不同网络来回归人群密度图,并进一步预测计数。相比之下,我们研究了一个简单但有效的深度学习模型,该模型专注于准确预测密度图并同时训练密度级别分类器以放宽网络参数,以防止使用智能相机踩踏危险。首先,提出了环面和小步幅卷积神经网络(CAFN)的组合,以通过使用膨胀核提供更大的接收场并减少下采样期间细节的损失。其次,提供了扩展的体系结构,不仅可以精确地回归密度图,还可以同时对人群的密度水平进行分类(MTCAFN,用于回归和分类的多个任务CAFN)。第三,在四个数据集(上海理工大学A(MAE = 88.1)和B(MAE = 18.8),WorldExpo'10(平均MAE = 8.2),NS UCF_CC_50(MAE = 303.2)上证明的实验结果证明了我们提出的方法可以提供有效的性能。

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