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基于卷积神经网络的多尺度融合特征图在人群密度估计中的应用
引用本文:翁佳鑫,仝明磊.基于卷积神经网络的多尺度融合特征图在人群密度估计中的应用[J].上海电力学院学报,2021,37(1):94-98.
作者姓名:翁佳鑫  仝明磊
作者单位:上海电力大学 电子与信息工程学院
基金项目:上海市自然科学基金(16ZR1413300)。
摘    要:提出了一种以Unet++为基础的卷积神经网络,适用于人群密度估计。该网络的优点是用并行连接的方式进行多尺度融合结合浅层网络的细节信息和深层网络的高阶语义信息来消除两者之间过大的语义鸿沟。此外,还引入了膨胀卷积来提高网络性能。在Shanghai Tech和UCF_CC_50两个通用人群密度估计数据集上进行实验选取平均绝对误差(MAE)和均方误差(MSE)作为评价指标。实验结果表明在这两个数据集上该网络均有效降低了MAE和MSE,说明其在人群密度估计方面有较好的准确度和鲁棒性。

关 键 词:人群计数  卷积神经网络  多尺度融合  人群密度估计
收稿时间:2020/2/28 0:00:00

Application of Using Multiscale Fusion Feature Maps in Crowd Density Estimation Based on Convolutional Neural Network
WENG Jiaxin,TONG Minglei.Application of Using Multiscale Fusion Feature Maps in Crowd Density Estimation Based on Convolutional Neural Network[J].Journal of Shanghai University of Electric Power,2021,37(1):94-98.
Authors:WENG Jiaxin  TONG Minglei
Affiliation:School of Electronics&Information Engineering, Shanghai University of Electric Power, Shanghai 200090, China
Abstract:A convolutional neural network based on Unet++ is proposed for crowd density estimation.The advantage of this network is to perform multi-scale fusion in a parallel connection,combining the details of the low-level network and the higher-level semantic information of the high-level network to eliminate the excessive semantic gap between the two,and also introduce dilated convolution to improve network performance.The experiment was conducted on two general population density estimation datasets,ShanghaiTech and UCF_CC_50,and the mean absolute error (MAE) and mean square error (MSE) are selected as evaluation indicators.Experimental results show that MAE and MSE are effectively reduced on these two data sets,indicating that the network has good accuracy and robustness in population density estimation.
Keywords:crowd counting  convolutional neural network  multi-scale fusion  crowd density estimation
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