光电技术应用, 2019, 34 (6): 40, 网络出版: 2019-12-08  

基于多信息卷积神经网络的人群密度估计

Crowd Density Estimation Based on Multi-information via Convolutional Neural Network
作者单位
四川大学 电子信息学院, 成都 610065
引用该论文

赵威, 吴晓红, 刘文璨, 何小海, 卿粼波. 基于多信息卷积神经网络的人群密度估计[J]. 光电技术应用, 2019, 34(6): 40.

ZHAO Wei, WU Xiao-hong, LIU Wen-can, HE Xiao-hai, QING Lin-bo. Crowd Density Estimation Based on Multi-information via Convolutional Neural Network[J]. Electro-Optic Technology Application, 2019, 34(6): 40.

参考文献

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赵威, 吴晓红, 刘文璨, 何小海, 卿粼波. 基于多信息卷积神经网络的人群密度估计[J]. 光电技术应用, 2019, 34(6): 40. ZHAO Wei, WU Xiao-hong, LIU Wen-can, HE Xiao-hai, QING Lin-bo. Crowd Density Estimation Based on Multi-information via Convolutional Neural Network[J]. Electro-Optic Technology Application, 2019, 34(6): 40.

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