Crowd Counting in High Dense Images using Deep Convolutional Neural Network

S. Sharath, Vidyadevi G. Biradar, M.S. Prajwal, B. Ashwini
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引用次数: 1

Abstract

Crowd counting plays a significant role in analyzing the crowd behavior in high density areas. Deep learning techniques may be utilized to count the crowd from given high density images. This gives situation awareness and facilitates in imposing necessary actions to control the crowd in various scenarios when needed. In this paper a deep convolutional neural network model has been developed for crowd counting. The model has been developed using VGG16 pre-trained model and it is tuned up for crowd counting using transfer learning. The dataset used in this work is ShanghaiTech crowd dataset, that contains 482 high density crowd images. Image augmentation is applied to enlarge the dataset. The model gives a training accuracy of 83% and 79% of validation accuracy.
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基于深度卷积神经网络的高密度图像人群计数
人群计数对于分析高密度地区的人群行为具有重要意义。深度学习技术可以用来从给定的高密度图像中计算人群。这提供了情况意识,并有助于在需要时在各种情况下采取必要的行动来控制人群。本文建立了一种用于人群计数的深度卷积神经网络模型。该模型是使用VGG16预训练模型开发的,并使用迁移学习对人群计数进行了调整。本研究使用的数据集为ShanghaiTech人群数据集,包含482张高密度人群图像。采用图像增强技术扩大数据集。该模型的训练准确率为83%,验证准确率为79%。
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