Crowd Scene Analysis Using Deep Learning Network

C. Santhini, V. Gomathi
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引用次数: 4

Abstract

Crowd scene analysis is the certification tasks in crowded scene understanding. Crowd is a same or different set of people arranged in one group. Generally crowd form in the way of pedestrians, supermarket, and marathons. In this paper introduce Convolution Neural Networks and deep learning model is used for the analysis of crowd scene. In these paper propose, findings the number of people arrived in one group and also finds the crowd density map. People counting in extremely dense crowds are an important step for video surveillance and anomaly warning. The above mentioned works, Several problems becomes especially more challenging due to the lack of training samples, severe blockages, disorder scenes, and modification of perspective. In existing methods estimating crowd count using handcrafted features such as SIFTS and HOG. In current vision most suited method is to predict the better performance of estimating crowd density and crowd count based on deep learning network. Lucas kanade optical flow can finds the displacement vector between two consecutive frames. 3D volumes video slices can be arranged in sequential manner. In this crowd scene analysis represents convolutional crowd dataset as 100 videos from 800 crowd scenes and build an attribute set with 94 attributes.
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基于深度学习网络的人群场景分析
人群场景分析是人群场景理解中的认证任务。Crowd是指一组相同或不同的人。人群通常以行人、超市和马拉松的方式形成。本文介绍了卷积神经网络和深度学习模型在人群场景分析中的应用。在这篇论文中,我们找到了到达一个群体的人数,也找到了人群密度图。在极其密集的人群中进行人员统计是视频监控和异常预警的重要步骤。由于缺乏训练样本,严重的阻塞,混乱的场景,以及视角的修改,几个问题变得尤其具有挑战性。在现有的估计人群数量的方法中,使用手工制作的特征,如sift和HOG。目前最适合的方法是基于深度学习网络预测更好的人群密度和人群数量。Lucas kanade光流可以找到两个连续帧之间的位移向量。三维卷视频切片可以按顺序排列。在此人群场景分析中,将卷积人群数据集表示为来自800个人群场景的100个视频,并构建具有94个属性的属性集。
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