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多种人群密度场景下的人群计数 被引量:31

Counting people in various crowed density scenes using support vector regression
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摘要 公共场合中采用摄像机实现人群计数在智能安防领域具有重要价值,但摄像机透视效果、图像背景、行人相互遮挡等因素制约着人群计数研究的发展和应用。提出一种采用回归模型估计人数的算法。首先,为了消去摄像机透视对图像特征的影响,用图像中行人身高作为尺度基准将图像分成多个子图像块。其次,采用simile分类器优化子图像块的先进局部二值模式(ALBP)纹理特征,并根据子图像块的人群密度,采用两种核函数的支持向量回归机(SVR)建立输入特征和子图像块人数的关系。最后,相加所有子图像块人数得出图像人数。实验结果表明,本文算法测试稀疏人群的绝对误差约为1人,测试拥挤人群的相对误差小于10%,是一种准确率高适用性强的人群计数算法。 The use of video surveillance in for people counting public places has an important value in the field of intelli- gent security. However, there are several factors such as camera perspective, background clutter, and occlusions, which restrict its development and application of the study. An algorithm based on the regression model is proposed for estimating the number of people. First, in order to eliminate the effect of the camera perspective on the image features, the input image is divided into several sub-image blocks according to the change of pedestrian height in the image. Second, the simi- le classifier is used to improve the advanced local binary patterns (ALBP) texture feature of the blocks. Then, according to the crowd density, we use the support vector regression (SVR) , which has two kernel functions to establish the relationship between input features and the number of people. Finally, adding the number of persons of all sub-image blocks gives us the total number of people on the image. Experimental results show that the absolute error of the sparse population is approximately one person using the presented algorithm and the relative error of the testing crowded population is less than 10%. This therefore demonstrates the high accuracy of this algorithm, which can be applied for people counting in video surveillance.
出处 《中国图象图形学报》 CSCD 北大核心 2013年第4期392-398,共7页 Journal of Image and Graphics
基金 重庆市重大科技攻关项目(cstc2011ggC40009)
关键词 人群计数 simile分类器 支持向量回归机 人群密度估计 counting people simile classifier support vector regression crowd density estimation.
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  • 1Li M, Zhang Z X, Huang K Q. Estimating the number of people in crowded scenes by MID based foreground segmentation and head-shoulder detection[ C ]// Proceedings of the 19th Interna- tional Conference on Pattern Recognition. Florida ,USA: IEEE, 2008 1-4.
  • 2Wu B, Nevatia R. Detection of multiple, partially occluded hu- mans in a single image by bayesian combination of edgelet part detectors[ C ]// Proceedings of the 10th IEEE International Con- ference on Computer Vision. Beijing, China: IEEE, 2005:90- 97.
  • 3Zhao T, Nevatia R, Wu B. Segmentation and tracking of multi- ple humans in crowded environments [ J ]. IEEE Transactions on Pattern Analysis and Machine Intelligence, 2008, 30(7) :1198- 1211.
  • 4Choudri S, Ferryman J M, Badii A. Robust background model for pixel based people counting using a single unealibrated camera [ CI//Proceedings of the 12th IEEE International Workshop on Performance Evaluation of Tracking and Surveillance. Snowbird, Utah : IEEE, 2009 : 1-8.
  • 5Hou Y L, Pang G K. PeopLe counting and human detection in a challenging situation[J]. IEEE Transactions on Systems Man and Cybernetics, 2011, 41 ( 1 ) :24-33.
  • 6Celik I-I, Hanjalic A, Flendriks E A. Towards a robust solution to people counting[ C] // Proceedings of IEEE International Con- ference on hnage Processing. Atlanta, USA : IEEE, 2006 : 2401- 2404.
  • 7Conte D, Foggia P, Percannella G. A method for counting people in crowded scenes[ C]//Proceedings of the Seventh IEEE Inter- national Conference on Advanced Video and Signal based Surveil- lance. Klagenfurt, Austria :IEEE, 2011:111-118.
  • 8Conte D, Foggia P, Percannella G. Counting moving people in videos by salient points detection [ C]// Proceedings of the 20th International Conference on Pattern Recognition. Istanbu, Turkey : IEEE, 2010 : 1743-1746.
  • 9Wu X Y, Liang G Y, Lee K K. Crowd density estimation using texture analysis and learning [ C]// Proceedings of the IEEE International Contrence on Robotics and Biomimetics. Kunming, China : 1EEE,2006:214-219.
  • 10Chan A B, Liang Z S, Vasconcelos N. Privacy preserving crowd monitoring counting people without people models or tracking[ C]//Proceedings of IEEE Conference on Computer Vision and Pattern Recognition. Florida, USA : IEEE, 2008 : 1-7.

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