期刊文献+

基于改进的单高斯背景模型检测算法的研究 被引量:4

Target Detection Algorithm Based on Improved Single Gaussian Background Model
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摘要 针对传统单高斯背景模型(SGM)检测中背景模型不能很好地自适应背景变化等问题,提出了一种改进的单高斯背景模型检测的方法。该方法取前N帧做均值建立初始背景模型,然后利用三帧差法计算得出背景作为本文需要处理的背景区域。同时,对帧差法获得的背景区域分区,划分出大面积静止区域、历史变化区域及该变化区域的历史轨迹区域。赋予大面积静止区和历史变化区固定更新率,同时历史变化区域的历史轨迹区域按照时间分布,给予线性衰减的更新率,在此基础上进行背景模型参数的更新,最终通过背景差分法得出运动的目标。实验表明,改进的算法背景模型的自适应性有了很大地提高,基于单高斯背景模型运动目标的检测也变得更加准确。 In order to solve the problem that background model cannot be well adapt to background changes in traditional single-Gaussian background model(SGM) detection, an innovative single-Gaussian background model detection method is proposed. N frames are used to establish the initial model, and the background area is obtained by frame difference method. At the same time, the background is divided into a large area of the stationary area,historic changing area and historic area of the changing one. Then the large stationary area and historic changing area are taken with fixed update rate and the relevant track area of historic changing area is taken with linear attenuation in accordance with the time distribution. So background model parameters are updated. The moving target is obtained by using the background subtraction. According to the experiment, the self-adaptability of the proposed algorithm model is improved greatly, and the detection of moving target is more accurate based on single Gaussian background model.
出处 《激光与光电子学进展》 CSCD 北大核心 2016年第4期18-25,共8页 Laser & Optoelectronics Progress
基金 江苏省自然科学基金(BK20130769)
关键词 探测器 视频监控 单高斯背景模型 帧差法 历史运动图像 背景差法 运动目标 detectors video surveillance single-Gaussian background model frame difference method motion history picture background subtraction moving target
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参考文献9

  • 1高飞,蒋建国,安红新,齐美彬.一种快速运动目标检测算法[J].合肥工业大学学报(自然科学版),2012,35(2):180-183. 被引量:15
  • 2Denman S, Chandran V, Sridharan S. An adaptive optical flow technique for person tracking systems[J]. Pattern recognition letters, 2007, 28(10): 1232-1239.
  • 3Pal A, Schaefer G, Celebi M E. Robust codebook-based video background subtraction[C]. Acoustics Speech and Signal Processing (ICASSP), 2010 IEEE International Conference on IEEE, 2010: 1146-1149.
  • 4陈银,任侃,顾国华,钱惟贤,徐福元.基于改进的单高斯背景模型运动目标检测算法[J].中国激光,2014,41(11):239-247. 被引量:40
  • 5华媛蕾,刘万军.改进混合高斯模型的运动目标检测算法[J].计算机应用,2014,34(2):580-584. 被引量:40
  • 6Koller D, Weber J, Huang T, et al.. Towards robust automatic traffic scene analysis in real-time[C]. Pattern Recognition, Conference A: Computer Vision & Image Processing, Proceedings of the 12 th IAPR International Conference on IEEE, 1994, 1: 126-131.
  • 7Meng F, Qu Z, Zeng Q, et al.. Traffic object tracking based on increased-step motion history image[C]. Automation and Logistics, 2007 IEEE International Conference on IEEE, 2007: 345-349.
  • 8刘燕,高云.利用角点历史信息的异常行为识别算法[J].计算机工程与科学,2014,36(6):1127-1131. 被引量:5
  • 9Intachak T, Kaewapichai W. Real-time illumination feedback system for adaptive background subtraction working in traffic video monitoring[C]. Intelligent Signal Processing and Communications Systems (ISPACS), 2011 International Symposium on IEEE, 2011: 1-5.

二级参考文献38

  • 1董士崇,王天珍,许刚.视频图像中的运动检测[J].武汉理工大学学报(信息与管理工程版),2004,26(4):1-3. 被引量:22
  • 2杨国亮,王志良,牟世堂,解仑,刘冀伟.一种改进的光流算法[J].计算机工程,2006,32(15):187-188. 被引量:27
  • 3夏伟才,曾致远.一种基于卡尔曼滤波的背景更新算法[J].计算机技术与发展,2007,17(10):134-136. 被引量:13
  • 4XIONG C, FAN W, LI Z. Traffic flow detection algorithm based onintensity curve of high-resolution image[ C] // Proceedings of the 2ndInternational Conference on Computer Modeling and Simulation. Pis-cataway: IEEE, 2010:159 -162.
  • 5SHENG H, LI C,WEI Q,et al. An approach to motion vehicle de-tection in complex factors over highway surveillance video[ C] // Pro-ceedings of the 2009 International Joint Conference on ComputationalSciences and Optimization. Washington, DC: IEEE Computer Soci-ety, 2009:520-523.
  • 6LEI M, LEFLOCH D,GOUTION P, et al. A video-based real timevehicle counting system using adaptive background method [ C ]//Proceedings of the 2008 IEEE International Conference on Signal Im-age Technology and Internet Based Systems. Washington, DC:IEEE Computer Society, 2008:523 -528.
  • 7STAUFFER C, GRIMSON W. Adaptive background mixture mod-els for real-time tracking[ C]// Proceedings of the 1999 IEEE Con-ference on Computer Vision and Pattern Recognition. Piscataway:IEEE, 1999: 246-252.
  • 8DICKINSON P,HUNTER A, APPIAH K. A spatially distributedmodel for foreground segmentation [ J]. Image and Vision Compu-ting, 2009,27(9): 1326 -1335.
  • 9HUANG T, QIU J, SAKAYORI T. Motion detection based onbackground modeling and performance analysis for outdoor surveil-lance [C]// Proceedings of 2009 IEEE International Conferenceon Computer Modeling and Simulation. Piscataway: IEEE, 2009:42-48.
  • 10Datta A,Shah M,da Vitoria,et al.Person-on-person violence detection in video data[C]//Proc of the 16th International Conference on Pattern Recognition,2002:433-438.

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