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基于运动目标自适应检测的改进ViBe算法 被引量:7

An improved ViBe algorithm based on adaptive detection of moving targets
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摘要 传统视觉背景提取(ViBe)算法检测结果存在Ghost区域,且受环境变化影响,在提取前景时容易产生误检或漏检。针对这些问题,提出了一种基于运动目标自适应检测的改进ViBe算法。首先在背景模型初始化过程中,通过对均值背景建模设置调节参数方式获取真实背景,利用该背景初始化ViBe背景模型;其次在前景检测过程中,根据场景变化引入自适应半径阈值对前景进行自适应检测;最后对检测结果中存在的空洞进行数学形态学闭运算填充。实验结果表明,改进算法能够有效抑制Ghost区域,并在环境变化的情况下较完整地检测前景目标,与传统ViBe算法相比,检测的精确率提高了10%以上,误检率和漏检率分别降低了20%和7%,且改进算法满足实时性要求。 There exists a Ghost region in the detection result of the traditional visual background extraction(ViBe)algorithm,and the foreground extraction is prone to false detection or missed detection due to environmental changes.Therefore,an improved ViBe algorithm based on adaptive detection of moving targets was proposed.Firstly,in the background model initialization process,the real background could be obtained by setting adjusting parameters in mean background modeling,and the ViBe background model was initialized by using the background.Secondly,in the foreground detection process,an adaptive radius threshold was introduced according to the scene change to adaptively detect the foreground.Finally,mathematical morphological close operation was used to fill the holes in the detection results.The experimental results show that the improved method can effectively suppress the Ghost region and detect the foreground target more completely under the condition of environmental changes.Compared with the traditional ViBe algorithm,the detection accuracy is improved by more than 10%,the false detection rate and the missed detection rate are reduced by 20% and 7% respectively.In addition,the improved method satisfies the real-time requirements.
作者 王伟 王小鹏 梁金诚 WANG Wei;WANG Xiao-peng;LIANG Jin-cheng(School of Electronic and Information Engineering,Lanzhou Jiaotong University,Lanzhou 730070,China)
出处 《Journal of Measurement Science and Instrumentation》 CAS CSCD 2020年第2期126-134,共9页 测试科学与仪器(英文版)
基金 National Natural Science Foundation of China(No.61761027) Postgraduate Education Reform Project of Lanzhou Jiaotong University(No.1600120101)。
关键词 视觉背景提取(ViBe) Ghost区域 背景模型 自适应半径阈值 visual background extraction(ViBe) Ghost region background model adaptive radius threshold
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  • 1Md Mosharrof Hossain Sarker and Andy Sloane. I TGSF /TLoG filter with optical flow technique for large I motion detection[J]. Machine Graphics & Vision InternationalJournal, 2007, 16(3): 207-219.
  • 2Piccardi M. Background subtraction techniques: a review[C]. IEEE International Conference on Systems, Man and Cybernetics, The Hague, Netherlands, 2004: 3099-3104.
  • 3Xiong Wei-hua, Xiang Lei, LiJun-feng, et aL. Moving object detection algorithm based on background subtraction and frame differencing[C]. Chinese Control Conference, Yantai, China, 2011: 3273-3276.
  • 4Stauffer C and Grimson W E L. Adaptive background mixture models for real-time tracking[C]. IEEE Computer Society Conference on Computer Vision and Pattern Recognition, Fort Collins, CO, 1999: 246-252.
  • 5Greggio N, Bernardino A, Laschi C, et al .. Self-adaptive Gaussian mixture models for real-time video segmentation and background subtraction[C]. 10th International Conference on Intelligent Systems Design and Applications, Cairo, 2010: 983-989.
  • 6Chen Ze-zhi and Ellis T. Self-adaptive Gaussian Mixture Model for urban traffic monitoring system[C]. IEEE International Conference on Computer Vision Workshops, I Barcelona, 2011: 1769-1776. I.
  • 7Myoungkeun Choi and Bert Sweetman. Efficient calculation I I of statistical moments for structural health monitoring[J]. I I Structural Health Monitoring, 2010, 9(1): 13-24. I.
  • 8Bailo G, Bariani M, Ijas P, et al.. Background estimation with Gaussian distribution for image segmentation, a fast I approach[C]. IEEE International Workshop on Measurement I I Systems for Homeland Security, Contraband Detection and I Personal Safety Workshop, USA, 2005: 2-5.
  • 9Same A, Ambroise C, and Govaert G. An online classification EM algorithm based on the mixture model].I]. Statistics and I Computing, 2007, 17(3): 209-218. I.
  • 10Fakharian A, Hosseini S, and Gustafsson T. Hybrid object i detection using improved gaussian mixture model[C]. I International Conference on Control, Automation and I Systems, Gyeonggi-do, 2011: 1475-1479. I.

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