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混合高斯模型的自适应前景提取
引用本文:李百惠,杨庚.混合高斯模型的自适应前景提取[J].中国图象图形学报,2013,18(12):1620-1627.
作者姓名:李百惠  杨庚
作者单位:南京邮电大学,南京邮电大学
基金项目:国家“九七三”重点基础研究发展规划项目(2011CB302903);国家自然科学基金项目(61272084,61202004);江苏省高校自然科学研究重大项目(11KJA520002) ;江苏省科技支撑计划(社会发展)项目(BE2011826);高等学校博士学科点专项科研基金资助课题(20113223110003,20093223120001)。
摘    要:复杂场景下的运动前景提取是计算机视觉研究领域的研究重点。为解决复杂场景中的前景目标提取问题,本文提出一种应用于复杂变化场景中的基于混合高斯模型的自适应前景提取方法。本方法可以对视频帧中每个像素的高斯分布数进行动态控制,并且通过在线EM算法对高斯分布的各参数进行学习,此外每个像素的权值更新速率可根据策略进行调整。实验结果表明本方法对复杂变化场景具有较好的适应性,可有效、快速地提取前景目标,提取结果具有较好的查准率和查全率。

关 键 词:混合高斯模型  前景提取  背景建模  动态控制
收稿时间:2013/3/11 0:00:00
修稿时间:2013/5/20 0:00:00

Adaptive foreground detection approach of Gaussian mixture model
Li Baihui and Yang Geng.Adaptive foreground detection approach of Gaussian mixture model[J].Journal of Image and Graphics,2013,18(12):1620-1627.
Authors:Li Baihui and Yang Geng
Affiliation:Nanjing University of Posts and Telecommunications
Abstract:Foreground detection is a significant step of information acquisition in intelligent surveillance, the role is to segment all the true moving objects from complex scenes without any false targets and noise interference. This step is a premise of following steps, such as object identification, object tracking and behavioral analysis. Due to non-stationary surveillance scenes, foreground extraction becomes a complex task with challenge. The performance of foreground detection mainly depends on background modeling algorithm. In order to solve this problem, an adaptive background modeling approach is proposed. This approach is based on Gaussian mixture model proposed by Stauffer and Grimson. In their approach, each pixel maintains a Gaussian mixture model constituted by K Gaussians. Then each Gaussian mixture model is updated by new observe pixel value. However the strategies of updating have some limits, such as fixed Gaussian number, fixed parameters, and fixed learning rate. The proposed approach optimizes updating strategies so as to break these limits. In this approach, each pixel maintains a dynamic Gaussian mixture model, the number of Gaussians can be controlled dynamically. And online EM algorithm is applied to the method for estimating the parameters in Gaussian mixture model. At last, several strategies are proposed to control the learning rate of weight. Experimental results show that the foreground object detection approach has good adaptability to complex environments, the foreground object can be detected effectively and rapidly, and the precision and recall ratio of results demonstrate superiority of the method to some related work.
Keywords:Gaussian mixture model  foreground detection  background modeling  dynamic control
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