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Moving target detection based on improved Gaussian mixture model considering camera motion

机译:考虑相机运动的改进高斯混合模型的移动目标检测

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摘要

This paper proposes a moving target detection scheme suitable for camera motion. Firstly, the background model is initialized by a Gaussian mixture model algorithm. Then Kanade-Lucas-Tomasi Feature Tracker (KLT) method is used to detect optical flow feature points of two adjacent frames, RANdom SAmple Consensus (RANSAC) algorithm is used to filter out the correct matching points and obtain a homography matrix, which can recover the background model matching the cunent frame, the new background model is used to detect moving target of the current frame. In the foreground detection stage, the current pixel is first compared with its own background model, and then compared with the background model of its 8 neighborhood pixels, the algorithm is speeded up without reducing the detection accuracy in this way; In the update stage of the background model, in order to adapt to the background changes caused by camera motion, an age value variable is set for each pixel. The experimental results show that the improved algorithm has a significant improvement in detection accuracy and mnning time compared to Gaussian mixture background modeling.
机译:本文提出了一种适用于相机运动的移动目标检测方案。首先,通过高斯混合模型算法初始化背景模型。然后,Kanade-Lucas-Tomasi功能跟踪器(KLT)方法用于检测两个相邻帧的光流特征点,随机采样共识(RANSAC)算法用于过滤滤除正确的匹配点并获得可以恢复的同字矩阵匹配CUNENT帧的背景模型,新的背景模型用于检测当前帧的移动目标。在前台检测阶段,首先与其自己的背景模型进行电流像素,然后与其8个邻域像素的后台模型进行比较,算法在这种方式上加速而不降低检测精度;在背景模型的更新阶段,为了适应由相机运动引起的背景变化,为每个像素设置年龄值变量。实验结果表明,与高斯混合背景建模相比,改进的算法对检测精度和Mnning时间的显着提高。

著录项

  • 来源
    《Multimedia Tools and Applications》 |2020年第12期|7005-7020|共16页
  • 作者单位

    Complex System Control Theory and Application Key Laboratory. Tianjin University of Technology. 391 Binshui Xidao Xiqing District Tianjin 300384 China;

    Complex System Control Theory and Application Key Laboratory. Tianjin University of Technology. 391 Binshui Xidao Xiqing District Tianjin 300384 China;

    Complex System Control Theory and Application Key Laboratory. Tianjin University of Technology. 391 Binshui Xidao Xiqing District Tianjin 300384 China;

    Complex System Control Theory and Application Key Laboratory. Tianjin University of Technology. 391 Binshui Xidao Xiqing District Tianjin 300384 China;

    Department of Electrical and Mining Engineering University of South Africa Florida 1710 South Africa;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Moving target detection; Gaussian mixture model; Motion compensation;

    机译:移动目标检测;高斯混合模型;运动补偿;

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