Self-adaptive background modeling research based on change detection and area training

Guiying Deng, Kai Guo
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引用次数: 8

Abstract

The detection result of traditional Gaussian mixture model algorithm easily becomes fragmentary and exists shadow, the fixed number of Gaussian component leads to bad performance. Aiming at building a robust background, using background difference method, self-adaptive threshold segmentation and Gaussian mixture background modeling algorithm, a self-adaptive background modeling method is proposed. The background difference method and self-adaptive threshold segmentation classify the pixels in each frame into moving targets and background area. When training the background model, this new algorithm keeps the Gaussian mixture background model of the pixels in moving target area unchanged and never build new Gaussian component for this area. Background area is updated in regular way, make the number of Gaussian component for each pixel in this area to be self-adaptive, keep the Gaussian component of background model only updated by the real background pixels, improve the performance of the algorithm and validity for background constructing. Experiments show that the background model built based on the proposed algorithm has good adaptability for video sequences with uncertainties, it can eliminate the shadows and quickly response to the change of actual scene, the computing speed of this model improves a lot as well.
基于变化检测和区域训练的自适应背景建模研究
传统的高斯混合模型算法检测结果容易出现碎片化,存在阴影,高斯分量数量固定导致检测效果不佳。针对鲁棒背景的构建,采用背景差分法、自适应阈值分割和高斯混合背景建模算法,提出了一种自适应背景建模方法。背景差分法和自适应阈值分割将每一帧的像素划分为运动目标和背景区域。在训练背景模型时,该算法保持运动目标区域像素的高斯混合背景模型不变,不为该区域建立新的高斯分量。定期更新背景区域,使该区域中每个像素的高斯分量数量自适应,使背景模型的高斯分量仅由真实背景像素更新,提高了算法的性能和背景构造的有效性。实验表明,基于该算法建立的背景模型对具有不确定性的视频序列具有良好的适应性,能够消除阴影,快速响应实际场景的变化,模型的计算速度也有很大提高。
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