一种新的高斯混合模型背景减法检测运动目标方法

Xiaofeng Lu, Caidi Xu
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引用次数: 11

摘要

运动目标检测是计算机视觉领域研究和应用的热点。背景相减法是一种最常用的运动目标检测方法,通过对比背景模型和当前帧来检测图像序列中的运动目标。在运动目标检测过程中,存在着杂波背景的干扰、光照、噪声和阴影的影响等诸多挑战。针对目标检测的难题,提出了一种基于小波块的高斯混合模型背景减去方法。该方法既能减少光照、噪声和阴影的影响,又能适应自然场景的动态变化。贡献体现在以下几个方面:(1)在背景建模阶段提出了一种运行时间更短的高斯背景建模方法。基于图像块平均图像的高斯混合模型(GMM)重建背景,旨在简化计算从而提高相应操作的速度。(2)在前景检测阶段,采用基于小波的半软阈值去噪方法对前景目标图像进行去噪。实验结果表明,该方法降低了算法的计算复杂度,提高了算法的适应性和性能。它比传统方法更有效、更稳健。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Novel Gaussian mixture model background subtraction method for detecting moving objects
Moving object detection is the focus of research and application in the field of computer vision. Background subtraction method is one of the most commonly used methods for moving object detection, in which moving objects in image sequences are detected by comparison of the background model with the current frame. In the process of moving object detection, there are many challenges, such as the interference of clutter background, the influence of illumination, noise and shadow. In this paper, a novel Gaussian mixture model background subtraction method based on wavelet blocks is proposed for the challenge of object detection. This method can not only reduce the influence of illumination, noise and shadow, but also adapt to the dynamic change of natural scene. The contribution lies in the following aspects: (1) A Gaussian background modeling method with less running time is proposed in the background modeling stage. The background is reconstructed based on Gaussian mixture model (GMM) of the mean images of image blocks, aiming to simplify the calculations so as to improve the speed of the corresponding operations. (2) In the foreground detection stage, a wavelet-based de-noising method with the semi-soft threshold function is applied to de-noise the object images of the foreground. Experimental results show that the computational complexity is reduced, while the adaptability and performance are improved by using the proposed method. It was more efficient and robust than traditional approaches.
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