基于背景减法和模糊推理的运动目标分割

X. Lijun
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引用次数: 10

摘要

为了提高分割精度,减少欠分割和过分割,本文提出了一种新的运动目标检测算法。该方法以背景减法为基础,结合模糊推理进行阈值设置和背景更新。在模糊推理过程中,我们使用了7条模糊规则,可以有效地对运动物体中像素的隶属度进行建模。推理算法有基于像素和基于区域的两种。它正确地从静止的背景中分割出运动的物体。同时,利用模糊逻辑对背景模型进行动态更新,克服了复杂自然环境中频繁出现的噪声和光照变化。因此,该算法适用于长时间运行而不损失精度。实验结果表明,该方法鲁棒性好,速度快。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Moving object segmentation based on background subtraction and fuzzy inference
In order to improve the segmentation accuracy, reduce under-segmentation and over-segmentation, this paper proposes a new algorithm for detecting moving objects. The method is based on background subtraction algorithm and integrated with fuzzy inference for thresholding and background update. We use 7 fuzzy rules which can effectively model the membership of a pixel in a moving object during the fuzzy inference. The inference algorithm is both pixel-based and region-based. It properly segments the moving object from the stationary background. Moreover, the background model is updated by fuzzy logic with dynamic update rate over time to overcome the noise and illumination changes, which occurs frequently in complex natural environments. So the algorithm is suitable for a long run without losing accuracy. The experiment results show that our method is robust as well as fast in performance.
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