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Video Image Segmentation using Gaussian Mixture Models based on the Differential Evolution-based Parameter Estimation

机译:基于基于差分演化的参数估计的高斯混合模型视频图像分割

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In order to improve the accuracy of the image segmentation in video surveillance sequences and to overcome the limits of the traditional clustering algorithms that can not accurately model the image data sets which Contains noise data, the paper presents an automatic and accurate video image segmentation algorithm, according to the spatial properties, which uses the Gaussian mixture models to segment the image. But the expectation-maximization algorithm is very sensitive to initial values, and easy to fall into local optimums, so the paper presents a differential evolution-based parameters estimation for Gaussian mixture models. The experiment result shows that the segmentation accuracy has been improved greatly than by the traditional segmentation algorithms.
机译:为了提高视频监控序列中图像分割的准确性,并克服传统聚类算法无法准确建模包含噪声数据的图像数据集的局限性,提出了一种自动准确的视频图像分割算法,根据空间特性,使用高斯混合模型对图像进行分割。但是期望最大化算法对初始值非常敏感,容易陷入局部最优,因此本文提出了一种基于差分演化的高斯混合模型参数估计方法。实验结果表明,与传统的分割算法相比,分割精度有了较大提高。

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