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Maximum Likelihood Estimation of Gaussian Mixture Models Using PSO for Image Segmentation

机译:基于PSO的高斯混合模型的最大似然估计。

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Gaussian mixture model-based clustering algorithm is one of the advanced techniques applied to enhance the image segmentation performance. However, segmentation process is still encountering some critical difficulties: the model is quite sensitive to initialization, and easily gets trapped in local maxima. To address these problems in image segmentation, we proposed a novel clustering algorithm employing the arbitrary covariance matrices that uses particle swarm optimization for the estimation of Gaussian Mixture Models. Such model can be able to prevent the effective use of population-base algorithms during clustering, and the arbitrary covariance matrices allow independently updating individual parameters, while retaining the validity of the matrix. Then we present the solution that involves an optimization formulation to identify the correspondence between different parameter orderings of candidate solutions. The experimental results show that our method provides a simple segmentation process and the better quality of segmented images comparing to other methods. Furthermore, our method would provide an advanced technique for multi-dimensional image analysis and computer vision systems that can apply for various science and technology sector.
机译:基于高斯混合模型的聚类算法是用于增强图像分割性能的先进技术之一。但是,分割过程仍然遇到一些关键困难:模型对初始化非常敏感,并且很容易陷入局部最大值。为了解决图像分割中的这些问题,我们提出了一种使用任意协方差矩阵的新颖聚类算法,该算法使用粒子群优化来估计高斯混合模型。这样的模型可能会阻止在聚类过程中有效使用基于人口的算法,而任意协方差矩阵允许独立更新各个参数,同时保留矩阵的有效性。然后,我们提出了涉及优化公式的解决方案,以识别候选解决方案的不同参数顺序之间的对应关系。实验结果表明,与其他方法相比,该方法分割过程简单,分割图像质量更好。此外,我们的方法将为多维图像分析和计算机视觉系统提供可应用于各种科学和技术领域的先进技术。

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