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Accelerated Gaussian Mixture Model and Its Application on Image Segmentation

机译:加速高斯混合模型及其在图像分割中的应用

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Gaussian mixture model (GMM) has been widely used for image segmentation in recent years due to its superior adaptability and simplicity of implementation. However, traditional GMM has the disadvantage of high computational complexity. In this paper an accelerated GMM is designed, for which the following approaches are adopted: establish the lookup table for Gaussian probability matrix to avoid the repetitive probability calculations on all pixels, employ the blocking detection method on each block of pixels to further decrease the complexity, change the structure of lookup table from 3D to 1D with more simple data type to reduce the space requirement. The accelerated GMM is applied on image segmentation with the help of OTSU method to decide the threshold value automatically. Our algorithm has been tested through image segmenting of flames and faces from a set of real pictures, and the experimental results prove its efficiency in segmentation precision and computational cost.
机译:高斯混合模型(GMM)由于其卓越的适应性和实现的简便性,近年来已广泛用于图像分割。但是,传统的GMM具有计算复杂度高的缺点。本文设计了一种加速的GMM,采用以下方法:建立高斯概率矩阵查找表,避免对所有像素重复计算概率,对每个像素块采用块检测方法,进一步降低了复杂度。 ,使用更简单的数据类型将查找表的结构从3D更改为1D,以减少空间需求。借助OTSU方法将加速的GMM应用于图像分割,以自动确定阈值。通过对火焰和人脸的图像分割,从一组真实图片中对我们的算法进行了测试,实验结果证明了该算法在分割精度和计算成本上的有效性。

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