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An unsupervised and non-parametric bayesian classifier

机译:无监督和非参数贝叶斯分类器

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We propose here an unsupervised Bayesian classifier based on a non-parametric expectation-maximization algorithm. The non-parametric aspect comes from the use of the orthogonal probability density function (pdf) estimation, which is reduced to the estimation of the first Fourier coefficients of the pdf with respect to a given orthogonal basis. So, the mixture identification step based on the maximization of the likelihood can be realized without hypothesis on the conditional pdf s distribution. This means that for the unsupervised image segmentation example we do not need any assumption for the gray level image pixels distribution. The generalization to the multivariate case can be obtained by considering the multidimensional orthogonal function basis. In this paper, we give some simulation results for the determination of the smoothing parameter and to compute the error of classification.
机译:我们在此提出一种基于非参数期望最大化算法的无监督贝叶斯分类器。非参数方面来自正交概率密度函数(pdf)估计的使用,相对于给定的正交基,该估计被简化为pdf的第一傅里叶系数的估计。因此,无需假设条件pdf s分布即可实现基于似然性最大化的混合物识别步骤。这意味着对于无监督图像分割示例,对于灰度图像像素分布,我们不需要任何假设。可以通过考虑多维正交函数基础来获得对多元情况的概括。在本文中,我们给出了一些用于确定平滑参数并计算分类误差的仿真结果。

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