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Bayes Classifier Based on Tree-Structured Gaussian Mixtures

机译:基于树结构高斯混合的贝叶斯分类器

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摘要

A novel approach is proposed to constructing a Bayes classifier in a multidimensional space of features by using tree-structured Gaussian mixtures as estimates of class-conditional probability density functions. A training procedure is developed for the classifier that is reduced to finding numbers of mixture components and their thresholds in order to realize rejections for the given classes. The mixture parameters are optimized by a cross-validation method. Classification error rate is estimated on a set of 3D vectors of textual features of a monochrome image. Comparative error rates are obtained for classifiers that use histograms, individual Gaussian densities, and Gaussian mixtures constructed using the EM (expectation-maximization) algorithm. The practical application of the developed classifier is illustrated by results of image segmentation for a satellite picture. The image represents a fragment of the Earth surface and it is obtained using the Google Earth program.
机译:提出了一种新颖的方法,通过使用树状结构的高斯混合物作为类条件概率密度函数的估计,在多维特征空间中构造贝叶斯分类器。为分类器开发了一种训练程序,减少了寻找混合物成分及其阈值的数量,以实现给定类别的剔除。通过交叉验证方法优化了混合物参数。在单色图像文本特征的一组3D向量上估计分类错误率。对于使用直方图,单个高斯密度和使用EM(期望最大化)算法构造的高斯混合的分类器,可获得比较错误率。卫星图像的图像分割结果说明了开发的分类器的实际应用。该图像代表地球表面的一部分,可以使用Google Earth程序获得。

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