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A growing classifier applied to partially labeled Landsat images

机译:一种越来越多的分类器应用于部分标记的Landsat图像

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A method to automatically generate a Gaussian mixture classifier is presented. The growing process consist of iterative addition of a new Gaussian mixture. Every iteration is divided into two sequential phases: first, the likelihood of the data under the current configuration is maximized by means of the EM algorithm and then a new Gaussian mixture is added in the class that need it most in terms of a discriminative rule. Growth control is imposed by a complexity penalizing term and by a discriminative condition. After the growing process is finished a combined re-estimation using labeled and unlabeled data is performed. We report the results on some artificially generated examples and on terrain classification over a Landsat-TM image using different restrictions for the covariance matrix of the mixtures.
机译:呈现了自动生成高斯混合分类器的方法。生长过程包括迭代添加新的高斯混合物。每次迭代都分为两个顺序阶段:首先,通过EM算法最大化当前配置下数据的可能性,然后在需要其辨别规则方面需要一个新的高斯混合物。通过复杂性惩罚术语和歧视条件施加生长控制。在完成生长过程之后,完成使用标记和未标记数据的组合重新估计。我们在一些人工生成的例子和地形分类上使用混合物的协方差矩阵的不同限制报告了一些人工生成的例子和地形分类。

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