Classification with reject option using contextual information

Filipe Condessa, J. Bioucas-Dias, C. Castro, J. Ozolek, J. Kovacevic
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引用次数: 16

Abstract

We propose a new algorithm for classification that merges classification with reject option with classification using contextual information. A reject option is desired in many image-classification applications requiring a robust classifier and when the need for high classification accuracy surpasses the need to classify the entire image. Moreover, our algorithm improves the classifier performance by including local and nonlocal contextual information, at the expense of rejecting a fraction of the samples. As a probabilistic model, we adopt a multinomial logistic regression. We use a discriminative random model for the description of the problem; we introduce reject option into the classification problem through association potential, and contextual information through interaction potential. We validate the method on the images of H&E-stained teratoma tissues and show the increase in the classifier performance when rejecting part of the assigned class labels.
使用上下文信息进行带有拒绝选项的分类
提出了一种新的分类算法,该算法将基于拒绝选项的分类与基于上下文信息的分类相结合。在许多需要鲁棒分类器的图像分类应用程序中,当对高分类精度的需求超过对整个图像的分类需求时,需要一个拒绝选项。此外,我们的算法通过包含局部和非局部上下文信息来提高分类器的性能,代价是拒绝一部分样本。作为一个概率模型,我们采用多项逻辑回归。我们使用判别随机模型来描述问题;我们通过关联势引入拒绝选项到分类问题中,通过交互势引入上下文信息。我们在h&e染色的畸胎瘤组织图像上验证了该方法,并显示了在拒绝部分指定的分类标签时分类器性能的提高。
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