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Statistic metrics for evaluation of binary classifiers without ground-truth

机译:统计量度,用于评估没有底线的二元分类器

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In this paper, we present a number of statistically grounded performance evaluation metrics capable of evaluating binary classifiers in absence of annotated Ground Truth. These metrics are generic and can be applied to any type of classifier but are experimentally validated on binarization algorithms. We applied the statistically grounded metrics and compared them with metrics based on annotated data. Our approach has statistically significant better than random results in classifiers selection, and our evaluation metrics requiring no Ground Truth have high correlation with traditional metrics. We conducted experiments on the images from the DIBCO binarization contests between 2009 and 2013.
机译:在本文中,我们提出了许多基于统计的性能评估指标,这些指标可以在没有带注释的地面真理的情况下评估二进制分类器。这些指标是通用的,可以应用于任何类型的分类器,但可以通过二值化算法进行实验验证。我们应用了基于统计的指标,并将其与基于注释数据的指标进行了比较。在分类器选择中,我们的方法在统计上比随机结果要好得多,并且不需要地面真理的评估指标与传统指标具有高度相关性。我们对2009年至2013年间DIBCO二值化竞赛中的图像进行了实验。

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