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Robustness of Raw Images Classifiers Against the Class Imbalance - A Case Study

机译:原始图像分类机的鲁棒性反对阶级失衡 - 以案例研究

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Our aim is to investigate the robustness of classifiers against the class imbalance. From this point of view, we compare several most widely used classifiers as well as the one recently proposed, which is based on the assumption that the probability densities in classes have the matrix normal distribution. As the base for comparison we take a sequence of images from that laser based additive manufacturing process. It is important that the classifiers are fed by raw images. The classifiers are compared according to several criterions and the methodology of all pair-wise comparisons is used to rank them.
机译:我们的目标是调查分类器对类别不平衡的稳健性。从这个角度来看,我们比较了几种最广泛使用的分类器以及最近提出的那个,这是基于课程中的概率密度具有矩阵正态分布的假设。作为比较的基础,我们从基于激光的添加剂制造过程中采用一系列图像。重要的是,通过原始图像馈送分类器。根据若干标准进行比较分类器,并且所有对比较的方法都用于对它们进行排名。

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