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Growing a multi-class classifier with a reject option

机译:使用拒绝选项扩展多类分类器

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摘要

In many classification problems objects should be rejected when the confidence in their classification is too low. An example is a face recognition problem where the faces of a selected group of people have to be classified, but where all other faces and non-faces should be rejected. These problems are typically solved by estimating the class densities and assigning an object to the class with the highest posterior probability. The total probability density is thresholded to detect the outliers. Unfortunately, this procedure does not easily allow for class-dependent thresholds, or for class models that are not based on probability densities but on distances. In this paper we propose a new heuristic to combine any type of one-class models for solving the multi-class classification problem with outlier rejection. It normalizes the average model output per class, instead of the more common non-linear transformation of the distances. It creates the possibility to adjust the rejection threshold per class, and also to combine class models that are not (all) based on probability densities and to add class models without affecting the boundaries of existing models. Experiments show that for several classification problems using class-specific models significantly improves the performance.
机译:在许多分类问题中,如果对分类的置信度太低,则应拒绝该对象。一个例子是面部识别问题,其中必须对选定人群的面部进行分类,但应拒绝所有其他面部和非面部。这些问题通常通过估计类别密度并将对象分配给具有最高后验概率的类别来解决。将总概率密度设定为阈值以检测异常值。不幸的是,此过程不容易允许依赖于类的阈值,或者不能基于不是基于概率密度而是基于距离的类模型。在本文中,我们提出了一种新的启发式方法,可以结合使用任何类型的一类模型来解决具有异常值排除的多类分类问题。它将每个类别的平均模型输出标准化,而不是更常见的距离非线性转换。它提供了调整每个类别的拒绝阈值的可能性,还可以组合并非(全部)基于概率密度的类别模型,并添加类别模型而不影响现有模型的边界。实验表明,对于某些分类问题,使用特定于类的模型可以显着提高性能。

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