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Making Better Mistakes: Leveraging Class Hierarchies With Deep Networks

机译:犯更好的错误:利用深层网络利用类层次结构

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Deep neural networks have improved image classification dramatically over the past decade, but have done so by focusing on performance measures that treat all classes other than the ground truth as equally wrong. This has led to a situation in which mistakes are less likely to be made than before, but are equally likely to be absurd or catastrophic when they do occur. Past works have recognised and tried to address this issue of mistake severity, often by using graph distances in class hierarchies, but this has largely been neglected since the advent of the current deep learning era in computer vision. In this paper, we aim to renew interest in this problem by reviewing past approaches and proposing two simple methods which outperform the prior art under several metrics on two large datasets with complex class hierarchies: tieredImageNet and iNaturalist’19.
机译:在过去的十年中,深度神经网络具有显着提高的图像分类,但通过专注于将所有课程的性能措施重点遵循地面真理,如同错误地进行。这导致了比以前更容易制作错误的情况,但在发生这种情况时同样可能是荒谬的或灾难性的。过去的作品已经认识并试图解决这个错误的错误严重性,通常是通过使用类层次结构中的图形距离来解决这个问题,但自电脑愿景中当前深度学习时代的出现很大程度上被忽略了。在本文中,我们的目标是通过审查过去的方法并提出两种简单的方法来续期对此问题的兴趣,这些方法在两个大型数据集中的几个度量标准下胜过现有技术,具有复杂的类层次结构:TieredimAgenet和Inattation'19。

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