Out-of-distribution detection for fungi images with similar features

Yutaka Kawashima, Mayuka Higo, T. Tokiwa, Yukihiro Asami, K. Nonaka, Y. Aoki
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Abstract

In order to create a classification model for fungi, it is necessary to have robustness against out-of-distribution data from the viewpoint of practicality. Therefore, in this paper, we perform out-of-distribution detection on a fungi. Unlike the case of conventional out-of-distribution detection, the characteristics of in-distribution data and out-of-distribution data in this paper are very similar. Therefore, the problem in which conventional methods using out-of-distribution data for validation are not effective is mentioned. We also verify whether the accuracy of out-of-distribution detection can be improved using the attention branch network.
相似特征真菌图像的分布外检测
为了建立真菌的分类模型,从实用性的角度出发,必须对分布外数据具有鲁棒性。因此,在本文中,我们对一种真菌进行了分布外检测。与传统的分布外检测不同,本文中分布内数据和分布外数据的特征非常相似。因此,提出了使用分布外数据进行验证的传统方法效果不佳的问题。我们还验证了使用注意分支网络是否可以提高分布外检测的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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