图像分类中的偏见缓解技术:人类遗产收藏中的公平机器学习

Q4 Computer Science
Dalia Ortiz Pablo, Sushruth Badri, Erik Norén, Christoph Nötzli
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引用次数: 0

摘要

使用自动分类系统的一个主要问题是,如果没有正确设计并考虑到公平性,它们可能对某些人群有害。此外,尽管工程师们已经开发出了尖端的图像分类技术,但这些模型在人类遗产收藏中的应用仍然存在差距,因为这些数据集通常由不同种族、性别和年龄的人的低质量照片组成。在这项工作中,我们评估了三种偏见缓解技术,使用两种最先进的神经网络,Xception和EfficientNet,用于性别分类。此外,我们探索了使用公平数据集的迁移学习来克服训练数据的稀缺性。我们在19世纪和20世纪的文化遗产照片集合上评估了偏见缓解管道的有效性,并使用FairFace数据集进行迁移学习实验。经过评估,我们发现迁移学习是一种很好的技术,在处理小数据集时可以获得更好的性能。此外,发现最公平的分类器是使用迁移学习,阈值变化,重新加权和图像增强作为偏见缓解方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bias mitigation techniques in Image Classification: Fair Machine Learning in Human Heritage Collections
A major problem with using automated classification systems is that if they are not engineered correctly and with fairness considerations, they could be detrimental to certain populations. Furthermore, while engineers have developed cutting-edge technologies for image classification, there is still a gap in the application of these models in human heritage collections, where data sets usually consist of low-quality pictures of people with diverse ethnicity, gender, and age. In this work, we evaluate three bias mitigation techniques using two state-of-the-art neural networks, Xception and EfficientNet, for gender classification. Moreover, we explore the use of transfer learning using a fair data set to overcome the training data scarcity. We evaluated the effectiveness of the bias mitigation pipeline on a cultural heritage collection of photographs from the 19th and 20th centuries, and we used the FairFace data set for the transfer learning experiments. After the evaluation, we found that transfer learning is a good technique that allows better performance when working with a small data set. Moreover, the fairest classifier was found to be accomplished using transfer learning, threshold change, re-weighting and image augmentation as bias mitigation methods.
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来源期刊
Journal of WSCG
Journal of WSCG Computer Science-Computer Graphics and Computer-Aided Design
CiteScore
0.80
自引率
0.00%
发文量
12
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