Learning Fashion By Simulated Human Supervision

Eli Alshan, Sharon Alpert, A. Neuberger, N. Bubis, Eduard Oks
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Abstract

We consider the task of predicting subjective fashion traits from images using neural networks. Specifically, we are interested in training a network for ranking outfits according to how well they fit the user. In order to capture the variability induced by human subjective considerations, each training example is annotated by a panel of fashion experts. Similarly to previous works on subjective data, the panel votes are converted to a classification or regression problem and the corresponding network is trained and evaluated using standard objective metrics. The question is which objective metric, if any, is most suitable to measure the performance of a network trained for subjective tasks? In this paper, we conducted human approval tests for outfit ranking networks trained using various objective metrics. We show that these metrics do not adequately estimate the human approval of subjective tasks. Instead, we introduce a supervising network that unlike objective metrics, is designed to capture the variability induced by human subjectivity. We use it to supervise our outfit ranking network and we demonstrate empirically, that training our outfit ranking network with the suggested supervising network achieves greater approval ratings from human subjects.
通过模拟人类监督学习时尚
我们考虑使用神经网络从图像中预测主观时尚特征的任务。具体来说,我们感兴趣的是训练一个网络,根据它们适合用户的程度对服装进行排名。为了捕捉由人类主观考虑引起的可变性,每个训练示例都由时尚专家小组注释。与之前对主观数据的研究类似,小组投票被转换为分类或回归问题,相应的网络被训练并使用标准的客观指标进行评估。问题是,哪个客观指标(如果有的话)最适合衡量一个经过主观任务训练的网络的性能?在本文中,我们对使用各种客观指标训练的装备排名网络进行了人类认可测试。我们表明,这些指标不能充分地估计人类对主观任务的认可。相反,我们引入了一个监督网络,它与客观指标不同,旨在捕捉由人类主观性引起的可变性。我们用它来监督我们的服装排名网络,并通过经验证明,用建议的监督网络训练我们的服装排名网络获得了来自人类受试者的更高的支持率。
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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