Doppelganger Mining for Face Representation Learning

Evgeny Smirnov, A. Melnikov, Sergey Novoselov, Eugene Luckyanets, G. Lavrentyeva
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引用次数: 42

Abstract

In this paper we present Doppelganger mining - a method to learn better face representations. The main idea of this method is to maintain a list with the most similar identities for each identity in the training set. This list is used to generate better mini-batches by sampling pairs of similar-looking identities ("doppelgangers") together. It is especially useful for methods, based on exemplar-based supervision. Usually hard example mining comes with a price of necessity to use large mini-batches or substantial extra computation and memory cost, particularly for datasets with large numbers of identities. Our method needs only a negligible extra computation and memory. In our experiments on a benchmark dataset with 21,000 persons we show that Doppelganger mining, being inserted in the face representation learning process with joint prototype-based and exemplar-based supervision, significantly improves the discriminative power of learned face representations.
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人脸表征学习的二重身挖掘
在本文中,我们提出了二重身挖掘-一种更好地学习人脸表示的方法。该方法的主要思想是为训练集中的每个标识维护一个具有最相似标识的列表。该列表用于通过对看起来相似的身份(“二重身”)进行抽样来生成更好的小批量。它对基于范例监督的方法特别有用。通常,硬示例挖掘的代价是必须使用大量的小批量或大量额外的计算和内存成本,特别是对于具有大量身份的数据集。我们的方法只需要微不足道的额外计算和内存。在我们对21,000人的基准数据集进行的实验中,我们表明,通过基于原型和基于范例的联合监督,将二重身挖掘插入人脸表征学习过程中,显著提高了学习到的人脸表征的判别能力。
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