使用辅助嵌入的硬示例挖掘

Evgeny Smirnov, A. Melnikov, A. Oleinik, Elizaveta Ivanova, I. Kalinovskiy, Eugene Luckyanets
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引用次数: 36

摘要

硬例挖掘是深度嵌入学习的重要组成部分。大多数方法在小批处理级别执行它。然而,在大规模设置中,只有很小的机会,适当的例子将出现在同一个小批量中,并将耦合到硬例子对或三胞胎中。二重身挖掘以前被提议通过类相似性来增加这种可能性。这种方法确保了相似类的样本一起被抽样到相同的mini-batch中。这种方法的缺点之一是它只能在类级别上操作,而可能还有一种方法可以在类中以比随机更详细的方式选择适当的示例。在本文中,我们建议使用辅助嵌入来进行硬示例挖掘。这些嵌入是这样构造的,相似的例子在余弦相似性意义上具有紧密的嵌入。在这些嵌入的帮助下,可以根据它们与已经选择的示例的相似性为小批选择新的示例。我们提出了几种方法来创建辅助嵌入,并使用它们来增加每个小批量中潜在的硬正反例的数量。我们在具有挑战性的野外伪装面孔(DFW)数据集上的实验表明,使用辅助嵌入的硬样本挖掘提高了学习表征的判别能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hard Example Mining with Auxiliary Embeddings
Hard example mining is an important part of the deep embedding learning. Most methods perform it at the mini-batch level. However, in the large-scale settings there is only a small chance that proper examples will appear in the same mini-batch and will be coupled into the hard example pairs or triplets. Doppelganger mining was previously proposed to increase this chance by means of class-wise similarity. This method ensures that examples of similar classes are sampled into the same mini-batch together. One of the drawbacks of this method is that it operates only at the class level, while there also might be a way to select appropriate examples within class in a more elaborated way than randomly. In this paper, we propose to use auxiliary embeddings for hard example mining. These embeddings are constructed in such way that similar examples have close embeddings in the cosine similarity sense. With the help of these embeddings it is possible to select new examples for the mini-batch based on their similarity with the already selected examples. We propose several ways to create auxiliary embeddings and use them to increase the number of potentially hard positive and negative examples in each mini-batch. Our experiments on the challenging Disguised Faces in the Wild (DFW) dataset show that hard example mining with auxiliary embeddings improves the discriminative power of learned representations.
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