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Unsupervised Embedding Learning by Noisy Similarity Label Optimization

机译:嘈杂的相似标签优化无监督嵌入学习

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We propose a similarity label optimization framework for unsupervised embedding learning. Existing works use similarity labels obtained from instance labels, which are image identifiers, for unsupervised embedding learning assuming that images of different instance labels have different semantic classes. However, because of the significant semantic gap between classes and instances, instance labels are not enough for learning embeddings. To alleviate this problem, we consider the similarity labels as noisy labels and optimize similarity labels and neural network parameters in an alternating fashion. Experimental results demonstrate that the proposed method outperforms a baseline method by 1.2% in terms of accuracy on the CIFAR-10 dataset and in 1.3% in terms of recall at k (k = 1) on the Stanford Online Product dataset.
机译:我们为无监督嵌入学习提出了一种相似标签优化框架。假设不同实例标签的图像具有不同的语义类,现有的作品使用了从实例标签获得的相似性标签,这些标签是无监督的嵌入学习。但是,由于类和实例之间的显着语义差距,实例标签不足以学习嵌入。为了缓解这个问题,我们将相似性标签视为嘈杂的标签,并以交替的方式优化相似性标签和神经网络参数。实验结果表明,在CiFar-10数据集的准确性方面,该方法在基线方法中优于1.2%,并且在斯坦福在线产品数据集上的k(k = 1)的召回时的1.3%。

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