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ProxyNCA++: Revisiting and Revitalizing Proxy Neighborhood Component Analysis

机译:Proxynca ++:重新审视和振兴代理邻域分量分析

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We consider the problem of distance metric learning (DML), where the task is to learn an effective similarity measure between images. We revisit ProxyNCA and incorporate several enhancements. We find that low temperature scaling is a performance-critical component and explain why it works. Besides, we also discover that Global Max Pooling works better in general when compared to Global Average Pooling. Additionally, our proposed fast moving proxies also addresses small gradient issue of proxies, and this component synergizes well with low temperature scaling and Global Max Pooling. Our enhanced model, called ProxyNCA+ + , achieves a 22.9% point average improvement of Recall@ 1 across four different zero-shot retrieval datasets compared to the original ProxyNCA algorithm. Furthermore, we achieve state-of-the-art results on the CUB200, Cars196, Sop, and InShop datasets, achieving Recall@ 1 scores of 72.2, 90.1, 81.4, and 90.9, respectively.
机译:我们考虑距离度量学习(DML)的问题,其中任务是在图像之间学习有效的相似性度量。 我们重新访问Proxynca并包含多种增强功能。 我们发现低温缩放是一个性能关键组件,并解释为什么它有效。 此外,与全球平均水平汇集相比,我们还发现全球最大池在一般方面工作得多。 此外,我们提出的快速移动代理还解决了代理的小梯度问题,而且该组件在低温缩放和全局最大池中协同良好。 与原始Proxynca算法相比,我们称为Proxynca + +的增强型模型,达到了四种不同的零拍摄检索数据集的22.9%的点平均改进。 此外,我们在CUB200,CARS196,SOP和INSHOP数据集上实现最先进的结果,分别召回72.2,90.1,81.4和90.9的召回@ 1分数。

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