少射度量学习:在线自适应嵌入检索

Deunsol Jung, Dahyun Kang, Suha Kwak, Minsu Cho
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引用次数: 3

摘要

度量学习的目的是建立一个距离度量,通常通过学习一个有效的嵌入函数,将相似的对象映射到其嵌入空间中的附近点。尽管深度度量学习最近取得了进展,但将学习到的度量推广到具有大量领域差距的未知类仍然具有挑战性。为了解决这一问题,我们探索了一种新的小样本度量学习问题,其目的是在只有少量注释数据的情况下使嵌入函数适应目标域。我们引入了三个少镜头度量学习基线,并提出了通道整流元学习(Channel-Rectifier Meta-Learning, CRML),它通过调整中间层的通道来有效地在线适应度量空间。在miniImageNet、CUB-200-2011、MPII以及新数据集miniDeepFashion上的实验分析表明,我们的方法通过使学习到的度量适应目标类而不断改进,当与源类的域差较大时,我们的方法在图像检索中获得了更大的增益。
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Few-shot Metric Learning: Online Adaptation of Embedding for Retrieval
Metric learning aims to build a distance metric typically by learning an effective embedding function that maps similar objects into nearby points in its embedding space. Despite recent advances in deep metric learning, it remains challenging for the learned metric to generalize to unseen classes with a substantial domain gap. To tackle the issue, we explore a new problem of few-shot metric learning that aims to adapt the embedding function to the target domain with only a few annotated data. We introduce three few-shot metric learning baselines and propose the Channel-Rectifier Meta-Learning (CRML), which effectively adapts the metric space online by adjusting channels of intermediate layers. Experimental analyses on miniImageNet, CUB-200-2011, MPII, as well as a new dataset, miniDeepFashion, demonstrate that our method consistently improves the learned metric by adapting it to target classes and achieves a greater gain in image retrieval when the domain gap from the source classes is larger.
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