深度作曲度量学习

Wenzhao Zheng, Chengkun Wang, Jiwen Lu, Jie Zhou
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引用次数: 32

摘要

在本文中,我们提出了一种深度组合度量学习(DCML)框架,用于有效和一般化的图像之间的相似性度量。传统的深度度量学习方法将判别损失最小化,以扩大类间距离,同时抑制类内变化,这可能导致较差的泛化性能,因为即使来自同一类的样本也可能呈现不同的特征。这促使采用集成技术来学习使用不同和不同子任务的许多子嵌入。然而,大多数子任务施加的约束较弱或相互矛盾,这实际上牺牲了每个子嵌入的识别能力,以提高它们组合的泛化能力。为了在不影响泛化能力的前提下获得更好的泛化能力,我们提出将子嵌入与子任务的直接监督分离,并将损失应用于子嵌入的不同组合。我们使用一组可学习的排字器来组合子嵌入,并使用自增强损失来训练排字器,排字器作为继电器来分配不同的训练信号,以避免破坏识别能力。在CUB-200-2011、Cars196和斯坦福在线产品数据集上的实验结果表明,我们的框架具有优越的性能
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Compositional Metric Learning
In this paper, we propose a deep compositional metric learning (DCML) framework for effective and generalizable similarity measurement between images. Conventional deep metric learning methods minimize a discriminative loss to enlarge interclass distances while suppressing intraclass variations, which might lead to inferior generalization performance since samples even from the same class may present diverse characteristics. This motivates the adoption of the ensemble technique to learn a number of sub-embeddings using different and diverse subtasks. However, most subtasks impose weaker or contradictory constraints, which essentially sacrifices the discrimination ability of each sub-embedding to improve the generalization ability of their combination. To achieve a better generalization ability without compromising, we propose to separate the sub-embeddings from direct supervisions from the subtasks and apply the losses on different composites of the sub-embeddings. We employ a set of learnable compositors to combine the sub-embeddings and use a self-reinforced loss to train the compositors, which serve as relays to distribute the diverse training signals to avoid destroying the discrimination ability. Experimental results on the CUB-200-2011, Cars196, and Stanford Online Products datasets demonstrate the superior performance of our framework.1
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