无监督软最大嵌入的加余弦余量

IF 1 4区 计算机科学 Q4 ENGINEERING, ELECTRICAL & ELECTRONIC
Dan Wang, Jianwei Yang, Cailing Wang
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引用次数: 0

摘要

无监督嵌入学习的目的是在不使用类别标签的情况下,学习图像的高区分度特征。现有的实例明智软最大嵌入方法将每个实例视为一个不同的类别,并探索实例与实例之间潜在的视觉相似性关系。然而,过度拟合实例特征会导致网络的可区分性不足和泛化能力差。为了解决这个问题,我们引入了带余弦余量的实例软最大嵌入(SEwCM),首次从余弦角度在无监督实例软最大分类函数中增加了余量。余弦余量用于区分实例之间的分类决策边界。SEwCM 通过最大化实例之间的余弦相似度,明确优化了网络的特征映射,从而学习出一个高辨别度的模型。在三个细粒度图像数据集上进行的详尽实验证明了我们提出的方法比现有方法更有效。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Additive cosine margin for unsupervised softmax embedding
Unsupervised embedding learning aims to learn highly discriminative features of images without using class labels. Existing instance-wise softmax embedding methods treat each instance as a distinct class and explore the underlying instance-to-instance visual similarity relationships. However, overfitting the instance features leads to insufficient discriminability and poor generalizability of networks. To tackle this issue, we introduce an instance-wise softmax embedding with cosine margin (SEwCM), which for the first time adds margin in the unsupervised instance softmax classification function from the cosine perspective. The cosine margin is used to separate the classification decision boundaries between instances. SEwCM explicitly optimizes the feature mapping of networks by maximizing the cosine similarity between instances, thus learning a highly discriminative model. Exhaustive experiments on three fine-grained image datasets demonstrate the effectiveness of our proposed method over existing methods.
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来源期刊
Journal of Electronic Imaging
Journal of Electronic Imaging 工程技术-成像科学与照相技术
CiteScore
1.70
自引率
27.30%
发文量
341
审稿时长
4.0 months
期刊介绍: The Journal of Electronic Imaging publishes peer-reviewed papers in all technology areas that make up the field of electronic imaging and are normally considered in the design, engineering, and applications of electronic imaging systems.
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