用于细粒度领域自适应的渐进式对抗网络

Sinan Wang, Xinyang Chen, Yunbo Wang, Mingsheng Long, Jianmin Wang
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引用次数: 39

摘要

细粒度视觉分类一直被认为是一个重要的问题,然而,它的实际应用仍然受到限制,因为精确标注大型细粒度图像数据集是一项费力的任务,需要专家水平的人类知识。这个问题的解决方案是将领域自适应方法应用于细粒度场景,其关键思想是发现现有细粒度图像数据集与大量未标记数据之间的共性。主要的技术瓶颈在于大的域间变异会破坏域对齐过程中小的类间变异的微妙边界。本文提出了渐进式对抗网络(PAN),通过基于课程的对抗学习框架来对齐跨领域的细粒度类别。特别是,在整个学习过程中,通过所有多粒度特征进行域适应,逐步利用从粗到细的标签层次结构。将渐进式学习应用于类别分类和领域对齐,提高了细粒度特征的可辨别性和可转移性。我们的方法在三个基准上进行了评估,其中两个是我们提出的,它优于最先进的领域自适应方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Progressive Adversarial Networks for Fine-Grained Domain Adaptation
Fine-grained visual categorization has long been considered as an important problem, however, its real application is still restricted, since precisely annotating a large fine-grained image dataset is a laborious task and requires expert-level human knowledge. A solution to this problem is applying domain adaptation approaches to fine-grained scenarios, where the key idea is to discover the commonality between existing fine-grained image datasets and massive unlabeled data in the wild. The main technical bottleneck lies in that the large inter-domain variation will deteriorate the subtle boundaries of small inter-class variation during domain alignment. This paper presents the Progressive Adversarial Networks (PAN) to align fine-grained categories across domains with a curriculum-based adversarial learning framework. In particular, throughout the learning process, domain adaptation is carried out through all multi-grained features, progressively exploiting the label hierarchy from coarse to fine. The progressive learning is applied upon both category classification and domain alignment, boosting both the discriminability and the transferability of the fine-grained features. Our method is evaluated on three benchmarks, two of which are proposed by us, and it outperforms the state-of-the-art domain adaptation methods.
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