用于细粒度分类的多粒度描述符

Dequan Wang, Zhiqiang Shen, Jie Shao, Wei Zhang, X. Xue, Zeyu Zhang
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引用次数: 199

摘要

细粒度分类是一项极具挑战性的任务,其目的是区分从属级别的类别,如鸟类或狗的品种。这主要是由于两个问题:如何定位识别的判别区域,以及如何学习复杂的特征来表示。如果没有足够的标记数据,这两种方法都不容易处理。我们利用了从属级对象在其本体树中已经有其他标签的事实。这些“免费”标签可以用来训练一系列基于cnn的分类器,每个分类器在一个粒度级别上进行专业化。这些网络的内部表示具有不同的兴趣区域,允许构建多粒度描述符,这些描述符编码涵盖所有粒度级别的信息和判别特征。我们的多粒度框架可以在最弱的监督下学习,只需要图像级别的标签,避免使用劳动密集型的边界框或部分注释。在三个具有挑战性的细粒度图像数据集上的实验结果表明,我们的方法优于最先进的算法,包括那些需要强标签的算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multiple Granularity Descriptors for Fine-Grained Categorization
Fine-grained categorization, which aims to distinguish subordinate-level categories such as bird species or dog breeds, is an extremely challenging task. This is due to two main issues: how to localize discriminative regions for recognition and how to learn sophisticated features for representation. Neither of them is easy to handle if there is insufficient labeled data. We leverage the fact that a subordinate-level object already has other labels in its ontology tree. These "free" labels can be used to train a series of CNN-based classifiers, each specialized at one grain level. The internal representations of these networks have different region of interests, allowing the construction of multi-grained descriptors that encode informative and discriminative features covering all the grain levels. Our multiple granularity framework can be learned with the weakest supervision, requiring only image-level label and avoiding the use of labor-intensive bounding box or part annotations. Experimental results on three challenging fine-grained image datasets demonstrate that our approach outperforms state-of-the-art algorithms, including those requiring strong labels.
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