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Webly Supervised Learning Meets Zero-shot Learning: A Hybrid Approach for Fine-Grained Classification

机译:网上监督学习与零镜头学习相结合:精细分类的一种混合方法

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Fine-grained image classification, which targets at distinguishing subtle distinctions among various subordinate categories, remains a very difficult task due to the high annotation cost of enormous fine-grained categories. To cope with the scarcity of well-labeled training images, existing works mainly follow two research directions: 1) utilize freely available web images without human annotation; 2) only annotate some fine-grained categories and transfer the knowledge to other fine-grained categories, which falls into the scope of zero-shot learning (ZSL). However, the above two directions have their own drawbacks. For the first direction, the labels of web images are very noisy and the data distribution between web images and test images are considerably different. For the second direction, the performance gap between ZSL and traditional supervised learning is still very large. The drawbacks of the above two directions motivate us to design a new framework which can jointly leverage both web data and auxiliary labeled categories to predict the test categories that are not associated with any well-labeled training images. Comprehensive experiments on three benchmark datasets demonstrate the effectiveness of our proposed framework.
机译:细粒度图像分类的目标是区分各个从属类别之间的细微差别,由于巨大的细粒度类别的注释成本很高,因此它仍然是一项非常困难的任务。为了应对标签良好的训练图像的匮乏,现有作品主要遵循两个研究方向:1)利用无需人工注释的免费提供的网络图像; 2)仅注释一些细分类,并将知识转移到其他细分类,这属于零击学习(ZSL)的范围。但是,上述两个方向都有其自身的缺点。对于第一个方向,Web图像的标签非常嘈杂,Web图像和测试图像之间的数据分布有很大不同。对于第二个方向,ZSL和传统的有监督学习之间的性能差距仍然很大。上述两个方向的缺点促使我们设计了一个新框架,该框架可以共同利用网络数据和辅助标记类别来预测与任何标记良好的训练图像都不相关的测试类别。对三个基准数据集的综合实验证明了我们提出的框架的有效性。

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