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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Learning multi-layer coarse-to-fine representations for large-scale image classification
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Learning multi-layer coarse-to-fine representations for large-scale image classification

机译:学习用于大型图像分类的多层粗致良好表示

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摘要

Recent studies on large-scale image classification mainly focus on categorizing images into 1000 object classes, and all these 1000 object classes are atomic and mutually exclusive in the semantic space. However, for a much larger set of image categories (such as the ImageNet 10k dataset), some of them may come from the high-level (non-leaf) nodes of the concept ontology and could contain some other lower-level categories semantically. The research that classifies images into large numbers of image categories with such inter-category subsumption correlations has received rare attention. In this paper, a Visual-Semantic Tree is learned to organize 10k image categories hierarchically in a coarse-to-fine fashion, where both the inter-category visual similarities and inter-category semantic correlations are seamlessly integrated for tree construction. Additionally, a deep learning method is developed by integrating the Visual-Semantic Tree with deep CNNs to learn more discriminative tree classifiers for large-scale image classification. Our experimental results have demonstrated that the proposed Visual-Semantic Tree can effectively organize large-scale structural image categories and significantly boost the classification accuracy rates for both atomic image categories and high-level image categories. (C) 2019 Elsevier Ltd. All rights reserved.
机译:最近关于大型图像分类的研究主要关注将图像分为1000个对象类,并且所有这些1000个对象类都是语义空间中的原子和互斥。但是,对于更大的图像类别(例如ImageNet 10k数据集),其中一些可能来自概念本体的高级(非叶子)节点,并且可以在语义上包含一些其他较低级别的类别。将图像分为大量图像类别的研究已经获得了罕见的关注。在本文中,学习了一种视觉语义树以分层地以粗糙的方式组成10K图像类别,其中类别间视觉相似性和类别间语义相关性用于树结构。另外,通过将视觉语义树与深CNN集成来学习用于大规模图像分类的更多辨别树分类器来开发深度学习方法。我们的实验结果表明,所提出的视觉语义树可以有效地组织大规模的结构图像类别,并显着提高原子图像类别和高级图像类别的分类精度率。 (c)2019年elestvier有限公司保留所有权利。

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