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首页> 外文期刊>Circuits and Systems for Video Technology, IEEE Transactions on >Looking Inside Category: Subcategory-Aware Object Recognition
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Looking Inside Category: Subcategory-Aware Object Recognition

机译:向内看类别:子类别感知对象识别

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摘要

In this paper, we present a subcategory-aware recognition framework to boost category level object classification performance. Different from the existing monolithic model approaches, we aim to automatically leverage the embedded subcategory structure to assist the further category level recognition. Motivated by the observation of considerable intra-class diversities and inter-class ambiguities in many current object classification data sets, we explicitly split data into subcategories by ambiguity-guided subcategory mining. The resulting subcategories are seamlessly integrated into the state-of-the-art detection-assisted classification framework. In particular, we build the instance affinity graph by combining both intra-class similarity and inter-class ambiguity. Visual subcategories, which correspond to the dense subgraphs, are detected by the graph shift algorithm. We then train an individual model for each subcategory rather than an attempt to represent an object category with a monolithic model. Related samples, which are informative for subcategory classification, are utilized to regularize each subcategory model. Finally, the responses from subcategory models are aggregated by subcategory-aware kernel regression. The extensive experiments over the PASCAL visual object challenge (VOC) 2007 and PASCAL VOC 2010 databases show the state-of-the-art performance from our framework.
机译:在本文中,我们提出了一个子类别感知的识别框架,以提高类别级别的对象分类性能。与现有的整体模型方法不同,我们旨在自动利用嵌入式子类别结构来协助进一步的类别级别识别。出于观察许多当前对象分类数据集中相当大的类内多样性和类间歧义的动机,我们通过歧义指导的子类挖掘将数据明确地划分为子类。生成的子类别无缝集成到最新的检测辅助分类框架中。特别地,我们通过组合类内相似度和类间模糊度来构建实例亲和度图。通过图移位算法检测与密集子图相对应的可视子类别。然后,我们为每个子类别训练一个单独的模型,而不是尝试用整体模型表示对象类别。有关子类别分类的相关样本被用来规范化每个子类别模型。最后,子类别模型的响应通过支持子类别的内核回归进行汇总。在PASCAL视觉对象挑战(VOC)2007和PASCAL VOC 2010数据库上进行的广泛实验表明,我们的框架具有最先进的性能。

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