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Fine-Grained Categorization by Alignments

机译:路线细分类

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The aim of this paper is fine-grained categorization without human interaction. Different from prior work, which relies on detectors for specific object parts, we propose to localize distinctive details by roughly aligning the objects using just the overall shape, since implicit to fine-grained categorization is the existence of a super-class shape shared among all classes. The alignments are then used to transfer part annotations from training images to test images (supervised alignment), or to blindly yet consistently segment the object in a number of regions (unsupervised alignment). We furthermore argue that in the distinction of fine grained sub-categories, classification-oriented encodings like Fisher vectors are better suited for describing localized information than popular matching oriented features like HOG. We evaluate the method on the CU-2011 Birds and Stanford Dogs fine-grained datasets, outperforming the state-of-the-art.
机译:本文的目的是在没有人为干预的情况下进行细分类。与先前的工作依赖于特定对象部分的检测器不同,我们建议通过仅使用整体形状粗略对齐对象来定位独特的细节,因为隐式到细粒度的分类是所有人之间共享的超类形状的存在。类。然后将这些路线用于将零件注释从训练图像转移到测试图像(有监督的对齐),或在多个区域盲目一致地分割对象(无监督的对齐)。我们进一步认为,在细粒度子类别的区分上,像流行的匹配导向特征(例如HOG)一样,像Fisher向量这样的面向分类的编码更适合于描述本地化信息。我们在CU-2011 Birds和Stanford Dogs细粒度数据集上评估了该方法,性能优于最新技术。

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