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Selective parts for fine-grained recognition

机译:选择性识别细部

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Classical visual bag-of-words approaches tackle finegrained recognition using global features which discard spatial location of features. In this paper, we propose a novel part-based approach to distinguish fine-grained categories. This work is distinguished by two contributions. First, a fully automatic technique for selecting mid-level parts from large amounts of candidate regions without any part supervised information is presented. We call the selected parts by discriminative mining algorithm as selective parts. Second, a general effective evaluation criterion of quantifying part discriminability is built, which leads to joint selection process. For classification, feature ensembles are constructed based on global object and selective parts. Experimental results demonstrate the particular effectiveness of selective parts for fine-grained recognition on bird species on the Caltech UCSD Birds (CUB) dataset.
机译:经典的视觉词袋方法使用全局特征来处理细粒度的识别,而全局特征会丢弃特征的空间位置。在本文中,我们提出了一种新颖的基于零件的方法来区分细粒度的类别。这项工作有两个贡献。首先,提出了一种用于从大量候选区域中选择中级零件而无需任何零件监督信息的全自动技术。我们通过判别挖掘算法将所选零件称为选择性零件。其次,建立了量化零件可辨性的通用有效评估标准,这导致了联合选择过程。为了分类,基于整体对象和选择性零件构造特征集合。实验结果表明,在加州理工学院UCSD鸟类(CUB)数据集上,选择性零件对鸟类进行细粒度识别特别有效。

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