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Weakly Supervised Learning of Part Selection Model with Spatial Constraints for Fine-Grained Image Classification

机译:细粒度图像分类空间约束的零件选择模型弱化学习

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Fine-grained image classification is challenging due to the large intra-class variance and small inter-class variance, aiming at recognizing hundreds of sub-categories belonging to the same basic-level category. Since two different subcategories is distinguished only by the subtle differences in some specific parts, semantic part localization is crucial for fine-grained image classification. Most previous works improve the accuracy by looking for the semantic parts, but rely heavily upon the use of the object or part annotations of images whose labeling are costly. Recently, some researchers begin to focus on recognizing sub-categories via weakly supervised part detection instead of using the expensive annotations. However, these works ignore the spatial relationship between the object and its parts as well as the interaction of the parts, both of them are helpful to promote part selection. Therefore, this paper proposes a weakly supervised part selection method with spatial constraints for fine-grained image classification, which is free of using any bounding box or part annotations. We first learn a whole-object detector automatically to localize the object through jointly using saliency extraction and co-segmentation. Then two spatial constraints are proposed to select the distinguished parts. The first spatial constraint, called box constraint, defines the relationship between the object and its parts, and aims to ensure that the selected parts are definitely located in the object region, and have the largest overlap with the object region. The second spatial constraint, called parts constraint, defines the relationship of the object's parts, is to reduce the parts' overlap with each other to avoid the information redundancy and ensure the selected parts are the most distinguishing parts from other categories. Combining two spatial constraints promotes parts selection significantly as well as achieves a notable improvement on fine-grained image classification. Experimental results on CUB-200-2011 dataset demonstrate the superiority of our method even compared with those methods using expensive annotations.
机译:细粒度图像分类由于大的类内方差和小组间方差挑战,在识别数百个属于同一基本级类别的子类别的目标。由于两个不同的子类仅由某些特定部位的细微差别来区分,语义部分本地化是细粒度的图像分类至关重要。大多数以前的作品提高通过寻找语义零件的精度,但很大程度上依赖于使用图像的对象或部分的注释,其标识是昂贵的。最近,一些研究人员开始关注通过弱监督的一部分检测确认的子类,而不是使用昂贵的注释。然而,这些作品忽略了对象及其零件,以及零件的​​互动之间的空间关系,两者都有助于推动部分选择。因此,本文提出了一种具有用于细粒度图像分类,这是自由使用任何边界框或部分注释的空间约束弱监督部分选择方法。我们首先自动学会一个整体对象检测器通过使用共同提取显着性和共同分割本地化的对象。然后两个空间约束提出以选择分辨部件。第一空间约束,称为盒约束,定义了对象和它的零件,和目标之间的关系,以确保所选择的部分绝对位于对象区域,并具有与所述对象区域最大重叠。第二空间约束,称为部分约束,定义了对象的部分的关系,是为了减少零件彼此重叠,以避免信息的冗余和保证所选择的部分是从其它类中最突出的部分。组合两个空间约束促进部件选择显著以及实现上细粒度图像分类的显着改善。在CUB-200-2011数据集实验结果证明了该方法的优越性,即使使用昂贵的注解这些方法相比。

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