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首页> 外文期刊>IEEE Transactions on Circuits and Systems for Video Technology >Fast Fine-Grained Image Classification via Weakly Supervised Discriminative Localization
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Fast Fine-Grained Image Classification via Weakly Supervised Discriminative Localization

机译:通过弱监督判别定位的快速细粒度图像分类

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摘要

Fine-grained image classification is to recognize hundreds of subcategories in each basic-level category. Existing methods employ discriminative localization to find the key distinctions between similar subcategories. However, they generally have two limitations: 1) discriminative localization relies on region proposal methods to hypothesize the locations of discriminative regions, which are time-consuming and the bottleneck of improving classification speed and 2) the training of discriminative localization depends on object or part annotations which are heavily labor-consuming and the obstacle of marching toward practical application. It is highly challenging to address the two limitations simultaneously, while existing methods only focus on one of them. Therefore, we propose a weakly supervised discriminative localization approach (WSDL) for fast fine-grained image classification to address the two limitations at the same time, and its main advantages are: 1) multi-level attention guided localization learning is proposed to localize discriminative regions with different focuses automatically, without using object and part annotations, avoiding the labor consumption. Different level attentions focus on different characteristics of the image, which are complementary and boost classification accuracy and 2) n-pathway end-to-end discriminative localization network is proposed to improve classification speed, which simultaneously localizes multiple different discriminative regions for one image to boost classification accuracy, and shares full-image convolutional features generated by a region proposal network to accelerate the process of generating region proposals as well as reduce the computation of convolutional operation. Both are jointly employed to simultaneously improve classification speed and eliminate dependence on object and part annotations. Comparing with state-of-the-art methods on two widely used fine-grained image classification data sets, our WSDL approach achieves the best accuracy and the efficiency of classification.
机译:细粒度的图像分类是要识别每个基本级别类别中的数百个子类别。现有方法采用判别式定位来找到相似子类别之间的关键区别。但是,它们通常有两个局限性:1)判别性本地化依靠区域提议方法来假设判别性区域的位置,这既费时又会提高分类速度的瓶颈; 2)判别性本地化的训练取决于对象或零件注释非常耗费劳力,是迈向实际应用的障碍。同时解决这两个限制是极富挑战性的,而现有方法仅关注其中之一。因此,我们针对快速细粒度图像分类提出了一种弱监督的判别定位方法(WSDL),以同时解决这两个局限性,其主要优点是:1)提出了多层次的注意力导向的定位学习来定位判别方法无需使用对象和零件批注的自动聚焦区域的不同,避免了人工的浪费不同层次的注意力集中在图像的不同特征上,这些特征是互补的并提高了分类精度; 2)提出了n路径端到端判别定位网络,以提高分类速度,同时将一个图像的多个不同判别区域定位到提高分类精度,并共享区域提议网络生成的全图像卷积特征,以加快生成区域提议的过程,并减少卷积运算的计算量。两者共同使用可同时提高分类速度并消除对对象和零件注释的依赖。与两个广泛使用的细粒度图像分类数据集的最新技术相比,我们的WSDL方法实现了最佳的准确性和分类效率。

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