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Target Cropping: A New Data Augmentation Method of Fine-Grained Image Classification

机译:目标裁剪:一种新的细粒图像分类数据增强方法

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In this paper, we propose a novel data augmentation method of fine-grained image classification named target cropping. Previous work has demonstrated the effectiveness of data augmentation through simple technique, such as random cropping, image rotating and image flipping. But for fine-grained classification, due to its inter-class similarity and intra-class differences, traditional random cropping does not pay much attention to the discriminative regions and even may crop out the regions that have a critical impact on the classification results. To solve this problem, we propose target cropping which uses class activation maps to locate discriminative region. Compared with random cropping, our method significantly improves classification accuracy for all the tested datasets. For example, classification accuracy is improved from 71.1% to 73.9% for CUB200-2011 dataset with VGG-16 and from 77.2% to 79.0% in the FGVC-Aircraft dataset. It is a significant improvement in fine-grained image classification field.
机译:在本文中,我们提出了一种名为目标裁剪的细粒度图像分类的新型数据增强方法。以前的工作通过简单的技术证明了数据增强的有效性,例如随机裁剪,图像旋转和图像翻转。但是对于细粒度的分类,由于其阶级相似性和阶级差异,传统的随机作物不会对歧视区域的关注不足,甚至可能裁剪对分类结果产生严重影响的区域。为了解决这个问题,我们提出了目标裁剪,它使用类激活映射来定位判别区域。与随机裁剪相比,我们的方法显着提高了所有测试数据集的分类准确性。例如,CUB200-2011数据集的分类精度从VGG-16的数据集增加到71.1%至73.9%,并且在FGVC-Firctial数据集中的77.2%至79.0%。它是细粒度图像分类领域的显着改进。

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