This paper presents fine-grained data augmentation, a data augmentation method for deep neural network training that can be applied to tasks with a small number of images, such as in the medical field or vision-inspection tasks. For small-datasets, the number of images per class is usually unbalanced and overfitting occurs when training small-datasets. In this paper, data augmentation skills using generative adversarial network for image super-resolution tasks is presented. Data augmentation with generative adversarial network for image super-resolution tasks retains the overall shape and form, but changes only the details of features. The proposed method achieves better performance when training CIFAR-100 and CUB-200-2011 datasets from scratch. The proposed method is being actively developed to further improve the performance of image classification and will be applicable to object detection.
Leipu WangJun SunJingming SunJunpeng Yu
Oleksandr ChaikovskyiArtem VolokytaArtemi KyrianovHeorhii Loutskii
Sung-Won MoonJiwon LeeJung-Soo LeeAh Reum OhDo-Won NamWonyoung Yoo
Maximilian TschuchnigCornelia FernerStefan Wegenkittl