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Generative Adversarial Networks as an Advanced Data Augmentation Technique for MRI Data

机译:生成对抗网络作为MRI数据的高级数据增强技术

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This paper presents a new methodology for data augmentation through the use of Generative Adversarial Networks. Traditional augmentation strategies are severely limited, especially in tasks where the images follow strict standards, as is the case in medical datasets. Experiments conducted on the ADNI dataset prove that augmentation through GANs outperforms traditional methods by a large margin, based both on the validation accuracy and the models' generalization capability on a holdout test set. Although traditional data augmentation did not seem to aid the classification process in any way, by adding GAN-based augmentation an increase of 11.68% in accuracy was achieved. Furthermore, by combining traditional with GAN-based augmentation schemes, even higher accuracies can be reached.
机译:本文通过使用生成的对抗网络介绍了数据增强的新方法。传统的增强策略严重有限,特别是在图像遵循严格标准的任务中,就像医疗数据集中的情况一样。在Adni DataSet上进行的实验证明,通过GANS的增强超越传统方法,既通过守恒试验集的验证精度和模型的泛化能力,均以大型余量。虽然传统的数据增强似乎并没有以任何方式帮助分类过程,但通过增加GaN的增强,达到了11.68%的准确性。此外,通过将传统与GaN的增强方案组合,可以达到更高的精度。

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