论文标题
鲁棒域适应和概括的对抗和随机转换
Adversarial and Random Transformations for Robust Domain Adaptation and Generalization
论文作者
论文摘要
数据增强已被广泛用于改善训练深神经网络中的概括。最近的作品表明,使用最坏情况转换或对抗性增强策略可以显着提高准确性和鲁棒性。但是,由于图像转换的不可分割的属性,必须应用搜索算法,例如增强学习或进化策略,这对于大规模问题在计算上是不可实用的。在这项工作中,我们表明,通过简单地应用一致性训练,可以随机数据增加,可以获得域适应性(DA)的最新结果和概括(DG)。为了进一步提高对抗性示例的准确性和鲁棒性,我们提出了一种基于空间变压器网络(STN)的可区分对抗数据增强方法。基于对抗性和随机变换的组合方法的表现优于多个DA和DG基准数据集上的最新方法。此外,提出的方法显示出对损坏的理想鲁棒性,这也可以在常用数据集上进行验证。
Data augmentation has been widely used to improve generalization in training deep neural networks. Recent works show that using worst-case transformations or adversarial augmentation strategies can significantly improve the accuracy and robustness. However, due to the non-differentiable properties of image transformations, searching algorithms such as reinforcement learning or evolution strategy have to be applied, which are not computationally practical for large scale problems. In this work, we show that by simply applying consistency training with random data augmentation, state-of-the-art results on domain adaptation (DA) and generalization (DG) can be obtained. To further improve the accuracy and robustness with adversarial examples, we propose a differentiable adversarial data augmentation method based on spatial transformer networks (STN). The combined adversarial and random transformations based method outperforms the state-of-the-art on multiple DA and DG benchmark datasets. Besides, the proposed method shows desirable robustness to corruption, which is also validated on commonly used datasets.