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A Domain Agnostic Normalization Layer for Unsupervised Adversarial Domain Adaptation

机译:无监督对抗域自适应的域不可知归一化层

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We propose a normalization layer for unsupervised domain adaption in semantic scene segmentation. Normalization layers are known to improve convergence and generalization and are part of many state-of-the-art fully-convolutional neural networks. We show that conventional normalization layers worsen the performance of current Unsupervised Adversarial Domain Adaption (UADA), which is a method to improve network performance on unlabeled data sets and the focus of our research. Therefore, we propose a novel Domain Agnostic Normalization layer and thereby unlock the benefits of normalization layers for unsupervised adversarial domain adaptation. In our evaluation, we adapt from the synthetic GTA5 data set to the real Cityscapes data set, a common benchmark experiment, and surpass the state-of-the-art. As our normalization layer is domain agnostic at test time, we furthermore demonstrate that UADA using Domain Agnostic Normalization improves performance on unseen domains, specifically on Apolloscape and Mapillary.
机译:我们为语义场景分割中的无监督域适应提出了一个归一化层。众所周知,归一化层可以提高收敛性和泛化性,并且是许多先进的全卷积神经网络的一部分。我们表明,常规的归一化层会恶化当前的无监督对抗域自适应(UADA)的性能,这是一种提高未标记数据集网络性能的方法,也是我们研究的重点。因此,我们提出了一种新颖的领域不可知归一化层,从而释放了归一化层在无监督对抗域自适应中的优势。在我们的评估中,我们从合成的GTA5数据集改编为实际的Cityscapes数据集(一个通用的基准实验),并超过了最新技术。由于我们的规范化层在测试时是域不可知的,因此我们进一步证明,使用域不可知归一化的UADA可以提高看不见的域(尤其是Apolloscape和Mapillary)的性能。

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