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Image to Image Translation for Domain Adaptation

机译:图像到域适应的图像翻译

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We propose a general framework for unsupervised domain adaptation, which allows deep neural networks trained on a source domain to be tested on a different target domain without requiring any training annotations in the target domain. This is achieved by adding extra networks and losses that help regularize the features extracted by the backbone encoder network. To this end we propose the novel use of the recently proposed unpaired image-to-image translation framework to constrain the features extracted by the encoder network. Specifically, we require that the features extracted are able to reconstruct the images in both domains. In addition we require that the distribution of features extracted from images in the two domains are indistinguishable. Many recent works can be seen as specific cases of our general framework. We apply our method for domain adaptation between MNIST, USPS, and SVHN datasets, and Amazon, Webcam and DSLR Office datasets in classification tasks, and also between GTA5 and Cityscapes datasets for a segmentation task. We demonstrate state of the art performance on each of these datasets.
机译:我们向无监督域适应提出了一般框架,这允许在源域上培训的深神经网络在不同的目标域上进行测试,而不需要目标域中的任何培训注释。这是通过添加额外的网络和损耗来实现,有助于规范骨干编码器网络提取的功能。为此,我们提出了最近提出的未配对图像到图像转换框架的新颖使用,以限制由编码器网络提取的特征。具体地,我们要求提取的特征能够在两个域中重建图像。此外,我们要求从两个域中的图像中提取的特征分布无法区分。许多最近的作品可以被视为我们一般框架的具体情况。我们在分类任务中应用了Mnist,USPS和SVHN数据集之间的域适应和Amazon,网络摄像头和DSLR Office数据集,以及在GTA5和CityScapes数据集之间进行分段任务。我们展示了每个数据集中的每一个的最新性能。

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