TriGAN: image-to-image translation for multi-source domain adaptation

MACHINE VISION AND APPLICATIONS(2021)

引用 13|浏览101
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摘要
Most domain adaptation methods consider the problem of transferring knowledge to the target domain from a single-source dataset. However, in practical applications, we typically have access to multiple sources. In this paper we propose the first approach for multi-source domain adaptation (MSDA) based on generative adversarial networks. Our method is inspired by the observation that the appearance of a given image depends on three factors: the domain , the style (characterized in terms of low-level features variations) and the content . For this reason, we propose to project the source image features onto a space where only the dependence from the content is kept, and then re-project this invariant representation onto the pixel space using the target domain and style. In this way, new labeled images can be generated which are used to train a final target classifier. We test our approach using common MSDA benchmarks, showing that it outperforms state-of-the-art methods.
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关键词
Unsupervised domain adaptation,Generative adversarial network,Image classification,Image-to-image translation
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