2023
DOI: 10.3390/app132111825
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Bidirectional-Feature-Learning-Based Adversarial Domain Adaptation with Generative Network

Chansu Han,
Hyunseung Choo,
Jongpil Jeong

Abstract: Studying domain adaptation is a recent research trend. Generally, many generative models that researchers have studied perform well on training data from a specific domain. However, their ability to be generalized to other domains might be limited. Therefore, a growing body of research has utilized domain adaptation techniques to address the problem of generative models being vulnerable to input from other domains. In this paper, we focused on generative models and representation learning. Generative models ha… Show more

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