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논문 기본 정보

자료유형
학술저널
저자정보
Bayarchimeg Kalina (Daejeon University) Youngbok Cho (Daejeon University)
저널정보
한국정보통신학회JICCE Journal of information and communication convergence engineering Journal of information and communication convergence engineering Vol.21 No.2
발행연도
2023.6
수록면
139 - 144 (6page)

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Engineers prefer deep neural networks (DNNs) for solving computer vision problems. However, DNNs pose two major problems. First, neural networks require large amounts of well-labeled data for training. Second, the covariate shift problem is common in computer vision problems. Domain adaptation has been proposed to mitigate this problem. Recent work on adversarial-learning-based unsupervised domain adaptation (UDA) has explained transferability and enabled the model to learn robust features. Despite this advantage, current methods do not guarantee the distinguishability of the latent space unless they consider class-aware information of the target domain. Furthermore, source and target examples alone cannot efficiently extract domain-invariant features from the encoded spaces. To alleviate the problems of existing UDA methods, we propose the mixup regularization in adversarial discriminative domain adaptation (ADDA) method. We validated the effectiveness and generality of the proposed method by performing experiments under three adaptation scenarios: MNIST to USPS, SVHN to MNIST, and MNIST to MNIST-M.

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Abstract
I. INTRODUCTION
II. RELATED WORK
III. THE PROPOSED METHODS
IV. EXPERIMENTS AND RESULTS
V. CONCLUSIONS
REFERENCES

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