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Main Authors: Li, Zhuoying, Wan, Bohua, Mu, Cong, Zhao, Ruzhang, Qiu, Shushan, Yan, Chao
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2405.09582
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author Li, Zhuoying
Wan, Bohua
Mu, Cong
Zhao, Ruzhang
Qiu, Shushan
Yan, Chao
author_facet Li, Zhuoying
Wan, Bohua
Mu, Cong
Zhao, Ruzhang
Qiu, Shushan
Yan, Chao
contents Domain adaptation is pivotal for enabling deep learning models to generalize across diverse domains, a task complicated by variations in presentation and cognitive nuances. In this paper, we introduce AD-Aligning, a novel approach that combines adversarial training with source-target domain alignment to enhance generalization capabilities. By pretraining with Coral loss and standard loss, AD-Aligning aligns target domain statistics with those of the pretrained encoder, preserving robustness while accommodating domain shifts. Through extensive experiments on diverse datasets and domain shift scenarios, including noise-induced shifts and cognitive domain adaptation tasks, we demonstrate AD-Aligning's superior performance compared to existing methods such as Deep Coral and ADDA. Our findings highlight AD-Aligning's ability to emulate the nuanced cognitive processes inherent in human perception, making it a promising solution for real-world applications requiring adaptable and robust domain adaptation strategies.
format Preprint
id arxiv_https___arxiv_org_abs_2405_09582
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle AD-Aligning: Emulating Human-like Generalization for Cognitive Domain Adaptation in Deep Learning
Li, Zhuoying
Wan, Bohua
Mu, Cong
Zhao, Ruzhang
Qiu, Shushan
Yan, Chao
Computer Vision and Pattern Recognition
Image and Video Processing
Domain adaptation is pivotal for enabling deep learning models to generalize across diverse domains, a task complicated by variations in presentation and cognitive nuances. In this paper, we introduce AD-Aligning, a novel approach that combines adversarial training with source-target domain alignment to enhance generalization capabilities. By pretraining with Coral loss and standard loss, AD-Aligning aligns target domain statistics with those of the pretrained encoder, preserving robustness while accommodating domain shifts. Through extensive experiments on diverse datasets and domain shift scenarios, including noise-induced shifts and cognitive domain adaptation tasks, we demonstrate AD-Aligning's superior performance compared to existing methods such as Deep Coral and ADDA. Our findings highlight AD-Aligning's ability to emulate the nuanced cognitive processes inherent in human perception, making it a promising solution for real-world applications requiring adaptable and robust domain adaptation strategies.
title AD-Aligning: Emulating Human-like Generalization for Cognitive Domain Adaptation in Deep Learning
topic Computer Vision and Pattern Recognition
Image and Video Processing
url https://arxiv.org/abs/2405.09582