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Main Authors: Zhang, Xuyu, Huang, Haofan, Zhang, Dawei, Zhuang, Songlin, Han, Shensheng, Lai, Puxiang, Liu, Honglin
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2410.11207
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author Zhang, Xuyu
Huang, Haofan
Zhang, Dawei
Zhuang, Songlin
Han, Shensheng
Lai, Puxiang
Liu, Honglin
author_facet Zhang, Xuyu
Huang, Haofan
Zhang, Dawei
Zhuang, Songlin
Han, Shensheng
Lai, Puxiang
Liu, Honglin
contents Deep learning has been extensively used in various fields, such as phase imaging, 3D imaging reconstruction, phase unwrapping, and laser speckle reduction, particularly for complex problems that lack analytic models. Its data-driven nature allows for implicit construction of mathematical relationships within the network through training with abundant data. However, a critical challenge in practical applications is the generalization issue, where a network trained on one dataset struggles to recognize an unknown target from a different dataset. In this study, we investigate imaging through scattering media and discover that the mathematical relationship learned by the network is an approximation dependent on the training dataset, rather than the true mapping relationship of the model. We demonstrate that enhancing the diversity of the training dataset can improve this approximation, thereby achieving generalization across different datasets, as the mapping relationship of a linear physical model is independent of inputs. This study elucidates the nature of generalization across different datasets and provides insights into the design of training datasets to ultimately address the generalization issue in various deep learning-based applications.
format Preprint
id arxiv_https___arxiv_org_abs_2410_11207
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Cross-Dataset Generalization in Deep Learning
Zhang, Xuyu
Huang, Haofan
Zhang, Dawei
Zhuang, Songlin
Han, Shensheng
Lai, Puxiang
Liu, Honglin
Machine Learning
Optics
Deep learning has been extensively used in various fields, such as phase imaging, 3D imaging reconstruction, phase unwrapping, and laser speckle reduction, particularly for complex problems that lack analytic models. Its data-driven nature allows for implicit construction of mathematical relationships within the network through training with abundant data. However, a critical challenge in practical applications is the generalization issue, where a network trained on one dataset struggles to recognize an unknown target from a different dataset. In this study, we investigate imaging through scattering media and discover that the mathematical relationship learned by the network is an approximation dependent on the training dataset, rather than the true mapping relationship of the model. We demonstrate that enhancing the diversity of the training dataset can improve this approximation, thereby achieving generalization across different datasets, as the mapping relationship of a linear physical model is independent of inputs. This study elucidates the nature of generalization across different datasets and provides insights into the design of training datasets to ultimately address the generalization issue in various deep learning-based applications.
title Cross-Dataset Generalization in Deep Learning
topic Machine Learning
Optics
url https://arxiv.org/abs/2410.11207