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具有元调优的自适应图像去模糊卷积神经网络

Adaptive Image Deblurring Convolutional Neural Network with Meta-Tuning.

作者信息

Ho Quoc-Thien, Duong Minh-Thien, Lee Seongsoo, Hong Min-Cheol

机构信息

Department of Information and Telecommunication Engineering, Soongsil University, Seoul 06978, Republic of Korea.

Department of Automatic Control, Ho Chi Minh City University of Technology and Education, Ho Chi Minh City 70000, Vietnam.

出版信息

Sensors (Basel). 2025 Aug 21;25(16):5211. doi: 10.3390/s25165211.

Abstract

Motion blur is a complex phenomenon caused by the relative movement between an observed object and an imaging sensor during the exposure time, resulting in degradation in the image quality. Deep-learning-based methods, particularly convolutional neural networks (CNNs), have shown promise in motion deblurring. However, the small kernel sizes of CNNs limit their ability to achieve optimal performance. Moreover, supervised deep-learning-based deblurring methods often exhibit overfitting in their training datasets. Models trained on widely used synthetic blur datasets frequently fail to generalize in other blur domains in real-world scenarios and often produce undesired artifacts. To address these challenges, we propose the Spatial Feature Selection Network (SFSNet), which incorporates a Regional Feature Extractor (RFE) module to expand the receptive field and effectively select critical spatial features in order to improve the deblurring performance. In addition, we present the BlurMix dataset, which includes diverse blur types, as well as a meta-tuning strategy for effective blur domain adaptation. Our method enables the network to rapidly adapt to novel blur distributions with minimal additional training, and thereby improve generalization. The experimental results show that the meta-tuning variant of the SFSNet eliminates unwanted artifacts and significantly improves the deblurring performance across various blur domains.

摘要

运动模糊是一种复杂的现象,它是由在曝光时间内被观察物体与成像传感器之间的相对运动引起的,会导致图像质量下降。基于深度学习的方法,特别是卷积神经网络(CNN),在运动去模糊方面已显示出前景。然而,CNN的小内核大小限制了它们实现最佳性能的能力。此外,基于监督深度学习的去模糊方法在其训练数据集中常常表现出过拟合。在广泛使用的合成模糊数据集上训练的模型在现实场景中的其他模糊域中经常无法泛化,并且常常产生不期望的伪像。为了应对这些挑战,我们提出了空间特征选择网络(SFSNet),它包含一个区域特征提取器(RFE)模块来扩大感受野并有效选择关键空间特征,以提高去模糊性能。此外,我们提出了BlurMix数据集,它包含多种模糊类型,以及一种用于有效模糊域适应的元调优策略。我们的方法使网络能够以最少的额外训练快速适应新的模糊分布,从而提高泛化能力。实验结果表明,SFSNet的元调优变体消除了不需要的伪像,并显著提高了在各种模糊域中的去模糊性能。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/c2c5/12390154/8e0c08745a31/sensors-25-05211-g001.jpg

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