强度图像对正则卷积的影响

K. Koti, Guna Sekhar Sajja, Dennis Arias-Chávez, R. Rajasekaran, Regin Rajan, D. Vijendra Babu
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引用次数: 0

摘要

图像去模糊是一个常见的修复问题。然而,现有的深度学习方法存在泛化和可解释性问题。这项研究工作提供了一个框架,能够在这个项目中进行规范的、基于信心的降噪,以解决这些问题。该框架是建立在合并两个去噪图像的基础上的,这两个图像都是由相同的噪声输入产生的。其中一个使用通用算法(例如高斯算法)去噪,对输入图像做很少的假设,并泛化到所有情况。另一个使用深度学习对数据进行降噪,并在已知数据集上表现良好。此外,本研究还提出了一系列在频域中无缝融合两分量的策略。此外,这项研究工作提出了一种融合技术,可以保护用户免受分布外输入的影响,并估计深度学习去噪器的置信度,以允许用户解释结果。此外,本研究工作将通过实验说明所建议的框架在各种用例中的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Impact of Strength Picture on Convolving with Regulation
Image Deblurring is a common restoration issue. However, existing deep learning approaches have generalization and interpretability issues. This research work provides a framework capable of regulated, confidence-based noise removal in this project to address these issues. The framework is built on merging two denoised images, both of which were generated from the same noisy input. One of the two is denoised using generic algorithms (for example, Gaussian), making few assumptions about the input images and generalizing across all cases. The other uses deep learning to denoise data and performs well on known datasets. Also, this research work presents a series of strategies for seamlessly fusing the two components in the frequency domain. Also, this research work presents a fusion technique that protects users from out-of-distribution inputs and estimates the confidence of a deep learning denoiser to allow users to interpret the result. Further, this research work will illustrate the efficacy of the suggested framework in various use cases through experiments.
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