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基于学习的压缩感知红外图像超分辨率方法

Learning-Based Compressed Sensing for Infrared Image Super Resolution

中文摘要英文摘要

本文提出了一种基于学习的压缩感知红外图像超分辨率成像方法。首先,我们利用Toeplitz矩阵作为重建模型的感知矩阵。和传统方法比较,我们提出的方法只用了单个字典,而传统的方法需要两个字典。Toeplitz矩阵使得算法更加节省时间,具有较高的运算效率。其次,训练样本被自适应的分成了许多类,分类的依据为纹理特征。基于此,我们提出来一种自适应的分类方法,这种方法跟传统的k-means方法相比不需要预先估算K。最后,对个子字典被用来重建高分辨率图像。实验结果表明提出的方法比现有的方法在性能上优越。

his paper presents an infrared image super-resolution method based on compressed sensing (CS). First, the reconstruction model under the CS framework is established and a Toeplitz matrix is selected as the sensing matrix. Compared with traditional learning-based methods, the proposed method uses a set of sub-dictionaries instead of two coupled dictionaries to recover high resolution (HR) images. And Toeplitz sensing matrix allows the proposed method time-efficient. Second, all training samples are divided into several feature spaces by using the proposed adaptive k-means classification method, which is more accurate than the standard k-means method. On the basis of this approach, a complex nonlinear mapping from the HR space to low resolution (LR) space can be converted into several compact linear mappings. Finally, the relationships between HR and LR image patches can be obtained by multi-sub-dictionaries and HR infrared images are reconstructed by the input LR images and multi-sub-dictionaries. The experimental results show that the proposed method is quantitatively and qualitatively more effective than other state-of-the-art methods.

吴少迟、陈钱、赵耀、隋修宝

光电子技术电子技术应用遥感技术

超分辨率压缩感知oeplitz矩阵多个子字典

Super resolutionCompressed SensingToeplitz matrixMulti-sub-dictionaries

吴少迟,陈钱,赵耀,隋修宝.基于学习的压缩感知红外图像超分辨率方法[EB/OL].(2015-12-07)[2025-08-16].http://www.paper.edu.cn/releasepaper/content/201512-308.点此复制

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