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An image reconstruction algorithm based on compressed sensing using conjugate gradient

机译:基于共轭梯度压缩感知的图像重建算法

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A new image reconstruction algorithm based on compressed sensing using conjugate gradient is proposed for the first time in this paper. Compressed sensing is a technique for acquiring and reconstructing a signal or image utilizing the prior knowledge that is sparse or compressible. During the past several decades scholars have made all sorts of guesses about the prior Pr(x) for images in order to find its sparse representation and also proposed some available algorithms like matching pursuit (MP) and orthogonal matching pursuit (OMP) algorithms. Some reconstruction algorithms used the convex relaxation method, but the conjugate gradient is a method with simpler iterative process and less memory requirement compared with the least square and Newton iteration. Simulation results show that this image reconstruction algorithm based on compressed sensing using conjugate gradient gets better performance on time and PSNR than OMP algorithm.
机译:本文首次提出了一种基于共轭梯度压缩感知的图像重建新算法。压缩感测是一种利用稀疏或可压缩的先验知识来获取和重建信号或图像的技术。在过去的几十年中,学者们对图像的先前Pr(x)进行了各种猜测,以找到其稀疏表示,并提出了一些可用的算法,例如匹配追踪(MP)和正交匹配追踪(OMP)算法。一些重构算法使用凸松弛法,但是与最小二乘和牛顿迭代相比,共轭梯度是一种迭代过程更简单,内存需求更少的方法。仿真结果表明,这种基于共轭梯度压缩感知的图像重建算法在时间和PSNR上均优于OMP算法。

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