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Gradient-Based Image Recovery Methods From Incomplete Fourier Measurements

机译:不完全傅立叶测量的基于梯度的图像恢复方法

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A major problem in imaging applications such as magnetic resonance imaging and synthetic aperture radar is the task of trying to reconstruct an image with the smallest possible set of Fourier samples, every single one of which has a potential time and/or power cost. The theory of compressive sensing (CS) points to ways of exploiting inherent sparsity in such images in order to achieve accurate recovery using sub-Nyquist sampling schemes. Traditional CS approaches to this problem consist of solving total-variation (TV) minimization programs with Fourier measurement constraints or other variations thereof. This paper takes a different approach. Since the horizontal and vertical differences of a medical image are each more sparse or compressible than the corresponding TV image, CS methods will be more successful in recovering these differences individually. We develop an algorithm called GradientRec that uses a CS algorithm to recover the horizontal and vertical gradients and then estimates the original image from these gradients. We present two methods of solving the latter inverse problem, i.e., one based on least-square optimization and the other based on a generalized Poisson solver. After a thorough derivation of our complete algorithm, we present the results of various experiments that compare the effectiveness of the proposed method against other leading methods.
机译:在诸如磁共振成像和合成孔径雷达之类的成像应用中的主要问题是试图用最小可能的傅立叶样本集重建图像的任务,其中每个样本都具有潜在的时间和/或功率成本。压缩感测(CS)理论指出了利用此类图像中固有稀疏性的方法,以便使用次奈奎斯特采样方案实现准确的恢复。针对该问题的传统CS方法包括解决具有傅立叶测量约束或其其他变化的总变化(TV)最小化程序。本文采用了不同的方法。由于医学图像的水平和垂直差异都比相应的TV图像稀疏或可压缩,因此CS方法将更成功地单独恢复这些差异。我们开发了一种称为GradientRec的算法,该算法使用CS算法恢复水平和垂直渐变,然后从这些渐变中估计原始图像。我们提出了两种解决后一种反问题的方法,即一种基于最小二乘优化的方法,另一种基于广义泊松求解器的方法。在彻底推导了我们完整的算法之后,我们给出了各种实验的结果,这些实验将提出的方法与其他领先方法的有效性进行了比较。

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