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Adaptive dictionary learning in sparse gradient domain for CT reconstruction

机译:稀疏梯度域中的自适应字典学习用于CT重建

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Image recovery from undersampled data has always been a challenging and fascinating task due to its implicit ill-posed nature and significance accompanied with the emerging compressed sensing (CS) theory. This paper proposes a novel Gradient based Dictionary Learning method for CT image Reconstruction (GradDL-CT), which alleviates the drawback of the popular total variation (TV) regularization by employing dictionary learning technique. Specifically, we firstly train dictionaries from the horizontal and vertical gradients of the image respectively, and then reconstruct the desired image using the sparse representations of both derivatives, exploiting gradient magnitude image sparsity for reduction in the number of projections or the X-ray dose. Preliminary results on phantom and real CT images demonstrate that the proposed method can efficiently recover images and presents advantages over the current state-of-the-art reconstruction approaches.
机译:从欠采样数据中恢复图像一直是一项具有挑战性和令人着迷的任务,这是因为其隐含的不适定的性质和重要性以及新兴的压缩传感(CS)理论。本文提出了一种新颖的基于梯度的CT图像重建字典学习方法(GradDL-CT),该方法通过采用字典学习技术缓解了流行的总变异(TV)正则化的弊端。具体来说,我们首先分别从图像的水平和垂直梯度训练字典,然后使用两种导数的稀疏表示重建所需的图像,并利用梯度幅度图像稀疏性来减少投影数量或X射线剂量。幻像和真实CT图像的初步结果表明,所提出的方法可以有效地恢复图像,并具有优于当前最新技术的重建方法的优势。

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