Blind compressed sensing using sparsifying transforms

S. Ravishankar, Y. Bresler
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引用次数: 8

Abstract

Compressed sensing exploits the sparsity of images or image patches in a transform domain or synthesis dictionary to reconstruct images from undersampled measurements. In this work, we focus on blind compressed sensing, where the underlying sparsifying transform is a priori unknown, and propose a framework to simultaneously reconstruct both the image and the transform from highly undersampled measurements. The proposed block coordinate descent type algorithm involves efficient updates. Importantly, we prove that although the proposed formulation is highly nonconvex, our algorithm converges to the set of critical points of the objective defining the formulation. We illustrate the promise of the proposed framework for magnetic resonance image reconstruction from highly undersampled k-space measurements. As compared to previous methods involving fixed sparsifying transforms, or adaptive synthesis dictionaries, our approach is much faster, while also providing promising image reconstructions.
使用稀疏化变换的盲压缩感知
压缩感知利用变换域或合成字典中的图像或图像补丁的稀疏性从欠采样测量中重建图像。在这项工作中,我们专注于盲压缩感知,其中底层稀疏化变换是先验未知的,并提出了一个框架,可以同时从高度欠采样的测量中重建图像和变换。提出的块坐标下降型算法具有更新效率高的特点。重要的是,我们证明了尽管所提出的公式是高度非凸的,但我们的算法收敛于定义该公式的目标的临界点集合。我们说明了从高度欠采样k空间测量中提出的磁共振图像重建框架的承诺。与之前涉及固定稀疏化变换或自适应合成字典的方法相比,我们的方法要快得多,同时也提供了有希望的图像重建。
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