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Self-adaptive sampling rate assignment and image reconstruction via combination of structured sparsity and non-local total variation priors

机译:通过结构化稀疏性和非局部总变化先验相结合的自适应采样率分配和图像重建

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摘要

Compressive sensing (CS) is an emerging approach for acquisition of sparse or compressible signals. For natural images, block compressive sensing (BCS) has been designed to reduce the size of sensing matrix and the complexity of sampling and reconstruction. On the other hand, image blocks with varying structures are too different to share the same sampling rate and sensing matrix. Motivated by this, a novel framework of adaptive acquisition and reconstruction is proposed to assign sampling rate adaptively. The framework contains three aspects. First, a small part of sampling rate is employed to pre-sense each block and a novel approach is proposed to estimate its compressibility only from pre-sensed measurements. Next, two assignment schemes are proposed to assign the other part of the sampling rate adaptively to each block based on its estimated compressibility. A higher sampling rate is assigned to incompressible blocks but a lower one to compressible ones. The sensing matrix is constructed based on the assigned sampling rates. The pre-sensed measurements and the adaptive ones are concatenated to form the final measurements. Finally, it is proposed that the reconstruction is modeled as a multi-objects optimization problem which involves the structured sparsity and the non-local total variation prior together. It is simplified into a 3-stage alternating optimization problem and is solved by an augmented Lagrangian method. Experiments on four categories of real natural images and medicine images demonstrate that the proposed framework captures local and nonlocal structures and outperforms the state-of-the-art methods.
机译:压缩感测(CS)是一种用于获取稀疏或可压缩信号的新兴方法。对于自然图像,已设计了块压缩感测(BCS)以减小感测矩阵的大小以及采样和重建的复杂性。另一方面,具有变化结构的图像块差异太大,无法共享相同的采样率和感测矩阵。为此,提出了一种自适应采集与重构的新框架,以自适应地分配采样率。该框架包含三个方面。首先,采用一小部分采样率来预感测每个块,并提出了一种仅根据预感测来估计其可压缩性的新颖方法。接下来,提出了两种分配方案,根据其估计的可压缩性,将采样率的另一部分自适应地分配给每个块。较高的采样率分配给不可压缩的块,而较低的采样率分配给可压缩的块。基于分配的采样率构造感测矩阵。预先测量的测量值和自适应的测量值连接起来形成最终的测量值。最后,提出将重建建模为一个多对象优化问题,该问题涉及结构化稀疏性和先验非局部总变化。将其简化为三阶段交替优化问题,并通过增强拉格朗日方法进行求解。对四类真实自然图像和医学图像进行的实验表明,该框架可捕获局部和非局部结构,并且性能优于最新方法。

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