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Reconstruction for block-based compressive sensing of image with reweighted double sparse constraint

机译:基于块的块压缩感应的重新重复双稀疏约束重建

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Abstract Block compressive sensing reduces the computational complexity by dividing the image into multiple patches for processing, but the performance of the reconstruction algorithm is decreased. Generally, the reconstruction algorithm improves the quality of reconstructed image by adding various constraints and regularization terms, namely prior information. In this paper, a reweighted double sparse constraint reconstruction model which combines the residual sparsity and ?1 regularization term is proposed. The residual sparsity aims to exploit the nonlocal similarity of image patches, and the ?1 regularization term is used to utilize the local sparsity of image patches. The resulting model is solved under the frame of split Bregman iteration (SBI). A large number of experiments show that the algorithm in this paper can reconstruct the original image efficiently and is comparable to the current representative compressive sensing reconstruction algorithm.
机译:摘要块压缩检测通过将图像划分为多个修补程序来降低计算复杂性以进行处理,但重建算法的性能降低。通常,重建算法通过添加各种约束和正则化术语来提高重建图像的质量,即先前的信息。在本文中,提出了一种重复的双稀痕约束重建模型,其结合了剩余稀疏性和α的正则化术语。残余稀疏性旨在利用图像斑块的非识别性相似性,并且使用?1个正则化术语用于利用图像斑块的局部稀疏性。在分割Bregman迭代(SBI)的框架下解决了所得模型。大量实验表明,本文中的算法可以有效地重建原始图像,并且与当前代表性的压缩传感重建算法相当。

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