基于SL0算法压缩感知的图像重构新频域Tikhonov正则化

Pham Hong Ha, W. Lee, V. Patanavijit
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引用次数: 2

摘要

近年来,基于少量测量分量的图像重建是压缩感知(CS)的一个有用应用。在CS领域,SL0算法被认为是最快、最精确的算法之一,但该算法在噪声环境下非常不可靠。遗憾的是,目前还没有研究解决这种SL0不适定条件,因此SL0算法只能在有限的应用中应用。为了解决SL0不适定条件,本文提出了一种新的基于SL0技术的图像重构算法正则化技术,在频域估计CS实现的重构图像。该算法结合了新的频域Tikhonov正则化技术,减少和约束了由于该病态问题而可能重构图像的空间。通过与所提出的正则化技术的配合,在噪声污染图像特性的情况下,图像重建算法的解具有更好的性能和稳定性。实验结果表明,所提出的Tikhonov正则化技术在不同噪声功率的高斯和非高斯噪声模型(如AWGN、泊松噪声、Salt & Pepper噪声和斑点噪声)下都能很好地应用于Lena、Resolution_Chat和Cameraman等噪声图像。
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The Novel Frequency Domain Tikhonov Regularization for an Image Reconstruction Based on Compressive Sensing with SL0 Algorithm
In this recent year, an image reconstruction based on small number of measured components is a useful application of Compressive Sensing (CS). In the field of CS, SL0 algorithm is known as one of the fastest and most accurate algorithm but this algorithm is very unreliable under the noisy environment. Unfortunately, there are no researches for solving this SL0 ill-posed condition therefore the SL0 algorithm can only apply on limited applications. To solve the SL0 ill-posed condition, this paper proposes a novel regularization technique for the image reconstruction algorithm based on the SL0 technique to estimate the reconstructed image in the frequency domain for CS implementations. The novel frequency domain Tikhonov regularization technique is cooperated in this SL0 algorithm for reducing and constraining the space of possible reconstructed image due to this ill-posed problem. By cooperating the proposed regularization technique, the solution of the image reconstruction algorithm has better performance and more stable under the noise which contaminates the properties of the image. The experimental result shows that the proposed Tikhonov regularization technique can be well effectively applied on noisy images such as Lena, Resolution_Chat and Cameraman under both Gaussian and Non-Gaussian noise models (such as AWGN, Poisson noise, Salt & Pepper noise and Speckle noise) at different noise powers.
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