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Wavelet-Based Compressed Sensing Using Low Frequency Coefficients

机译:基于小波的压缩检测,使用低频系数

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Signal models such as wavelet trees, block sparsity and statistical models are integrated into compressed sensing (CS) recovery algorithms in order to improve recovery accuracy and decrease the number of measurements. However, there are many constraints in practical applications. This paper introduces a new simple and efficient model based on the fact that low frequency coefficients are more important than others in wavelet domain. Furthermore, a degradation algorithm is designed to convert two-dimensional images to one-dimensional signals. This process makes the representations of images more sparse under a fixed wavelet basis. The proposed model and the degradation algorithm are successfully incorporated into two CS algorithms, including iteratively reweighted l1 minimization (IRL1) and iterative hard thresholding (IHT). Extensive experiments demonstrate that the proposed algorithms are significantly effective to improve recovery accuracy.
机译:诸如小波树,块稀疏性和统计模型的信号模型被集成到压缩检测(CS)恢复算法中,以提高恢复精度并降低测量的数量。 但是,实际应用中存在许多限制。 本文介绍了一种新的简单高效模型,基于低频系数比小波域中的实例更重要。 此外,劣化算法旨在将二维图像转换为一维信号。 此过程使图像的表示在固定小波下更稀疏。 所提出的模型和劣化算法成功地结合到两个CS算法中,包括迭代地重复的L1最小化(IRL1)和迭代硬阈值(IHT)。 广泛的实验表明,所提出的算法显着有效地提高恢复精度。

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