In this paper, we present two variations of an algorithm for signal reconstruction from one-bit or two-bit noisy observations of the discrete Fourier transform (DFT). The one-bit observations of the DFT correspond to the sign of its real part, whereas, the two-bit observations of the DFT correspond to the signs of both the real and imaginary parts of the DFT. We focus on images for analysis and simulations, thus using the sign of the 2D-DFT. This choice of the class of signals is inspired by previous works on this problem. For our algorithm, we show that the expected mean squared error (MSE) in signal reconstruction is asymptotically proportional to the inverse of the sampling rate. The samples are affected by additive zero-mean noise of known distribution. We solve this signal estimation problem by designing an algorithm that uses contraction mapping, based on the Banach fixed point theorem. Numerical tests with four benchmark images are provided to show the effectiveness of our algorithm. Various metrics for image reconstruction quality assessment such as PSNR, SSIM, ESSIM, and MS-SSIM are employed. On all four benchmark images, our algorithm outperforms the state-of-the-art in all of these metrics by a significant margin.
翻译:在本文中,我们从离散Fourier变异(DFT)的一比或两比热观测中提出信号重建算法的两种变式。 DFT的一比值观测与其真实部分的符号对应,而DFT的二比值观测与DFT真实部分和想象部分的符号对应。我们侧重于用于分析和模拟的图像,从而使用 2D-DFT 的标志。对信号类别的选择受以前关于该问题的工作的启发。关于我们的算法,我们显示信号重建中预期的平均正方差(MSE)与抽样率的反差成比例。样本受到已知分布的零度添加噪音的影响。我们通过设计一种基于Banach 固定点的收缩图的算法来解决这个信号估计问题。我们用4个基准图像进行数值测试,以显示我们的算法的有效性。关于图像重建质量评估的各种指标,例如PSNR、SSIM、ESIM、ESIM和MS-SSIM, SSIM等所有用于图像重建质量评估的所有指标。我们所有4个基准图像的基数矩阵都用于这些基准基数的基数。