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A sparse multi-dimensional Fast Fourier Transform with stability to noise in the context of image processing and change detection

机译:在图像处理和变化检测的情况下对噪声具有稳定性的稀疏多维快速傅立叶变换

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We present the sparse multidimensional FFT (sMFFT) for positive real vectors with application to image processing. Our algorithm works in any fixed dimension, requires an (almost)-optimal number of samples (O (Rlog (N/R))) and runs in O (Rlog (N/R)) complexity (to first order) for N unknowns and R nonzeros. It is stable to noise and exhibits an exponentially small probability of failure. Numerical results show sMFFT's large quantitative and qualitative strengths as compared to ℓ1-minimization for Compressive Sensing as well as advantages in the context of image processing and change detection.
机译:我们提出了正实向量的稀疏多维FFT(sMFFT),并将其应用于图像处理。我们的算法可在任何固定维度上运行,需要(几乎)最佳数量的样本(O(Rlog(N / R))),并且对于N个未知数,以O(Rlog(N / R))复杂度(至一阶)运行和R非零。它对噪声稳定,并且出现故障的几率很小。数值结果表明,与ℓ1最小化相比,sMFFT具有较大的定量和定性强度,并且在图像处理和变化检测方面具有优势。

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