Atkinson Ian, Kamalabadi Farzad, Mohan Satish, Jones Douglas L
Department of Electrical and Computer Engineering and the Coordinated Science Laboratory, University of Illinois at Urbana-Champaign, Urbana, IL 61801 USA.
IEEE Trans Image Process. 2006 Apr;15(4):992-1007. doi: 10.1109/tip.2005.863024.
Optimal estimation of a two-dimensional (2-D) multichannel signal ideally decorrelates the data in both channel and space and weights the resulting coefficients according to their SNR. Many scenarios exist where the required second-order signal and noise statistics are not known in which the decorrelation is difficult or expensive to calculate. An asymptotically optimal estimation scheme proposed here uses a 2-D discrete wavelet transform to approximately decorrelate the signal in space and the discrete Fourier transform to decorrelate between channels. The coefficient weighting is replaced with a wavelet-domain thresholding operation to result in an efficient estimation scheme for both stationary and nonstationary signals. In contrast to optimal estimation, this new scheme does not require second-order signal statistics, making it well suited to many applications. In addition to providing vastly improved visual quality, the new estimator typically yields signal-to-noise ratio gains 12 dB or higher for hyperspectral imagery and functional magnetic resonance images.
二维(2-D)多通道信号的最优估计理想情况下会使数据在通道和空间上都去相关,并根据其信噪比加权所得系数。存在许多场景,其中所需的二阶信号和噪声统计量未知,在此情况下去相关计算困难或成本高昂。这里提出的一种渐近最优估计方案使用二维离散小波变换在空间上近似去相关信号,并使用离散傅里叶变换在通道间去相关。系数加权被小波域阈值操作所取代,从而得到一种适用于平稳和非平稳信号的高效估计方案。与最优估计相比,这种新方案不需要二阶信号统计量,非常适合许多应用。除了提供大幅提高的视觉质量外,对于高光谱图像和功能磁共振图像,新估计器通常能使信噪比提高12 dB或更高。