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The impact of low signal-to-noise ratio values on the achievability of Cramer-Rao lower bounds with multi-frame blind deconvolution algorithms

机译:低信噪比值对采用多帧盲反卷积算法的Cramer-Rao下界可实现性的影响

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Cramer-Rao lower bound (CRB) theory can be used to calculate algorithm-independent lower bounds to the variances of parameter estimates. It is well known that the CRBs are achievable by algorithms only when the parameters can be estimated with sufficiently-high signal-to-noise ratios (SNRs). Otherwise, the CRBs are still lower bounds, but there can be a large gap between the CRBs and the variances that can be achieved by algorithms. We present results from our initial investigations into the SNR dependence of the achievability of the CRBs by multi-frame blind deconvolution (MFBD) algorithms for high-resolution imaging in the presence of atmospheric turbulence and sensor noise. With the use of sample statistics, we give examples showing that the minimum SNR value for which the CRBs can be achieved by our MFBD algorithm typically ranges between one and five, depending upon the strength of the prior knowledge used in the algorithm and the SNRs in the measured data.
机译:Cramer-Rao下界(CRB)理论可用于计算参数估计值方差的算法独立下界。众所周知,仅当可以以足够高的信噪比(SNR)估计参数时,才可以通过算法实现CRB。否则,CRB仍然是下界,但是CRB与算法可以实现的方差之间可能会有很大的差距。我们目前的初步研究结果是对存在大气湍流和传感器噪声的高分辨率成像的多帧盲解卷积(MFBD)算法通过多帧盲反卷积(MFBD)算法得出的CRB的SNR依赖性。通过使用样本统计数据,我们给出的示例表明,根据算法中使用的先验知识的强度和SNR中的SNR,通过MFBD算法可以实现CRB的最小SNR值通常在1到5之间。测量数据。

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