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Cramer-Rao bounds for intensity interferometry measurements

机译:Cramer-Rao边界用于强度干涉测量

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The question of signal-to-noise ratio (SNR) in intensity interferometry has been revisited in recent years, as researchers have realized that various innovations can offer significant improvements in SNR. These innovations include improved signal processing. Two such innovations, the use of positivity and the use of knowledge of the general shape of the object, have been proposed. This paper investigates the potential gains offered by these two approaches using Cramer-Rao lower bounds (CRLBs). The CRLB on the variance of the positivity-constrained maximum likelihood (ML) estimate is at best 1/4 of the variance of the unconstrained estimator. This is compared to the positivity-constrained ML estimator, which delivers a best-case variance reduction of only (1 - 1/π)/2 = 34.1%. The gains offered by prior knowledge depend on the quality of such information, as might be expected from optimal weighting of such data with the measured data. Furthermore, biases are induced by the application of constraints, and these biases can eliminate some or all of the advantage of lower variances, as found when considering the total root-mean-square error. A form of CRLB for variance is presented that properly incorporates prior information.
机译:近年来,由于研究人员已经意识到各种创新可以显着改善SNR,因此强度干涉测量中的信噪比(SNR)问题已被重新审视。这些创新包括改进的信号处理。已经提出了两种这样的创新,即使用正性和使用物体的一般形状的知识。本文研究了使用Cramer-Rao下界(CRLB)的这两种方法提供的潜在收益。关于正约束最大似然(ML)估计的方差的CRLB最多是无约束估计量方差的1/4。将此与正负约束的ML估计器进行比较,后者的最佳情况方差减少仅为(1-1 /π)/ 2 = 34.1%。先验知识提供的增益取决于此类信息的质量,这可能是根据此类数据与测量数据的最佳加权所预期的。此外,偏差是由约束的施加引起的,并且这些偏差可以消除较低方差的部分或全部优点,如在考虑总均方根误差时所发现的。提出了一种用于差异的CRLB形式,该形式适当地合并了先前的信息。

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