We consider the problem of recovering $n$ i.i.d samples from a zero mean multivariate Gaussian distribution with an unknown covariance matrix, from their modulo wrapped measurements, i.e., measurement where each coordinate is reduced modulo $\Delta$, for some $\Delta>0$. For this setup, which is motivated by quantization and analog-to-digital conversion, we develop a low-complexity iterative decoding algorithm. We show that if a benchmark informed decoder that knows the covariance matrix can recover each sample with small error probability, and $n$ is large enough, the performance of the proposed blind recovery algorithm closely follows that of the informed one. We complement the analysis with numeric results that show that the algorithm performs well even in non-asymptotic conditions.
翻译:我们考虑了从零平均值的多变量分配中以未知的共变矩阵、从其摩杜洛包装测量中,即测量每个坐标减少modulo $\Delta$的测量中,取回一美元(i.d)的样本的问题。对于这个由量化和模拟数字转换驱动的设置,我们开发了一个低复度迭代解码算法。我们表明,如果一个知道共变矩阵的基准知情解码器能够以很小的误差概率和足够大的数额回收每样样本,那么拟议的盲人回收算法的性能就紧跟了知情算法的性能。我们用数字结果来补充分析,这些结果表明算法即使在非随机条件下也运行良好。