会议专题

Consistent Sampling and Reconstruction of Signals in Noisy Under-Determined Case

The propose a sampling theorem that reconstructs a consistent signal from noisy under-determined samples. Consistency in the context of sampling theory means that the reconstructed signal yields the same measurements as the original ones. The conventional consistent sampling theorems for the underdetermined case reconstruct a signal from noiseless samples in a complementary subspace L in the reconstruction space of the intersection between the reconstruction space and the orthogonal complement of the sampling space. To obtain a good reconstruction result, one has to determine L effectively. To this end, we .rst extend the sampling theorem for a noisy case. Since the reconstructed signal is scattered in L, we propose to reconstruct a signal so that the variance is minimized provided that the average of the signals agrees with the noiseless reconstruction. Note that the minimum variance depends on the subspace L. Therefore, we next propose to determine L so that the minimum variance is further minimized in terms of L. We show that such L can be chosen if and only if L includes a subspace determined by the noise covariance matrix. By computer simulations, we demonstrate that there is a considerable difference between the minimum and non-minimum variance reconstructions.

Akira Hirabayashi

Yamaguchi University, Ube, Japan

国际会议

2011亚太信号与信息处理协会年度峰会(APSIPAASC 2011)

西安

英文

1-4

2011-10-18(万方平台首次上网日期,不代表论文的发表时间)