Title :
Stable grassmann manifold embedding via Gaussian random matrices
Author :
Hailong Shi ; Hao Zhang ; Gang Li ; Xiqin Wang
Author_Institution :
Dept. of Electron. Eng., Tsinghua Univ., Beijing, China
fDate :
June 29 2014-July 4 2014
Abstract :
Compressive Sensing (CS) provides a new perspective for dimensionnality reduction without compromising performance. The theoretical foundation for most of existing studies of CS is a stable embedding (i.e., a distance-preserving property) of certain low-dimensional signal models such as sparse signals or signals in a union of linear subspaces. However, few existing literatures clearly discussed the embedding effect of points on the Grassmann manifold in under-sampled linear measurement systems. In this paper, we explore the stable embedding property of multi-dimensional signals based on Grassmann manifold, which is a topological space with each point being a linear subspace of ℝN (or ℂN), via the Gaussian random matrices. It should be noted that the stability mentioned here is about the volume-preserving instead of distance-preserving, because volume is the key characteristic for linear subspace spanned by multiple vectors. The theorem of the volume-preserving stable embedding property is proposed, and sketched proofs as well as discussions about our theorem is also given.
Keywords :
Gaussian processes; compressed sensing; Gaussian random matrices; compressive sensing; dimensionnality reduction; multidimensional signals; sparse signals; stable Grassmann manifold embedding; Atmospheric measurements; Information theory; Manifolds; Particle measurements; Signal reconstruction; Stability analysis; Volume measurement;
Conference_Titel :
Information Theory (ISIT), 2014 IEEE International Symposium on
Conference_Location :
Honolulu, HI
DOI :
10.1109/ISIT.2014.6875310