Title :
Deterministic compressed-sensing matrix from grassmannian matrix: Application to speech processing
Author :
Abrol, Vinayak ; Sharma, Parmanand ; Budhiraja, S.
Author_Institution :
Univ. Inst. of Eng. & Technol, Panjab Univ. Chandigarh, Chandigarh, India
Abstract :
Reconstruction of a signal based on Compressed Sensing (CS) framework relies on the knowledge of the sparse basis & measurement matrix used for sensing. While most of the studies so far focus on the prominent random Gaussian, Bernoulli or Fourier matrices, we have proposed construction of efficient sensing matrix we call Grassgram Matrix using Grassmannian matrices. This work shows how to construct effective deterministic sensing matrices for any known sparse basis which can fulfill incoherence or RIP conditions with high probability. The performance of proposed approach is evaluated for speech signals. Our results shows that these deterministic matrices out performs other popular matrices.
Keywords :
compressed sensing; matrix algebra; signal reconstruction; speech processing; Bernoulli matrices; CS framework; Fourier matrices; Grassmannian matrix; deterministic compressed-sensing matrix; measurement matrix; random Gaussian matrices; signal reconstruction; sparse basis; speech processing; Discrete cosine transforms; Sensors; Sparks; Sparse matrices; Speech; Speech processing; Symmetric matrices; Compressed sensing; Grassmannian matrix; Sensing efficiency; Speech processing; sparse basis;
Conference_Titel :
Advance Computing Conference (IACC), 2013 IEEE 3rd International
Conference_Location :
Ghaziabad
Print_ISBN :
978-1-4673-4527-9
DOI :
10.1109/IAdCC.2013.6514392