Title
Recovery of Compressed Sensing Microarray Using Sparse Random Matrices.
Abstract
Due to the uncertainty of elements in the random matrix, the design of composite probes on compressed sensing microarray (CSM) becomes more complexity. In this paper, we proposed a sparse random measurement matrix with ` 0/ 1' binary element, and fixed the same amount of elements ` 1' on each row, to construct the CSM composite probe. There is the same dilution for the mixed solution of target segments to ensure the consistency of gene concentration, so the composite probes which made up of the linear combination of target segments are very simple. Simulation experiment results show that the variation characteristics of the target segment can be accurately recovered by OMP algorithm under N = 96 sequence segments and variation sparsity level K <= 12, when M = 48 composite probes are constructed with a sparse random matrix fixed amount of non-zero elements each row.
Year
Venue
Keywords
2016
INTELLIGENT DATA ANALYSIS AND APPLICATIONS, (ECC 2016)
Compressed sensing,Sparse random matrix,Microarray,Composite probe,OMP
Field
DocType
Volume
Linear combination,Dilution,Pattern recognition,Matrix (mathematics),Computer science,Composite number,Artificial intelligence,Compressed sensing,Binary number,Random matrix
Conference
535
ISSN
Citations 
PageRank 
2194-5357
0
0.34
References 
Authors
4
5
Name
Order
Citations
PageRank
Zhenhua Gan101.01
Baoping Xiong202.70
Fumin Zou337.16
Yueming Gao400.68
Min Du500.68