19,99 €
inkl. MwSt.
Versandkostenfrei*
Versandfertig in über 4 Wochen
  • Broschiertes Buch

The problem of estimating sparse signals based on incomplete set of noiseless or noisy measurements has been investigated for a long time from different perspectives. In this book, after the review of the theory of compressed sensing (CS) and existing structured sensing matrices, a new class of convolutional sensing matrices based on deterministic sequences are developed in the first part. The proposed matrices can achieve a near optimal bound with O(K\log(N)) measurements for non-uniform recovery. Not only are they able to approximate compressible signals in the time domain, but they can also…mehr

Produktbeschreibung
The problem of estimating sparse signals based on incomplete set of noiseless or noisy measurements has been investigated for a long time from different perspectives. In this book, after the review of the theory of compressed sensing (CS) and existing structured sensing matrices, a new class of convolutional sensing matrices based on deterministic sequences are developed in the first part. The proposed matrices can achieve a near optimal bound with O(K\log(N)) measurements for non-uniform recovery. Not only are they able to approximate compressible signals in the time domain, but they can also recover sparse signals in the frequency and discrete cosine transform domain. The candidates of the deterministic sequences include maximum length sequence (or called m-sequence, Golay's complementary sequence and Legendre sequence etc., which will be investigated respectively. In the second part, Golay-paired Hadamard matrices are introduced as structured sensing matrices, which are constructed from the Hadamard matrix, followed by diagonal Golay sequences. The properties and performances are analysed in the following. Their strong structures ensure special isometry properties, and make them be easier applicable to hardware potentially. Finally, we exploit novel CS principles successfully in a few real applications, including radar imaging and distributed source coding. The performance and the effectiveness of each scenario are verified in both theory and simulations
Autorenporträt
Li, KezhiKezhi (Kenneth) Li is currently a research scientist at Medical Research Council (MRC), Imperial College London. He is a key member in the group of behaviour genomics. His research interests are quite broad in several inter-discipline areas, such as seeking for the relation between organism's genotype and phenotype, sparse signal compression/recovery and their applications in imaging system and quantum tomography. Before coming to MRC, he was a research associate at University of Cambridge, a research fellow at Royal Institute of Technology (KTH) in Stockholm and University of Science and Technology of China. He obtained the PhD degree at Imperial College London in 2013. His research background mainly lies in statistical signal processing, computer vision and matrix analysis.