
Multidimensional Signal Processing
Fast transform, Sparse Representation, Low Rank Analysis
Qionghai Dai(Author)
De Gruyter (Publisher)
1st Edition
Will be published approx. on 22. May 2027
Book
Hardback
X, 240 pages
978-3-11-052801-5 (ISBN)
Description
This book illustrates utilization of fast transform, sparse representation and low rank analysis as tool in multidimensional signal processing and focuses on discrete cosine transform, optimization of double tree wavelet transform in coding and noise reduction, self-return compression perception of image signal. With orignal research results, the book is an essential reference for electrical engineering researchers and engineers.
More details
Series
Language
English
Place of publication
Berlin/Boston
Germany
Target group
Professional and scholarly
US School Grade: College Graduate Student
Illustrations
80
80 s/w Abbildungen
80 b/w ill.
Dimensions
Height: 24 cm
Width: 17 cm
ISBN-13
978-3-11-052801-5 (9783110528015)
Schweitzer Classification
Persons
Qionghai Dai, Tsinghua University, Beijing, China
Content
Table of Content:Chapter 1 Review on multidimensional signal processing1.1 Introduction1.2 Multi-dimensional signal: fast transformation1.3 Multi-dimensional signal: sparse representation1.4 Multi-dimensional signal: low rank analysis1.5 SummaryChapter 2 Multi-dimensional discrete cosine transform matrix and fast decomposition2.1 Introduction2.2 Dct transformation and matrix decomposition2.3 M ddct and m d ratio2.4 M d ratio dct fast algorithm2.5 Computational complexity comparison2.6 SummaryChapter 3 Multidimensional discrete wavelet transform: vlsi architecture3.1 Introduction3.2 Multi-dimensional dwt transformation framework3.3 Comparison and evaluation3.4 SummaryChapter 4 Multi-dimensional signal: sparse representation theory and application4.1 Introduction4.2 Compression perception4.3 Application of compression perception4.4 SummaryChapter 5 Discrete wavelet transform based on image/video coding5.1 Introduction5.2 Dual-tree discrete wavelet transform5.3 Image coding based on ddwt5.4 Adaptive DWTWT5.5 Image/Video Encoding Based on addwp5.6 SummaryChapter 6 Low-order analysis of multi-dimensional signal: theory and application6.1 Introduction6.2 Matrix rank6.3 Matrix low rank sparse decomposition6.4 Applications and examples6.5 SummaryChapter 7 Sparse structure visual information perception7.1 Introduction7.2 Logarithms and heuristic perception algorithm7.3 Log sum approximation in the data analysis application7.4 Log sum approximation in stereo reconstruction application7.5 Summary7.6 AppendixChapter 8 Dynamic reconstruction of the dynamic topography8.1 Introduction8.2 Research updates8.3 3D reconstruction of dynamic scene based on 3D motion estimation8.4 Experimental results and analysis8.5 SummaryChapter 9 Low-rank decomposition of multidimensional signal and adaptive reconfiguration9.1 Foreword9.2 Low-rank accumulate matrix construction and low-rank decomposition of multidimensional signal 9.3 Applications of low rank decomposition in compressive perception image reconfiguration9.4 Application of low rank decomposition in super resolution9.5 SummaryReferences