Discrete Fourier analysis and wavelets: applications to signal and image processing

Discrete Fourier analysis and wavelets: applications to signal and image processing

Broughton, S. Allen
Bryan, Kurt

95,99 €(IVA inc.)

Most image-processing techniques involve treating the image as a two-dimensional signal and applying standard signal-processing techniques to it. Addressing both the classical and modern mathematical methods of image and signal processing, Discrete Fourier Analysis and Wavelets provides the science behind real-world applications such as digital cameras, pattern recognition, and information archiving, and utilizes MATLAB to illustrate the related concepts. Striking an even balance between mathematics and applications, with an emphasis on linear algebra as a unifying theme, this class-tested text is ideal for studentsand mathematicians, signal processing engineers, and scientists. INDICE: 1. Vector Spaces, Signals, and Images. 1.1 Overview. 1.2 Some common image processing problems. 1.3 Signals and images. 1.4 Vector space models for signals and images. 1.5 Basic wave forms the analog case. 1.6 Sampling andaliasing. 1.7 Basic wave forms the discrete case. 1.8 Inner product spaces and orthogonality. 1.9 Signal and image digitization. 1.10 Infinitedimensional inner product spaces. 1.11 Matlab project. Exercises. 2. The Discrete Fourier Transform. 2.1 Overview. 2.2 The time domain and frequency domain. 2.3 A motivational example. 2.4 The onedimensional DFT. 2.5 Properties of the DFT. 2.6 Thefast Fourier transform. 2.7 The twodimensional DFT. 2.8 Matlab project. Exercises. 3. The discrete cosine transform. 3.1 Motivation for the DCT: compression. 3.2 Initial examples thresholding. 3.3 The discrete cosine transform. 3.4 Properties of the DCT. 3.5 The twodimensional DCT. 3.6 Block transforms. 3.7 JPEG compression. 3.8 Matlab project. Exercises. 4. Convolution and filtering. 4.1 Overview. 4.2 Onedimensional convolution. 4.3 Convolution theorem and filtering. 4.4 2D convolution filtering images. 4.5 Infinite and biinfinite signal models. 4.6 Matlab project. Exercises. 5. Windowing and Localization. 5.1 Overview: Nonlocality of the DFT. 5.2 Localization via windowing. 5.3 Matlab project. Exercises. 6. Filter banks. 6.1 Overview. 6.2 The Haar filter bank. 6.3 The general onstage twochannel filter bank. 6.4 Multistage filter banks. 6.5 Filter banks for finite length signals. 6.6 The 2D discrete wavelet transform andJPEG 2000. 6.7 Filter design. 6.8 Matlab project. 6.9 Alternate Matlab project. Exercises. 7. Wavelets. 7.1 Overview. 7.2 The Haar Basis. 7.3 Haar waveletsversus the Haar filter bank. 7.4 Orthogonal wavelets. 7.5 Biorthogonal wavelets. 7.6 Matlab Project. Exercises.

  • ISBN: 978-0-470-29466-6
  • Editorial: John Wiley & Sons
  • Encuadernacion: Cartoné
  • Páginas: 337
  • Fecha Publicación: 21/11/2008
  • Nº Volúmenes: 1
  • Idioma: Inglés