The new edition of this classic gives all the major concepts, techniques and applications of sparse representation, reflecting the key role the subject plays in today's signal processing
The book clearly presents the standard representations of fourier, wavelet and time-frequency tools which enable sparse representations of large classes of signals and images, including the construction of orthogonal bases with fast algorithms
The central concept of sparsity is explained and applied to signal compression, noise reduction and inverse problems, while coverage is given to sparse representations in redundant dictionaries, super-resolution and compressive sensing applications
Features: - balances presentation of the mathematics with applications to signal processing; - algorithms and numerical examples are implemented in wavelab, a matlab toolbox; - companion website for instructors and selected solutions and code available for students
New in the third edition - sparse signal representations in dictionaries - compressive sensing, super-resolution and source separation
- geometric image processing with curvelets and bandlets - wavelets for computer graphics with lifting on surfaces - time-frequency audio processing and denoising - image compression with jpeg-2000 - new exercises mallat's book is the undisputed reference in this field - it is the only one that covers the essential material in such breadth and depth
- laurent demanet, stanford university imagem meramente ilustrativa.