Title :
Approximation Algorithms for Wavelet Transform Coding of Data Streams
Author :
Guha, Sudipto ; Harb, Boulos
Author_Institution :
Pennsylvania Univ., Philadelphia
Abstract :
This paper addresses the problem of finding a B-term wavelet representation of a given discrete function fepsiRn whose distance from is minimized. The problem is well understood when we seek to minimize the Euclidean distance between f and its representation. The first-known algorithms for finding provably approximate representations minimizing general lp distances (including linfin) under a wide variety of compactly supported wavelet bases are presented in this paper. For the Haar basis, a polynomial time approximation scheme is demonstrated. These algorithms are applicable in the one-pass sublinear-space data stream model of computation. They generalize naturally to multiple dimensions and weighted norms. A universal representation that provides a provable approximation guarantee under all mu-norms simultaneously; and the first approximation algorithms for bit-budget versions of the problem, known as adaptive quantization, are also presented. Further, it is shown that the algorithms presented here can be used to select a basis from a tree-structured dictionary of bases and find a B-term representation of the given function that provably approximates its best dictionary-basis representation.
Keywords :
Haar transforms; approximation theory; encoding; minimisation; wavelet transforms; B-term representation; Haar basis; approximation algorithms; polynomial time approximation; sublinear-space data stream model; wavelet transform coding; Approximation algorithms; Approximation methods; Computational modeling; Dictionaries; Discrete wavelet transforms; Euclidean distance; Image coding; Polynomials; Quantization; Transform coding; Adaptive quantization; best basis selection; compactly supported wavelets; nonlinear approximation; sparse representation; streaming algorithms; transform coding; universal representation;
Journal_Title :
Information Theory, IEEE Transactions on
DOI :
10.1109/TIT.2007.913569