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Title: The extended generalized Haar-Walsh transform and applications
Extending computational harmonic analysis tools from the classical setting of regular lattices to the more general setting of graphs and networks is very important and much research has been done recently. Our previous Generalized Haar-Walsh Transform (GHWT) is a multiscale transform for signals on graphs, which is a generalization of the classical Haar and Walsh-Hadamard Transforms. This article proposes the extended Generalized Haar-Walsh Transform (eGHWT). The eGHWT and its associated best-basis selection algorithm for graph signals will significantly improve the performance of the previous GHWT with the similar computational cost, O(N log N) where N is the number of nodes of an input graph. While the previous GHWT/best-basis algorithm seeks the most suitable orthonormal basis for a given task among more than 1.5^N possible bases, the eGHWT/best-basis algorithm can find a better one by searching through more than 0.618 ⋅ (1.84)^N possible bases. This article describes the details of the eGHWT/basis-basis algorithm and demonstrates its superiority using several examples including genuine graph signals as well as conventional digital images viewed as graph signals. Keywords: Multiscale basis dictionaries, wavelets on graphs, graph signal processing, adapted time-frequency analysis, the best-basis algorithm  more » « less
Award ID(s):
1912747
NSF-PAR ID:
10164282
Author(s) / Creator(s):
;
Date Published:
Journal Name:
Wavelets and Sparsity XVIII
Volume:
11138
Page Range / eLocation ID:
11138C
Format(s):
Medium: X
Sponsoring Org:
National Science Foundation
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  1. Abstract

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  2. Abstract

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