scispace - formally typeset
Open AccessPosted Content

Wavelets on Graphs via Spectral Graph Theory

TLDR
In this paper, the spectral graph wavelet operator is defined based on spectral decomposition of the discrete graph Laplacian, and a wavelet generating kernel and a scale parameter are used to localize this operator to an indicator function.
Abstract
We propose a novel method for constructing wavelet transforms of functions defined on the vertices of an arbitrary finite weighted graph. Our approach is based on defining scaling using the the graph analogue of the Fourier domain, namely the spectral decomposition of the discrete graph Laplacian $\L$. Given a wavelet generating kernel $g$ and a scale parameter $t$, we define the scaled wavelet operator $T_g^t = g(t\L)$. The spectral graph wavelets are then formed by localizing this operator by applying it to an indicator function. Subject to an admissibility condition on $g$, this procedure defines an invertible transform. We explore the localization properties of the wavelets in the limit of fine scales. Additionally, we present a fast Chebyshev polynomial approximation algorithm for computing the transform that avoids the need for diagonalizing $\L$. We highlight potential applications of the transform through examples of wavelets on graphs corresponding to a variety of different problem domains.

read more

Citations
More filters
Journal ArticleDOI

Multiscale representation of surfaces by tight wavelet frames with applications to denoising

TL;DR: This paper proposes an analysis based surface denoising model for triangular and quad surfaces, which is different from the algorithms used in image restoration due to the nonlinear nature of the proposed tight wavelet frame transforms on surfaces.
Journal ArticleDOI

A unified framework for harmonic analysis of functions on directed graphs and changing data

TL;DR: A new definition of distance between points on two spaces is introduced, localized kernels based on the two spaces and certain interaction parameters are constructed, and the evolution of smoothness of a function on one space to its lifting to the other space via the landmarks is studied.
Posted Content

Learning Graphs from Signal Observations under Smoothness Prior.

TL;DR: This paper adopts a factor analysis model for the graph signals and imposes a Gaussian probabilistic prior on the latent variables that control these graph signals, and proposes an algorithm for learning graphs that enforce such smoothness property for the signal observations by minimizing the variations of the signals on the learned graph.
Journal ArticleDOI

Dual interactive graph convolutional networks for hyperspectral image classification

TL;DR: A new dual interactive GCN (DIGCN) is developed which introduces the dual GCN branches to capture spatial information at different scales and adaptively learns a discriminative region-induced graph, which also accelerates the convolution operation.
Proceedings ArticleDOI

Total generalized variation for graph signals

TL;DR: The proposed graph TGV is an extension of the TV for graph signals (G-TV) and inherits the capability of the TGV, such as avoiding staircasing effect, and is expected to be a fundamental building block for graph signal processing.
References
More filters
Book

A wavelet tour of signal processing

TL;DR: An introduction to a Transient World and an Approximation Tour of Wavelet Packet and Local Cosine Bases.
Proceedings ArticleDOI

Object recognition from local scale-invariant features

TL;DR: Experimental results show that robust object recognition can be achieved in cluttered partially occluded images with a computation time of under 2 seconds.
Book

Ten lectures on wavelets

TL;DR: This paper presents a meta-analyses of the wavelet transforms of Coxeter’s inequality and its applications to multiresolutional analysis and orthonormal bases.
Book

Functional analysis

Walter Rudin
Journal ArticleDOI

Ten Lectures on Wavelets

TL;DR: In this article, the regularity of compactly supported wavelets and symmetry of wavelet bases are discussed. But the authors focus on the orthonormal bases of wavelets, rather than the continuous wavelet transform.
Related Papers (5)