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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.

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Citations
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Proceedings ArticleDOI

Depth map compression using multi-resolution graph-based transform for depth-image-based rendering

TL;DR: A multi-resolution approach to depth map compression using previously proposed graph-based transform (GBT) to achieve representation compactness for a large block without the high computation complexity associated with an adaptive large-block GBT.
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Signal Recovery on Graphs: Fundamental Limits of Sampling Strategies

TL;DR: In this article, the authors propose a recovery strategy to compare uniform sampling with experimentally designed sampling, and show that the experimental designed sampling fundamentally outperforms uniform sampling for Type-2 class of graphs.
Journal ArticleDOI

A graph deep learning method for short-term traffic forecasting on large road networks

TL;DR: A graph deep learning framework to predict large‐scale network traffic flow with high accuracy and efficiency and model the dynamics of the traffic flow on a road network as an irreducible and aperiodic Markov chain on a directed graph.
Journal ArticleDOI

Predicting Citywide Crowd Flows in Irregular Regions Using Multi-View Graph Convolutional Networks

TL;DR: Wang et al. as mentioned in this paper proposed a multi-view graph convolutional network (MVGCN) for crowd flow forecasting in irregular regions, where different views can capture different factors such as weather, events, and meta features.
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Submodular Hypergraphs: p-Laplacians, Cheeger Inequalities and Spectral Clustering

TL;DR: The description of algorithms for computing the spectra of 1- and 2-Laplacians that constitute the basis of new spectral hypergraph clustering methods are described.
References
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A wavelet tour of signal processing

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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.
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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.
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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.
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