Timezone: »
An increasing number of applications require processing of signals defined on weighted graphs. While wavelets provide a flexible tool for signal processing in the classical setting of regular domains, the existing graph wavelet constructions are less flexible -- they are guided solely by the structure of the underlying graph and do not take directly into consideration the particular class of signals to be processed. This paper introduces a machine learning framework for constructing graph wavelets that can sparsely represent a given class of signals. Our construction uses the lifting scheme, and is based on the observation that the recurrent nature of the lifting scheme gives rise to a structure resembling a deep auto-encoder network. Particular properties that the resulting wavelets must satisfy determine the training objective and the structure of the involved neural networks. The training is unsupervised, and is conducted similarly to the greedy pre-training of a stack of auto-encoders. After training is completed, we obtain a linear wavelet transform that can be applied to any graph signal in time and memory linear in the size of the graph. Improved sparsity of our wavelet transform for the test signals is confirmed via experiments both on synthetic and real data.
Author Information
Raif Rustamov (AT&T Chief Data Office)
Leonidas Guibas (stanford.edu)
More from the Same Authors
-
2022 : Breaking the Symmetry: Resolving Symmetry Ambiguities in Equivariant Neural Networks »
Sidhika Balachandar · Adrien Poulenard · Congyue Deng · Leonidas Guibas -
2023 Poster: NeRF Revisited: Fixing Quadrature Instability in Volume Rendering »
Mikaela Angelina Uy · Guandao Yang · Kiyohiro Nakayama · Leonidas Guibas · Ke Li -
2023 Poster: NAP: Neural 3D Articulation Prior »
Jiahui Lei · Congyue Deng · William B Shen · Leonidas Guibas · Kostas Daniilidis -
2023 Poster: Banana: Banach Fixed-Point Network for Pointcloud Segmentation with Inter-Part Equivariance »
Congyue Deng · Jiahui Lei · William B Shen · Kostas Daniilidis · Leonidas Guibas -
2022 Poster: NeuForm: Adaptive Overfitting for Neural Shape Editing »
Connor Lin · Niloy Mitra · Gordon Wetzstein · Leonidas Guibas · Paul Guerrero -
2022 Poster: Object Scene Representation Transformer »
Mehdi S. M. Sajjadi · Daniel Duckworth · Aravindh Mahendran · Sjoerd van Steenkiste · Filip Pavetic · Mario Lucic · Leonidas Guibas · Klaus Greff · Thomas Kipf -
2021 Poster: Intrinsic Dimension, Persistent Homology and Generalization in Neural Networks »
Tolga Birdal · Aaron Lou · Leonidas Guibas · Umut Simsekli -
2021 Poster: Leveraging SE(3) Equivariance for Self-supervised Category-Level Object Pose Estimation from Point Clouds »
Xiaolong Li · Yijia Weng · Li Yi · Leonidas Guibas · A. Abbott · Shuran Song · He Wang -
2021 Poster: SketchGen: Generating Constrained CAD Sketches »
Wamiq Para · Shariq Bhat · Paul Guerrero · Tom Kelly · Niloy Mitra · Leonidas Guibas · Peter Wonka -
2020 : QA: Leonidas J. Guibas »
Leonidas Guibas -
2020 : Invited Talk: Leonidas J. Guibas »
Leonidas Guibas -
2020 Poster: Generative 3D Part Assembly via Dynamic Graph Learning »
jialei huang · Guanqi Zhan · Qingnan Fan · Kaichun Mo · Lin Shao · Baoquan Chen · Leonidas Guibas · Hao Dong -
2020 Poster: CaSPR: Learning Canonical Spatiotemporal Point Cloud Representations »
Davis Rempe · Tolga Birdal · Yongheng Zhao · Zan Gojcic · Srinath Sridhar · Leonidas Guibas -
2020 Poster: ShapeFlow: Learnable Deformation Flows Among 3D Shapes »
Chiyu Jiang · Jingwei Huang · Andrea Tagliasacchi · Leonidas Guibas -
2020 Spotlight: ShapeFlow: Learnable Deformation Flows Among 3D Shapes »
Chiyu Jiang · Jingwei Huang · Andrea Tagliasacchi · Leonidas Guibas -
2020 Spotlight: CaSPR: Learning Canonical Spatiotemporal Point Cloud Representations »
Davis Rempe · Tolga Birdal · Yongheng Zhao · Zan Gojcic · Srinath Sridhar · Leonidas Guibas -
2019 Poster: Multiview Aggregation for Learning Category-Specific Shape Reconstruction »
Srinath Sridhar · Davis Rempe · Julien Valentin · Bouaziz Sofien · Leonidas Guibas -
2019 Poster: A Condition Number for Joint Optimization of Cycle-Consistent Networks »
Leonidas Guibas · Qixing Huang · Zhenxiao Liang -
2019 Spotlight: A Condition Number for Joint Optimization of Cycle-Consistent Networks »
Leonidas Guibas · Qixing Huang · Zhenxiao Liang -
2018 Poster: Deep Functional Dictionaries: Learning Consistent Semantic Structures on 3D Models from Functions »
Minhyuk Sung · Hao Su · Ronald Yu · Leonidas Guibas -
2017 Poster: PointNet++: Deep Hierarchical Feature Learning on Point Sets in a Metric Space »
Charles Ruizhongtai Qi · Li Yi · Hao Su · Leonidas Guibas -
2016 Poster: FPNN: Field Probing Neural Networks for 3D Data »
Yangyan Li · Soeren Pirk · Hao Su · Charles R Qi · Leonidas Guibas -
2015 Poster: Deep Knowledge Tracing »
Chris Piech · Jonathan Bassen · Jonathan Huang · Surya Ganguli · Mehran Sahami · Leonidas Guibas · Jascha Sohl-Dickstein -
2013 Workshop: MLINI-13: Machine Learning and Interpretation in Neuroimaging (Day 2) »
Georg Langs · Brian Murphy · Kai-min K Chang · Paolo Avesani · James Haxby · Nikolaus Kriegeskorte · Susan Whitfield-Gabrieli · Irina Rish · Guillermo Cecchi · Raif Rustamov · Marius Kloft · Jonathan Young · Sina Ghiassian · Michael Coen -
2013 Workshop: MLINI-13: Machine Learning and Interpretation in Neuroimaging (Day 1) »
Georg Langs · Brian Murphy · Kai-min K Chang · Paolo Avesani · James Haxby · Nikolaus Kriegeskorte · Susan Whitfield-Gabrieli · Irina Rish · Guillermo Cecchi · Raif Rustamov · Marius Kloft · Jonathan Young · Sina Ghiassian · Michael Coen -
2013 Demonstration: Codewebs: a Pedagogical Search Engine for Code Submissions to a MOOC »
Jonathan Huang · Chris Piech · Andy Nguyen · Leonidas Guibas -
2007 Oral: Efficient Inference forDistributions on Permutations »
Jonathan Huang · Carlos Guestrin · Leonidas Guibas -
2007 Poster: Efficient Inference forDistributions on Permutations »
Jonathan Huang · Carlos Guestrin · Leonidas Guibas