Multi-dimensional Signal Recovery using Low-rank Deconvolution

05/03/2023
by   David Reixach, et al.
0

In this work we present Low-rank Deconvolution, a powerful framework for low-level feature-map learning for efficient signal representation with application to signal recovery. Its formulation in multi-linear algebra inherits properties from convolutional sparse coding and low-rank approximation methods as in this setting signals are decomposed in a set of filters convolved with a set of low-rank tensors. We show its advantages by learning compressed video representations and solving image in-painting problems.

READ FULL TEXT

page 3

page 4

research
05/24/2019

Learning Low-Rank Approximation for CNNs

Low-rank approximation is an effective model compression technique to no...
research
12/23/2017

A Low-Rank Approach to Off-The-Grid Sparse Deconvolution

We propose a new solver for the sparse spikes deconvolution problem over...
research
12/01/2014

Classification and Reconstruction of High-Dimensional Signals from Low-Dimensional Features in the Presence of Side Information

This paper offers a characterization of fundamental limits on the classi...
research
12/17/2019

Dim the Lights! – Low-Rank Prior Temporal Data for Specular-Free Video Recovery

The appearance of an object is significantly affected by the illuminatio...
research
05/07/2012

Graph Prediction in a Low-Rank and Autoregressive Setting

We study the problem of prediction for evolving graph data. We formulate...
research
09/19/2014

Statistical Estimation: From Denoising to Sparse Regression and Hidden Cliques

These notes review six lectures given by Prof. Andrea Montanari on the t...
research
07/06/2020

Tensor Convolutional Sparse Coding with Low-Rank activations, an application to EEG analysis

Recently, there has been growing interest in the analysis of spectrogram...

Please sign up or login with your details

Forgot password? Click here to reset