Dictionary Learning from Incomplete Data

01/13/2017
by   Valeriya Naumova, et al.
0

This paper extends the recently proposed and theoretically justified iterative thresholding and K residual means algorithm ITKrM to learning dicionaries from incomplete/masked training data (ITKrMM). It further adapts the algorithm to the presence of a low rank component in the data and provides a strategy for recovering this low rank component again from incomplete data. Several synthetic experiments show the advantages of incorporating information about the corruption into the algorithm. Finally, image inpainting is considered as application example, which demonstrates the superior performance of ITKrMM in terms of speed at similar or better reconstruction quality compared to its closest dictionary learning counterpart.

READ FULL TEXT

page 18

page 19

page 20

page 21

research
10/27/2016

Fast Low-rank Shared Dictionary Learning for Image Classification

Despite the fact that different objects possess distinct class-specific ...
research
01/31/2016

Learning a low-rank shared dictionary for object classification

Despite the fact that different objects possess distinct class-specific ...
research
03/22/2017

Robust Kronecker-Decomposable Component Analysis for Low-Rank Modeling

Dictionary learning and component analysis are part of one of the most w...
research
08/31/2017

Online Convolutional Dictionary Learning

Convolutional sparse representations are a form of sparse representation...
research
04/24/2018

On Learning Sparsely Used Dictionaries from Incomplete Samples

Most existing algorithms for dictionary learning assume that all entries...
research
04/19/2018

Dictionary learning - from local towards global and adaptive

This paper studies the convergence behaviour of dictionary learning via ...
research
10/15/2021

NNK-Means: Dictionary Learning using Non-Negative Kernel regression

An increasing number of systems are being designed by first gathering si...

Please sign up or login with your details

Forgot password? Click here to reset