Techniques from sparse signal representation are beginning to see significant impact in computer vision, often on nontraditional applications where the goal is not just to obtain a compact high-fidelity representation of the observed signal, but also to extract semantic information. The choice of dictionary plays a key role in bridging this gap: unconventional dictionaries consisting of, or learned from, the training samples themselves provide the key to obtaining state-of-the-art results and to attaching semantic meaning to sparse signal representations. Understanding the good performance of such unconventional dictionaries in turn demands new algorithmic and analytical techniques. This review paper highlights a few representative examples of how the interaction between sparse signal representation and computer vision can enrich both fields, and raises a number of open questions for further study.
Description
IEEE Xplore Abstract - Sparse Representation for Computer Vision and Pattern Recognition
%0 Journal Article
%1 5456194
%A Wright, J.
%A Ma, Yi
%A Mairal, J.
%A Sapiro, G.
%A Huang, T.S.
%A Yan, Shuicheng
%D 2010
%J Proceedings of the IEEE
%K ComputerVision denoising filtering image_processing
%N 6
%P 1031-1044
%R 10.1109/JPROC.2010.2044470
%T Sparse Representation for Computer Vision and Pattern Recognition
%U http://ieeexplore.ieee.org/xpls/abs_all.jsp?arnumber=5456194&tag=1
%V 98
%X Techniques from sparse signal representation are beginning to see significant impact in computer vision, often on nontraditional applications where the goal is not just to obtain a compact high-fidelity representation of the observed signal, but also to extract semantic information. The choice of dictionary plays a key role in bridging this gap: unconventional dictionaries consisting of, or learned from, the training samples themselves provide the key to obtaining state-of-the-art results and to attaching semantic meaning to sparse signal representations. Understanding the good performance of such unconventional dictionaries in turn demands new algorithmic and analytical techniques. This review paper highlights a few representative examples of how the interaction between sparse signal representation and computer vision can enrich both fields, and raises a number of open questions for further study.
@article{5456194,
abstract = {Techniques from sparse signal representation are beginning to see significant impact in computer vision, often on nontraditional applications where the goal is not just to obtain a compact high-fidelity representation of the observed signal, but also to extract semantic information. The choice of dictionary plays a key role in bridging this gap: unconventional dictionaries consisting of, or learned from, the training samples themselves provide the key to obtaining state-of-the-art results and to attaching semantic meaning to sparse signal representations. Understanding the good performance of such unconventional dictionaries in turn demands new algorithmic and analytical techniques. This review paper highlights a few representative examples of how the interaction between sparse signal representation and computer vision can enrich both fields, and raises a number of open questions for further study.},
added-at = {2014-06-11T10:30:05.000+0200},
author = {Wright, J. and Ma, Yi and Mairal, J. and Sapiro, G. and Huang, T.S. and Yan, Shuicheng},
biburl = {https://www.bibsonomy.org/bibtex/21b1cfc60e2aaa0a1fe966f20b052bfbd/alex_ruff},
description = {IEEE Xplore Abstract - Sparse Representation for Computer Vision and Pattern Recognition},
doi = {10.1109/JPROC.2010.2044470},
interhash = {171591f474e6cdd5456797ddca121345},
intrahash = {1b1cfc60e2aaa0a1fe966f20b052bfbd},
issn = {0018-9219},
journal = {Proceedings of the IEEE},
keywords = {ComputerVision denoising filtering image_processing},
month = {June},
number = 6,
pages = {1031-1044},
timestamp = {2014-06-11T10:30:05.000+0200},
title = {Sparse Representation for Computer Vision and Pattern Recognition},
url = {http://ieeexplore.ieee.org/xpls/abs_all.jsp?arnumber=5456194&tag=1},
volume = 98,
year = 2010
}