posted by organizer: jmairal || 9266 views || tracked by 7 users: [display]

IJCV SI on sparse coding 2014 : IJCV special issue on sparse coding


When N/A
Where N/A
Submission Deadline Jan 31, 2014
Final Version Due Jul 30, 2014
Categories    computer vision   image processing   machine learning

Call For Papers

Aims and Scope

Sparse models have gained a tremendous success during the last years in various scientific fields. In statistics and machine learning, the sparsity principle is used to perform model selection—that is, selecting a simple model among a large collection of them. This is interpreted as automatically selecting a few predictors that explain the observed data. In signal processing, sparsity is used for approximating signals as a linear combination of a few
dictionary elements, imposing a union-of-subspaces model on the true data. Not surprisingly, similar formulations and algorithms have been developed in statistics and signal processing, from different point of views, and are now extremely popular in both disciplines. The image processing and computer vision communities are a dominant part of this trend, and we have seen a growing interest in sparse models and their deployment to applications in these fields. In particular, methods where the dictionary is learned from data have been successfully used for a wide range of computer vision and image processing tasks, such as feature and codebook learning, image restoration, super-resolution, compression, visual tracking, and many others. This special issue of IJCV welcomes submissions developing novel sparse coding techniques for computer vision and image processing problems, novel applications of sparse coding, as well as theoretical contributions that are relevant to computer vision.

Topics of Interest
The topics of interest include, but are not limited to
• sparse coding and visual recognition: feature learning; scene and object classification; action recognition; scene parsing; image description; face recognition;
• sparse coding for image processing: denoising; deblurring; inpainting; super-resolution; inverse problems; image enhancement; multispectral imaging; medical imaging; interpolation; compression;
• other computer vision applications: tracking; segmentation; 3D-reconstruction; pose estimation; image matching; computational photography; image retrieval; contour estimation; optical flow;
• methodological and theoretical contributions relevant to computer vision: dictionary learning; optimization for sparse estimation; hierarchical models, compressed sensing.

Submission Process
Authors are encouraged to submit high-quality, original work that has neither appeared in, nor is under consideration by, other journals. All open submissions will be peer reviewed subject to the standards of the journal. Manuscripts based on previously published conference papers must be extended substantially. Manuscripts should be submitted to: Detailed instructions are available on the IJCV website. Please
select “S.I. : Sparse Coding” in the menu “Choose Article Type” after clicking on “Submit new manuscript”.

Important Dates
Paper submission deadline: January 31st, 2014.
Final manuscript due: July 30th, 2014.

Guest Editors
Francis Bach,, INRIA, Paris, France;
Miki Elad,, Computer Science Department, The Technion, Haifa, Israel;
Julien Mairal,, INRIA, Grenoble, France.

Related Resources

Special Session in SMC 2020   Special Session on Sparse Data Analysis, Representation Learning and Multi-Agent System within the IEEE SMC 2020
ICDM 2021   21th Industrial Conference on Data Mining
ACIVS 2020   Advanced Concepts for Intelligent Vision Systems
Signal 2021   8th International Conference on Signal and Image Processing
BITR 2020   Build IT Right
MLDM 2021   17th International Conference on Machine Learning and Data Mining
JAAMAS MODeM SI 2021   Special Issue of JAAMAS on Multi-Objective Decision Making (MODeM)
CCVPR 2020   2020 3rd International Joint Conference on Computer Vision and Pattern Recognition (CCVPR 2020)
SI-DAMLE 2020   Special Issue on Data Analytics and Machine Learning in Education
VISAPP 2021   16th International Conference on Computer Vision Theory and Applications