posted by system || 8916 views || tracked by 6 users: [display]

DCC 2011 : Data Compression Conference

FacebookTwitterLinkedInGoogle


Conference Series : Data Compression Conference
 
Link: http://www.cs.brandeis.edu/~dcc/Call.html
 
When Mar 29, 2011 - Mar 31, 2011
Where Snowbird, UT, USA
Submission Deadline Nov 1, 2010
 

Call For Papers

Data Compression Conference (DCC)
(Proceedings to be published by the IEEE Computer Society Press.)

March 29 - 31, 2011
(Reception on Monday evening, March 28;
presentations on Tuesday, Wednesday, and on Thursday morning.)

Snowbird, Utah
(All sessions to be held in the Cliff Lodge.)


Program Committee:

James A. Storer, Brandeis University (DCC Chair)
Michael W. Marcellin, University of Arizona (Committee Chair)
Henrique Malvar, Microsoft (Submissions Chair)
James E. Fowler, Mississippi State University (Publicity Chair)
Alberto Apostolico, Georgia Institute of Technology / Università di Padova
Ali Bilgin, University of Arizona
Charles D. Creusere, New Mexico State University
Hanying Feng, Brion Technologies
Vivek Goyal, Massachusetts Institute of Technology
Robert M. Gray, Stanford University
Hamid Jafarkhani, University of California Irvine
Tamas Linder, Queen's University
Giovanni Motta, Hewlett-Packard
Gonzalo Navarro, University of Chile
Majid Rabbani, Eastman Kodak Co.
Yuriy Reznik, Qualcomm
Serap Savari, Texas A&M University
Khalid Sayood, University of Nebraska
Gadiel Seroussi, HP Laboratories
Joan Serra-Sagrista, Universitat Autonoma Barcelona
Dana Shapira, Ashkelon Academic College
Dafna Sheinwald, IBM Haifa Lab
Jiantao Wen, Tsinghua University
Gregory W. Wornell, MIT
Feng Wu, Microsoft Research Asia


Theme:

An international forum for current work on data compression and related applications. The conference addresses not only compression methods for specific types of data (text, images, video, audio, medical, scientific, space, graphics, web content, etc.), but also the use of techniques from information theory and data compression in networking, communications, and storage applications involving large data sets, (including image and information mining, retrieval, archiving, backup, communications, and HCI). Both theoretical and experimental work are of interest. Topics of interest include but are not limited to: Lossless and lossy compression algorithms for specific types of data (text, images, multi-spectral and hyper-spectral images, palette images, video, speech, music, maps, instrument and sensor data, space data, earth observation data, graphics, 3D representations, animation, bit-maps, etc.), source coding, text compression, joint source-channel coding, multiple description coding, quantization theory, vector quantization (VQ), multiple description VQ, compression algorithms that employ transforms (including DCT and wavelet transforms), bi-level image compression, gray scale and color image compression, video compression, movie compression, geometry compression, speech and audio compression, compression of multi-spectral and hyper-spectral data, compression of science, weather, and space data, source coding in multiple access networks, parallel compression algorithms and hardware, fractal based compression methods, error resilient compression, adaptive compression algorithms, string searching and manipulation used in compression applications, closest-match retrieval in compression applications, browsing and searching compressed data, content based retrieval employing compression methods, steganography, minimal length encoding and applications to learning, system issues relating to data compression (including error control, data security, indexing, and browsing), medical imagery storage and transmission, compression of web graphs and related data structures, compression applications and issues for computational biology, compression applications and issues for the internet, compression applications and issues for mobile computing, applications of compression to file distribution and software updates, applications of compression to files storage and backup systems, applications of compression to data mining, applications of compression to information retrieval, applications of compression to image retrieval, applications of compression and information theory to human-computer interaction (HCI), data compression standards including the JPEG, JPEG2000, MPEG (MPEG1, MPEG2, MPEG4, MPEG7, etc.), H.xxx, and G.xxx families.

Related Resources

IEEE JSTSP SI 2020   IEEE JSTSP Deep Learning for Image/Video Restoration and Compression (Special Issue on)
CCBD--Ei Compendex & Scopus 2021   2021 The 8th International Conference on Cloud Computing and Big Data (CCBD 2021)--Ei Compendex & Scopus
ML_BDA 2021   Special Issue on Machine Learning Technologies for Big Data Analytics
BDIoT 2021   5th International Conference on Big Data and Internet of Things - BDIoT’21
ICSRS--Scopus & EI Compendex 2021   2021 5th International Conference on System Reliability and Safety (ICSRS 2021)--Scopus & EI Compendex
SI-DAMLE 2020   Special Issue on Data Analytics and Machine Learning in Education
CCBD--Ei & Scopus 2021   2021 The 8th International Conference on Cloud Computing and Big Data (CCBD 2021)--Ei Compendex & Scopus
SOFSEM 2021   47th International Conference on Current Trends in Theory and Practice of Computer Science
ITAS--EI Compendex, Scopus 2021   2021 Information Technology & Applications Symposium (ITAS 2021)--EI Compendex, Scopus
Big Data Analytics in Sustainable City 2021   IS04: Big Data Analytics in Sustainable and Smart City