Video transcoding using machine learning

File
Contributors
Publisher
Florida Atlantic University
Date Issued
2008
Description
The field of Video Transcoding has been evolving throughout the past ten years. The need for transcoding of video files has greatly increased because of the new upcoming standards which are incompatible with old ones. This thesis takes the method of using machine learning for video transcoding mode decisions and discusses ways to improve the process of generating the algorithm for implementation in different video transcoders. The transcoding methods used decrease the complexity in the mode decision inside the video encoder. Also methods which automate and improve results are discussed and implemented in two different sets of transcoders: H.263 to VP6 , and MPEG-2 to H.264. Both of these transcoders have shown a complexity loss of almost 50%. Video transcoding is important because the quantity of video standards have been increasing while devices usually can only decode one specific codec.
Note

by Christopher Holder.

Language
Type
Form
Extent
ix, 48 p. : ill. (some col.).
Identifier
316795951
OCLC Number
316795951
Additional Information
by Christopher Holder.
Thesis (M.S.C.S.)--Florida Atlantic University, 2008.
Includes bibliography.
Electronic reproduction. Boca Raton, Fla., 2008. Mode of access: World Wide Web.
Date Backup
2008
Date Text
2008
Date Issued (EDTF)
2008
Extension


FAU
FAU
admin_unit="FAU01", ingest_id="ing3474", creator="creator:SPATEL", creation_date="2009-03-23 14:16:19", modified_by="super:SPATEL", modification_date="2009-06-24 14:40:08"

IID
FADT166451
Person Preferred Name

Holder, Christopher.
Graduate College
Physical Description

electronic
ix, 48 p. : ill. (some col.).
Title Plain
Video transcoding using machine learning
Use and Reproduction
http://rightsstatements.org/vocab/InC/1.0/
Origin Information


Boca Raton, Fla.

Florida Atlantic University
2008
Place

Boca Raton, Fla.
Title
Video transcoding using machine learning
Other Title Info

Video transcoding using machine learning