DOIONLINE

DOIONLINE NO - IJAECS-IRAJ-DOIONLINE-5213

Publish In
International Journal of Advances in Electronics and Computer Science-IJAECS
Journal Home
Volume Issue
Issue
Volume-3,Issue-7  ( Jul, 2016 )
Paper Title
Machine Learning Based Algorithm For High Efficiency Video Coding
Author Name
Susmita Das, Chhaya. S. Pawar
Affilition
Datta Meghe College of engineering, Datta Meghe College of engineering
Pages
87-90
Abstract
High Efficiency Video Coding HEVC/H.265 is a futuristic standard for video compression with the promise of video quality standards at approximately 50% lower bit rates. Over the past decade, MPEG and H.264/Advanced Video Coding were standards used for compression widely in various multimedia applications. They provided extensive support for a variety of image and video resolutions with comfortable compression standards. However, with the increasing demand for high quality video resolutions like High Definition/Ultra High Definition (HD/UHD) these standards could not provide comparable compression efficiency. HEVC due to its increased flexibility in hybrid coding structures is suitable to accommodate high quality content like HD/UHD. However, this increases the complexity of computations up by 10 times as compared to H.264/AVC. The computations are mainly for selection of appropriate Coding Units (CU) in order to view the video content without compromising on quality. Machine learning is a viable solution for coding unit selection as it can learn/analyze patterns through extracted features from any data set. In this paper, a machine learning based algorithm using Support Vector Machine (SVM) is proposed with an attempt to select the appropriate coding units and to eliminate unnecessary computations. Index Terms- AVC, Coding Unit (CU), HEVC, machine learning.
  View Paper