DocumentCode :
3404366
Title :
Machine learning based rate adaptation with elastic feature selection for HTTP-based streaming
Author :
Yu-Lin Chien ; Lin, Kate Ching-Ju ; Ming-Syan Chen
Author_Institution :
Dept. of Electr. Eng., Nat. Taiwan Univ., Taipei, Taiwan
fYear :
2015
fDate :
June 29 2015-July 3 2015
Firstpage :
1
Lastpage :
6
Abstract :
Dynamic Adaptive Streaming over HTTP (DASH) has become an emerging application nowadays. Video rate adaptation is a key to determine the video quality of HTTP-based media streaming. Recent works have proposed several algorithms that allow a DASH client to adapt its video encoding rate to network dynamics. While network conditions are typically affected by many different factors, these algorithms however usually consider only a few representative information, e.g., predicted available bandwidth or fullness of its playback buffer. In addition, the error in bandwidth estimation could significantly degrade their performance. Therefore, this paper presents Machine Learning-based Adaptive Streaming over HTTP (MLASH), an elastic framework that exploits a wide range of useful network-related features to train a rate classification model. The distinct properties of MLASH are that its machine learning-based framework can be incorporated with any existing adaptation algorithm and utilize big data characteristics to improve prediction accuracy. We show via trace-based simulations that machine learning-based adaptation can achieve a better performance than traditional adaptation algorithms in terms of their target quality of experience (QoE) metrics.
Keywords :
feature selection; hypermedia; learning (artificial intelligence); media streaming; pattern classification; quality of experience; video coding; DASH client; HTTP-based media streaming; HTTP-based streaming; MLASH; QoE metrics; adaptation algorithm; bandwidth estimation; big data characteristics; dynamic adaptive streaming over HTTP; elastic feature selection; machine learning based rate adaptation; machine learning-based adaptation; machine learning-based adaptive streaming over HTTP; machine learning-based framework; network condition; network dynamics; network-related feature; playback buffer; prediction accuracy; rate classification model; representative information; target quality of experience metrics; trace-based simulation; video encoding rate; video quality; video rate adaptation; Bandwidth; Lead; Servers; Streaming media; Training; HTTP Streaming; Machine Learning; Rate Adaptation;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Multimedia and Expo (ICME), 2015 IEEE International Conference on
Conference_Location :
Turin
Type :
conf
DOI :
10.1109/ICME.2015.7177418
Filename :
7177418
Link To Document :
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