DocumentCode
3612237
Title
A Distributed Video Management Cloud Platform Using Hadoop
Author
Xin Liu ; Dehai Zhao ; Liang Xu ; Weishan Zhang ; Jijun Yin ; Xiufeng Chen
Author_Institution
Hisense TransTech, Ltd., Qingdao, China
Volume
3
fYear
2015
fDate
7/7/1905 12:00:00 AM
Firstpage
2637
Lastpage
2643
Abstract
Due to complexities of big video data management, such as massive processing of large amount of video data to do a video summary, it is challenging to effectively and efficiently store and process these video data in a user friendly way. Based on the parallel processing and flexible storage capabilities of cloud computing, in this paper, we propose a practical massive video management platform using Hadoop, which can achieve a fast video processing (such as video summary, encoding, and decoding) using MapReduce, with good usability, performance, and availability. Red5 streaming media server is used to get video stream from Hadoop distributed file system, and Flex is used to play video in browsers. A user-friendly interface is designed for managing the whole platform in a browser-server style using J2EE. In addition, we show our experiences on how to fine-tune the Hadoop to get optimized performance for different video processing tasks. The evaluations show that the proposed platform can satisfy the requirements of massive video data management.
Keywords
cloud computing; data handling; parallel processing; video streaming; Flex; Hadoop distributed file system; J2EE; MapReduce; Red5 streaming media server; browser-server style; cloud platform; decoding; distributed video data management; encoding; massive video management platform; user-friendly interface; video processing; video stream; video summary; Browsers; Cameras; Flexible printed circuits; Streaming media; Throughput; Web servers; Hadoop; J2EE; MapReduce; video management; video processing;
fLanguage
English
Journal_Title
Access, IEEE
Publisher
ieee
ISSN
2169-3536
Type
jour
DOI
10.1109/ACCESS.2015.2507788
Filename
7353119
Link To Document