Analysis of challenges faced by WebRTC videoconferencing and a remedial architecture
January 01, 2017 Β· Declared Dead Β· π Vol. 14 No. 10 OCTOBER 2016 International Journal of Computer Science and Information Security
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Authors
Maruf Pasha, Furrakh Shahzad, Arslan Ahmad
arXiv ID
1701.09182
Category
cs.MM: Multimedia
Citations
7
Venue
Vol. 14 No. 10 OCTOBER 2016 International Journal of Computer Science and Information Security
Last Checked
3 months ago
Abstract
Lately, World Wide Web came up with an evolution in the niche of videoconference applications. Latest technologies give browsers a capacity to initiate real-time communications. WebRTC is one of the free and open source projects that aim at providing the users freedom to enjoy real-time communications, and it does so by following and redefining the standards. However, WebRTC is still a new project and it lacks some high-end videoconferencing features such as media mixing, recording of a session and different network conditions adaptation. This paper is an attempt at analyzing the shortcomings and challenges faced by WebRTC and proposing a Multipoint Control Unit or traditional communications entity based architecture as a solution.
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