Treffer: Nefis: A network coding based flexible device-to-device video streaming scheme.

Title:
Nefis: A network coding based flexible device-to-device video streaming scheme.
Authors:
Yin, Jun1 (AUTHOR) junyin@njupt.edu.cn, Wen, Jiaxin1 (AUTHOR) wen.jiaxin1@outlook.com, Zhu, Ming2 (AUTHOR) ming.zhu@unlv.edu, Li, Yulong3 (AUTHOR), Wang, Lei1,3 (AUTHOR) leiwang@njupt.edu.cn
Source:
Journal of Network & Computer Applications. Jul2024, Vol. 227, pN.PAG-N.PAG. 1p.
Database:
Business Source Premier

Weitere Informationen

Wireless device-to-device (D2D) communication has empowered efficient and convenient video sharing among neighboring devices. However, the mobility and diversity of user devices, combined with dynamically shifting channel conditions, make these processes susceptible to environmental interference. In this paper, we introduce an adaptive network coding scheme tailored for D2D raw source video streaming in the scalable video coding (SVC) format. Video frames are partitioned into equal-sized fragments and encoded into streaming packets with the addition of certain redundancy. To address the observed deficiency where decoding throughput of coded video frames is generally lower than that of the encoding operation on mobile device platforms, we introduce a parallel decoding algorithm based on LU decomposition. Furthermore, we propose a flexible adjustment mechanism, named Nefis, which dynamically adapts the network coding redundancy and stream resolution based on the statistical model established to predict current network conditions and video streaming quality. Implementation on Android platform demonstrates that Nefis reduce redundancy in bandwidth usage during streaming process and enhance resilience to network dynamics. Experimental results also conclusively demonstrate the feasibility and advantages of network coding technology in D2D streaming applications. Nevertheless, achieving these advantages requires carefully designed encoding and decoding mechanisms. [ABSTRACT FROM AUTHOR]

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