NEWCAST: Anticipating resource management and QoE provisioning for mobile video streaming

The knowledge of the future capacity variations in wireless networks using smartphones becomes more and more possible by exploiting the rich contextual information from smartphone sensors through mobile applications and services. It is entirely likely that such contextual information, which may include the traffic, mobility and radio conditions, could lead to a novel agile resource management not yet thought of. Inspired by the attractive features and potential advantages of this agile resource management, several approaches have been proposed during the last period. However, agile resource management also comes with its own challenges, and there are significant technical issues that still need to be addressed for successful rollout and operation of this technique. In this paper, we propose an approach (called NEWCAST) for anticipating throughput variation for mobile video streaming services. The solution of the optimization problem realizes a fundamental trade-off among critical metrics that impact the user's perceptual quality of the experience (QoE) and system utilization. Both simulated and real-world traces collected from [1] are carried out to evaluate the performance of NEWCAST. In particular, it is shown that NEWCAST provides the efficiency, computational complexity and robustness that the new 5G architectures require.

[1]  Gustavo de Veciana,et al.  Video Quality Assessment on Mobile Devices: Subjective, Behavioral and Objective Studies , 2012, IEEE Journal of Selected Topics in Signal Processing.

[2]  Christian Timmerer,et al.  Dynamic adaptive streaming over HTTP dataset , 2012, MMSys '12.

[3]  Srinivasan Seshan,et al.  Developing a predictive model of quality of experience for internet video , 2013, SIGCOMM.

[4]  Te-Yuan Huang,et al.  A buffer-based approach to rate adaptation: evidence from a large video streaming service , 2015, SIGCOMM 2015.

[5]  Bruno Sinopoli,et al.  A Control-Theoretic Approach for Dynamic Adaptive Video Streaming over HTTP , 2015, Comput. Commun. Rev..

[6]  Nick McKeown,et al.  Confused, timid, and unstable: picking a video streaming rate is hard , 2012, Internet Measurement Conference.

[7]  Gustavo de Veciana,et al.  NOVA: QoE-driven optimization of DASH-based video delivery in networks , 2013, IEEE INFOCOM 2014 - IEEE Conference on Computer Communications.

[8]  Moncef Gabbouj,et al.  Rate adaptation for adaptive HTTP streaming , 2011, MMSys.

[9]  Dacheng Yang,et al.  A method of QoE evaluation for adaptive streaming based on bitrate distribution , 2014, 2014 IEEE International Conference on Communications Workshops (ICC).

[10]  Lusheng Ji,et al.  Understanding the impact of network dynamics on mobile video user engagement , 2014, SIGMETRICS '14.

[11]  Deep Medhi,et al.  SARA: Segment aware rate adaptation algorithm for dynamic adaptive streaming over HTTP , 2015, 2015 IEEE International Conference on Communication Workshop (ICCW).

[12]  Yong Man Ro,et al.  An Evaluation of Bitrate Adaptation Methods for HTTP Live Streaming , 2014, IEEE Journal on Selected Areas in Communications.

[13]  M. G. Michalos,et al.  Dynamic Adaptive Streaming over HTTP , 2012 .

[14]  Michael Seufert,et al.  The Impact of Adaptation Strategies on Perceived Quality of HTTP Adaptive Streaming , 2014, VideoNext '14.

[15]  Thomas Stockhammer,et al.  Dynamic adaptive streaming over HTTP --: standards and design principles , 2011, MMSys.

[16]  Vyas Sekar,et al.  Understanding the impact of video quality on user engagement , 2011, SIGCOMM.

[17]  Ali C. Begen,et al.  An experimental evaluation of rate-adaptation algorithms in adaptive streaming over HTTP , 2011, MMSys.

[18]  Vyas Sekar,et al.  Improving fairness, efficiency, and stability in HTTP-based adaptive video streaming with FESTIVE , 2012, CoNEXT '12.

[19]  Xin Jin,et al.  Can Accurate Predictions Improve Video Streaming in Cellular Networks? , 2015, HotMobile.

[20]  Optimizing stored video delivery for mobile networks: The value of knowing the future , 2013, 2013 Proceedings IEEE INFOCOM.

[21]  Danny De Vleeschauwer,et al.  Model for estimating QoE of video delivered using HTTP adaptive streaming , 2013, 2013 IFIP/IEEE International Symposium on Integrated Network Management (IM 2013).

[22]  Wolfgang Kellerer,et al.  Quality-of-experience driven adaptive HTTP media delivery , 2013, 2013 IEEE International Conference on Communications (ICC).

[23]  Changhoon Yim,et al.  Evaluation of temporal variation of video quality in packet loss networks , 2011, Signal Process. Image Commun..

[24]  Yong Liu,et al.  Towards agile and smooth video adaptation in dynamic HTTP streaming , 2012, CoNEXT '12.

[25]  Nick McKeown,et al.  A buffer-based approach to rate adaptation , 2014, SIGCOMM.