Title :
Quality of Experience estimation using frame loss pattern and video encoding characteristics in DVB-H networks
Author :
Singh, Kamal Deep ; Rubino, Gerardo
Author_Institution :
INRIA, Rennes, France
Abstract :
Automatic estimation of Quality of Experience (QoE) is of key importance for mobile television networks such as DVB-H. These networks can install network probes in order to monitor QoE. The QoE feedback can be used to take some corrective measures, in case the quality drops, to bring back QoE to satisfactory level. In this paper, we extend a previously proposed noreference QoE monitoring module for H.264 video over DVB-H networks. We consider an additional parameter called quantisation parameter (QP) and consider frame loss pattern, instead of packet loss pattern, apart from the parameters used in the earlier work such as motion activity and loss rank in a Group of Pictures (GOP). The earlier work is restricted to a fixed encoding bitrate. By considering QP this restriction is removed because QP determines the bitrate as well as the resulting video quality. The results show that our estimation module based on Random Neural Networks (RNN) captures the non-linear relationship between these parameters and QoE. Moreover, our consideration of additional parameters leads to significant improvement in QoE estimation accuracy.
Keywords :
digital video broadcasting; mobile television; neural nets; telecommunication computing; video coding; DVB-H networks; H.264 video; fixed encoding bitrate; frame loss pattern; group of pictures; loss rank; mobile television networks; motion activity; quality of experience estimation; quantisation parameter; random neural networks; reference QoE monitoring; video encoding characteristics; video quality; Bit rate; Context; Digital video broadcasting; Encoding; Estimation; Quality of service; Recurrent neural networks; DVB-H; H.264; Mobile TV; QoE; Video Quality;
Conference_Titel :
Packet Video Workshop (PV), 2010 18th International
Conference_Location :
Hong Kong
Print_ISBN :
978-1-4244-9522-1
Electronic_ISBN :
978-1-4244-9520-7
DOI :
10.1109/PV.2010.5706832