A Video Quality Assessment Method for VoIP Applications Based on User Experience

Abstract An objective video quality assessment method is proposed to evaluate the video quality in voice over internet protocol (VoIP) applications under network distortion. The fluency and the clarity of videos are two main parts of the factors that affect user experience, thus the method evaluates these two parts to assess the distortions of videos in VoIP applications caused by codec and packet loss. The clarity of the video is measured by calculating block artifacts and frame blurring. Video blocking artifacts are measured by splitting the picture into small blocks and calculating the difference of the pixels around each border while video blurring is measured by getting edge information through Sobel operator, and counting the gradient histogram. Then the video clarity can be measured by a weighted sum of block artifacts score and blurring score using linear regression. The scores are also normalized in order to eliminate the impact of different video contents. The video fluency is calculated by counting the wrong frame in the video. Finally, a weighted sum of video clarity score and video fluency score can represent the quality of the video. The experimental results show that the objective quality scores have a strong correlation with the subjective quality scores, and the algorithm concludes two parts of user experience other than just image quality, which is more comprehensive and it can be used in video quality assessment in VoIP applications.

[1]  Qin-zhang Wu,et al.  No-reference quality index for image blur: No-reference quality index for image blur , 2010 .

[2]  Wu Qin-zhang No-reference quality index for image blur , 2010 .

[3]  Chu Jian Review on full reference image quality assessment algorithms , 2014 .

[4]  Rajiv Soundararajan,et al.  Video Quality Assessment by Reduced Reference Spatio-Temporal Entropic Differencing , 2013, IEEE Transactions on Circuits and Systems for Video Technology.

[5]  Lina J. Karam,et al.  A No-Reference Objective Image Sharpness Metric Based on the Notion of Just Noticeable Blur (JNB) , 2009, IEEE Transactions on Image Processing.

[6]  Federica Battisti,et al.  QoS to QoE mapping model for wired/wireless video communication , 2014, 2014 Euro Med Telco Conference (EMTC).

[7]  Jean-Bernard Martens,et al.  A single-ended blockiness measure for JPEG-coded images , 2002, Signal Process..

[8]  Alan C. Bovik,et al.  A subjective study to evaluate video quality assessment algorithms , 2010, Electronic Imaging.

[9]  Xiaojun Wu,et al.  Video quality assessment using content-weighted spatial and temporal pooling method , 2015, J. Electronic Imaging.

[10]  Oliver Hohlfeld,et al.  Impact of frame rate and resolution on objective QoE metrics , 2010, 2010 Second International Workshop on Quality of Multimedia Experience (QoMEX).

[11]  Bill Triggs,et al.  Histograms of oriented gradients for human detection , 2005, 2005 IEEE Computer Society Conference on Computer Vision and Pattern Recognition (CVPR'05).

[12]  Sujit Dey,et al.  Deriving and Validating User Experience Model for DASH Video Streaming , 2015, IEEE Transactions on Broadcasting.