Combining audio and video metrics to assess audio-visual quality

被引:0
作者
Helard A. Becerra Martinez
Mylène C. Q. Farias
机构
[1] University of Brasília (UnB),Department of Computer Science
[2] University of Brasília (UnB),Department of Electrical Engineering
来源
Multimedia Tools and Applications | 2018年 / 77卷
关键词
Video quality metrics; Audio quality metrics; Audio-visual quality metrics; Qoe; Multimedia quality assessment;
D O I
暂无
中图分类号
学科分类号
摘要
In this work, we studied the use of combination models to integrate audio and video quality estimates to predict the overall audio-visual quality. More specifically, an overall quality prediction for an audio-visual signal is obtained by combining the outputs of individual audio and video quality metrics with either a linear, a Minkowski, or a power function. A total of 7 different video quality metrics are considered, from which 3 are Full-Reference and 4 are No-Reference. Similarly, a total of 4 audio quality metrics are tested, 2 of which are Full-Reference and 2 are No-Reference. In total, we tested 18 Full-Reference audio-visual combination metrics and 24 No-Reference audio-visual combination metrics. The performance of all combination metrics are tested on two different audio-visual databases. Therefore, besides analysing the performance of a set of individual audio and video quality metrics, we analyzed the performance of the models that combine these audio and video quality metrics. This work gives an important contribution to the area of audio-visual quality assessment, since previous works either tested combination models only on subjective quality scores or used linear models to combine the outputs of a limited number of audio and video quality metrics.
引用
收藏
页码:23993 / 24012
页数:19
相关论文
共 45 条
  • [1] Bong DBL(2015)Objective blur assessment based on contraction errors of local contrast maps Multimed Tools Appl 74.17 7355-7378
  • [2] Khoo BE(2011)Objective video quality assessment methods: a classification, review, and performance comparison IEEE Trans Broadcast 57 165-182
  • [3] Chikkerur S(2005)No-reference video quality metric based on artifact measurements IEEE Int Conf Image Process ICIP 2005 3 III-141–4
  • [4] Sundaram V(2004)A basic multimedia quality model IEEE Trans Multimed 6 806-816
  • [5] Reisslein M(2011)Perceptual visual quality metrics: a survey J Vis Commun Image Represent 22 297-312
  • [6] Karam LJ(2006)P.563 The itu-t standard for single-ended speech quality assessment IEEE Trans Audio Speech Lang Process 14 1924-1934
  • [7] Farias MCQ(2014)Full-reference audio-visual video quality metric J Electron Imag 23 061108-061108
  • [8] Mitra SK(2013)Making a “completely blind” image quality analyzer IEEE Signal Process Lett 20 209-212
  • [9] Hands DS(2010)A two-step framework for constructing blind image quality indices IEEE Signal Process Lett 17 513-516
  • [10] Lin W(2011)Visual quality assessment algorithms: what does the future hold? Multimed Tools Appl 51 675-696