A reduced-reference perceptual image and video quality metric based on edge preservation

被引:0
|
作者
Maria G Martini
Barbara Villarini
Federico Fiorucci
机构
[1] Kingston University London,SEC Faculty, School of Computing and Information Systems
[2] University of Perugia,DIEI
关键词
Video Sequence; Video Quality; Side Information; JPEG2000 Compression; Distorted Image;
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中图分类号
学科分类号
摘要
In image and video compression and transmission, it is important to rely on an objective image/video quality metric which accurately represents the subjective quality of processed images and video sequences. In some scenarios, it is also important to evaluate the quality of the received video sequence with minimal reference to the transmitted one. For instance, for quality improvement of video transmission through closed-loop optimisation, the video quality measure can be evaluated at the receiver and provided as feedback information to the system controller. The original image/video sequence--prior to compression and transmission--is not usually available at the receiver side, and it is important to rely at the receiver side on an objective video quality metric that does not need reference or needs minimal reference to the original video sequence. The observation that the human eye is very sensitive to edge and contour information of an image underpins the proposal of our reduced reference (RR) quality metric, which compares edge information between the distorted and the original image. Results highlight that the metric correlates well with subjective observations, also in comparison with commonly used full-reference metrics and with a state-of-the-art RR metric.
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