PSNR is still one of the most often and universally used visual
quality metrics. Although it is not very well suited to describe
the human perception of visual quality, its simplicity and familiarity
lead to its extensive use in many applications. We
propose to improve the predication accuracy of PSNR by simple
temporal pooling and thus not only using the mean PSNR,
but also to exploit other statistical properties. In order to support
this approach, we conducted extensive subjective testing
of HDTV video sequences at typical bit rates for consumer
and broadcasting applications. Using temporal pooling, we
were able to achieve an improvement of nearly 10 % in the
predication accuracy of PSNR for visual quality while not increasing
the computational complexity significantly. Also this
approach may be extendible to other frame-based metrics.
«
PSNR is still one of the most often and universally used visual
quality metrics. Although it is not very well suited to describe
the human perception of visual quality, its simplicity and familiarity
lead to its extensive use in many applications. We
propose to improve the predication accuracy of PSNR by simple
temporal pooling and thus not only using the mean PSNR,
but also to exploit other statistical properties. In order to support
this approach, we conducted extensive subjective testi...
»