In this paper, we propose a new method for an objective measurement of video quality based on edge degradation. One of the most important requirements for an objective method for video quality measurement is that it should provide consistent performances over a wide range of video sequences that are not used in the designing stage. By analyzing subjective scores of various video sequences, we found that the human visual system is sensitive to degradation around edges. In other words, when edge areas of a video are blurred, evaluators tend to give low scores to the video even though the overall mean squared error is not so large. Based on this observation, we propose an objective video quality measurement method that measures degradation around edges. In the proposed method, we first apply an edge detection algorithm to videos and find edge areas. Then, we measure degradation of those edge areas by computing mean squared error. From this mean squared error, we compute the PSNR and use it as video quality metric. Experimental results show that the proposed method compares favorably with the current objective methods for video quality measurement. Furthermore, when the proposed method is applied to test video sequences that are not used in the designing stage, it still consistently provides satisfactory performances.
[1]
C. van den Branden Lambrecht.
A working spatio-temporal model of the human visual system for image restoration and quality assessment applications
,
1996,
1996 IEEE International Conference on Acoustics, Speech, and Signal Processing Conference Proceedings.
[2]
Scott J. Daly,et al.
Visible differences predictor: an algorithm for the assessment of image fidelity
,
1992,
Electronic Imaging.
[3]
Reginald L. Lagendijk,et al.
Perceptual image quality based on a multiple channel HVS model
,
1995,
1995 International Conference on Acoustics, Speech, and Signal Processing.
[4]
Alexandre Gonçalves Silva,et al.
Video Quality Assessment Using Objective Parameters Based on Image Segmentation
,
1999
.
[5]
Chulhee Lee,et al.
Objective measurements of video quality using the wavelet transform
,
2003
.
[6]
Jerry D. Gibson,et al.
Digital coding of waveforms: Principles and applications to speech and video
,
1985,
Proceedings of the IEEE.
[7]
T. Vlachos,et al.
Detection of blocking artifacts in compressed video
,
2000
.
[8]
Anil K. Jain.
Fundamentals of Digital Image Processing
,
2018,
Control of Color Imaging Systems.