TY - GEN
T1 - Picture quality evaluation based on error segmentation
AU - Xu, Wen
AU - Hauske, Gert
PY - 1994
Y1 - 1994
N2 - A segmentation-based error metric (SEM) is proposed to evaluate the quality of pictures with impairments resulting from typical source coding algorithms and channel interference. After appropriate visual preprocessing, the error picture is segmented into errors on own edges of the picture, errors representing exotic or spurious edges, and remaining errors in flat regions to describe edge errors like blurring, exotic structures like blocking and contouring, and residual errors like random noise, respectively. Error parameters or distortion factors are derived by appropriate summation over the segmented components. The distortion metric is built by a combination of the parameters using a generalized multiple linear regression procedure. Tests with a picture data base consisting of impairments from various picture coding techniques applied to different types of pictures have shown that the SEM yields very promising results. The correlation coefficient with subjective ratings was 0.875, whereas the widely used PSNR had only a correlation of 0.653. In addition, it is also possible to classify type and amount of individual distortions.
AB - A segmentation-based error metric (SEM) is proposed to evaluate the quality of pictures with impairments resulting from typical source coding algorithms and channel interference. After appropriate visual preprocessing, the error picture is segmented into errors on own edges of the picture, errors representing exotic or spurious edges, and remaining errors in flat regions to describe edge errors like blurring, exotic structures like blocking and contouring, and residual errors like random noise, respectively. Error parameters or distortion factors are derived by appropriate summation over the segmented components. The distortion metric is built by a combination of the parameters using a generalized multiple linear regression procedure. Tests with a picture data base consisting of impairments from various picture coding techniques applied to different types of pictures have shown that the SEM yields very promising results. The correlation coefficient with subjective ratings was 0.875, whereas the widely used PSNR had only a correlation of 0.653. In addition, it is also possible to classify type and amount of individual distortions.
UR - http://www.scopus.com/inward/record.url?scp=0028745794&partnerID=8YFLogxK
M3 - Conference contribution
AN - SCOPUS:0028745794
SN - 081941638X
T3 - Proceedings of SPIE - The International Society for Optical Engineering
SP - 1454
EP - 1465
BT - Proceedings of SPIE - The International Society for Optical Engineering
PB - Society of Photo-Optical Instrumentation Engineers
T2 - Visual Communications and Image Processing '94
Y2 - 25 September 1994 through 29 September 1994
ER -