Title :
Perceptually relevant error classification in the context of picture coding
Author :
Xu, W. ; Hauske, G.
Author_Institution :
Tech. Univ. Munchen, Germany
Abstract :
Distortions resulting from typical source coding and channel interference are analyzed for monochrome still pictures and evaluated based on a segmentation-based error metric (SEM). The error picture is segmented into errors at own edges, errors representing exotic or spurious edges, and 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 and combined to build the SEM using the impairment addition law developed by the British Post Office. For a picture database consisting of typical coding distortions, this leads to a more satisfactory result than a generalized linear summation. Observers are found to be more sensitive to small visible exotic/spurious edges, but less sensitive to edge errors. Yet, large edge errors may rapidly deteriorate the picture quality
Keywords :
coding errors; image classification; image segmentation; interference (signal); source coding; telecommunication channels; video coding; British Post Office; blocking; blurring; channel interference; coding distortions; contouring; edge errors; error parameters; error picture; exotic edges; exotic structures; flat regions; impairment addition law; monochrome still pictures; perceptually relevant error classification; picture coding; picture database; random noise; residual errors; segmentation-based error metric; source coding; spurious edges;
Conference_Titel :
Image Processing and its Applications, 1995., Fifth International Conference on
Conference_Location :
Edinburgh
Print_ISBN :
0-85296-642-3
DOI :
10.1049/cp:19950727