Title :
Medical applications of mathematical morphology
Author :
Matsopoulos, G.K. ; Marshall, S.
Author_Institution :
Strathclyde Univ., Glasgow, UK
Abstract :
Nonlinear filters have become very popular tools in signal and image processing because of their attractive properties. Their characteristics differentiate them strongly from the existing linear filters in may areas of image processing such as noise reduction, edge detection, segmentation, etc. A very important class of nonlinear digital signal/image processing results from the concepts of mathematical morphology and is known as morphological filtering (Serra, 1982) mathematical morphology is a new approach to signal/image analysis, using nonlinear pictorial transformations and functionals derived from set theory and integral geometry. As a result, morphological filters are powerful tools for geometrical shape analysis and description and their applications in image processing and analysis are numerous. Areas of applications include shape smoothing, texture analysis, automated industrial inspection, enhancement and noise suppression. The present paper investigates the use of various existing and new morphological operations for filtering and segmenting real medical data with the purpose of assisting diagnosis
Keywords :
digital filters; filtering and prediction theory; image segmentation; mathematical morphology; medical image processing; patient diagnosis; automated industrial inspection; diagnosis; enhancement; functionals; geometrical shape analysis; image processing; integral geometry; mathematical morphology; medical data; morphological filtering; noise suppression; nonlinear pictorial transformations; set theory; shape smoothing; signal analysis; texture analysis;
Conference_Titel :
Morphological and Nonlinear Image Processing Techniques, IEE Colloquium on
Conference_Location :
London