Title :
Object recognition in brain CT-scans: knowledge-based fusion of data from multiple feature extractors
Author :
Li, Hongyi ; Deklerck, Rudi ; De Cuyper, Bernard ; Hermanus, A. ; Nyssen, Edgard ; Cornelis, Jan
Author_Institution :
Dept. of Electron. Eng., Vrije Univ., Brussels, Belgium
fDate :
6/1/1995 12:00:00 AM
Abstract :
Describes a knowledge-based image interpretation system for the segmentation and labeling of a series of 2-D brain X-ray CT-scans, parallel to the orbito-meatal plane. The system combines the image primitive information produced by different low level vision techniques in order to improve the reliability of the segmentation and the image interpretation. It is implemented in a blackboard environment that is holding various types of prior information and which controls the interpretation process. The scoring model is applied for the fusion of information derived from three types of image primitives (points, edges, and regions). A model, containing both analogical and propositional knowledge on the brain objects, is used to direct the interpretation process. The linguistic variables, introduced to describe the propositional features of the brain model, are defined by fuzzy membership functions. Constraint functions are applied to evaluate the plausibility of the mapping between image primitives and brain model data objects. Procedural knowledge has been integrated into different knowledge sources. Experimental results illustrate the reliability and robustness of the system against small variations in slice orientation and interpatient variability in the images
Keywords :
brain; computerised tomography; feature extraction; image segmentation; knowledge based systems; medical image processing; object recognition; analogical knowledge; blackboard environment; brain CT-scans object recognition; brain model; constraint functions; fuzzy membership functions; image interpretation; image primitive information; interpatient variability; knowledge-based data fusion; linguistic variables; low level vision techniques; mapping plausibility; medical diagnostic imaging; multiple feature extractors; prior information; propositional knowledge; scoring model; slice orientation; Biomedical imaging; Brain modeling; Computed tomography; Data mining; Feature extraction; Image segmentation; Labeling; Medical diagnostic imaging; Object recognition; Process control; Robustness; X-ray imaging;
Journal_Title :
Medical Imaging, IEEE Transactions on