Title :
Intelligent shape recognition for complex industrial tasks
Author :
Yang, Hyung Suk ; Sengupta, Sanjay
Author_Institution :
Dept. of Electr. & Comput. Eng., Iowa Univ., Iowa City, IA, USA
fDate :
6/1/1988 12:00:00 AM
Abstract :
A knowledge-based shape representation and recognition system that can handle a large class of objects under less constrained situations than required for current machine vision system is proposed. Intelligent integration of different shape representation schemes and generation of the best shape recognition strategy are carried out using global shape properties. The proposed scheme effectively incorporates model-driven top-down and data-driven bottom-up approaches of shape analysis. By analyzing global shape properties, the essential features and their degrees of importance are determined quickly. In the representation phase, objects are described by using these essential features; in the recognition phase, the search for the best candidate is restricted to the models represented by these features, and the observed shape is matched to the candidate models in order of importance of the essential features. Systems are being developed for 2D and 3D shapes separately since they exploit different visual data, i.e. photometric and range, respectively.<>
Keywords :
computer vision; computerised pattern recognition; expert systems; complex industrial tasks; computer vision; data-driven bottom-up approaches; intelligent shape representation; knowledge-based system; model-driven top-down approach; photometric data; range data; shape analysis; shape recognition; Feedback; Flexible manufacturing systems; Layout; Machine vision; Manufacturing industries; Robot sensing systems; Service robots; Shape; Skeleton; Stereo vision;
Journal_Title :
Control Systems Magazine, IEEE