CORTEZ, P. C.; http://lattes.cnpq.br/5024602152304064; CORTEZ, Paulo César.
Resumo:
This thesis presents a new methodology for polygonal model based 2D shape recognition.
This methodology enables a unified treatment to the model building and recognition
problems, through the use of discriminant functions. An artificial vision
system implementing the proposed methodology is also described. Among the relevant
innovations presented by the system, one can mention the integration of the sequential
procedures required and the use of discriminant functions with variable angular
thresholds, for hypothesis grouping and validation. Five different hypothesis evaluation
techniques have been tested, for five distinct test scenes. The resulting system is
able to deal with 2D shapes, isolated or superposed (partially visible) and randomly
positioned.