부분적으로 가려진 물체의 인식 룰의 습득

Learning Rules for Partially Occluded Object Recognition

  • 정재영 (성균관대학교 정보공학과) ;
  • 김문현 (성균관대학교 정보공학과)
  • 발행 : 1990.06.01

초록

Experties of recognizing an object despite of every possible occlusions among objects is difficult to be provided directly to a system. In this paper, we propose a method for inferring inherent shape-characteirstics of an object from training views provided. The method learns rules incrementally by alternating the rule induction process from limited number of training views and the rule verification process from the following taining views. The learned rules are represented using logical expressions to enhance the readability. Thr proposed method is tested by simulating occlusions on 2-dimensional objects to examine the learning process and to show improvement of recognition rate. Thr result shows that it can be applied to a practical system for 3-dimensional object recognition.

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