3차원 물체인식을 위한 신경회로망 인식시트메의 설계

  • 김대영 (계명전문대학 전산정보처리과) ;
  • 이창순 (경산대학교 정보처리학과)
  • Published : 1997.06.01

Abstract

Multilayer neural network using a modified beackpropagation learning algorithm was introduced to achieve automatic identification of different types of aircraft in a variety of 3-D orientations. A 3-D shape of an aircraft can be described by a library of 2-D images corresponding to the projected views of an aircraft. From each 2-D binary aircraft image we extracted 2-D invariant (L, Φ) feature vector to be used for training neural network aircraft classifier. Simulations concerning the neural network classification rate was compared using nearest-neighbor classfier (NNC) which has been widely served as a performance benchmark. And we also introduced reliability measure of the designed neural network classifier.

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