TY - JOUR
T1 - Neural networks for convex hull computation
AU - Leung, Yee
AU - Zhang, Jiang She
AU - Xu, Zong Ben
PY - 1997
Y1 - 1997
N2 - Computing convex hull is one of the central problems in various applications of computational geometry. In this paper, a convex hull computing neural network (CHCNN) is developed to solve the related problems in the N-dimensional spaces. The algorithm is based on a two-layered neural network, topologically similar to ART, with a newly developed adaptive training strategy called excited learning. The CHCNN provides a parallel on-line and real-time processing of data which, after training, yields two closely related approximations, one from within and one from outside, of the desired convex hull. It is shown that accuracy of the approximate convex hulls obtained is around O[K-1/(N-1)], where K is the number of neurons in the output layer of the CHCNN. When K is taken to be sufficiently large, the CHCNN can generate any accurate approximate convex hull. We also show that an upper bound exists such that the CHCNN will yield the precise convex hull when K is larger than or equal to this bound. A series of simulations and applications is provided to demonstrate the feasibility, effectiveness, and high efficiency of the proposed algorithm.
AB - Computing convex hull is one of the central problems in various applications of computational geometry. In this paper, a convex hull computing neural network (CHCNN) is developed to solve the related problems in the N-dimensional spaces. The algorithm is based on a two-layered neural network, topologically similar to ART, with a newly developed adaptive training strategy called excited learning. The CHCNN provides a parallel on-line and real-time processing of data which, after training, yields two closely related approximations, one from within and one from outside, of the desired convex hull. It is shown that accuracy of the approximate convex hulls obtained is around O[K-1/(N-1)], where K is the number of neurons in the output layer of the CHCNN. When K is taken to be sufficiently large, the CHCNN can generate any accurate approximate convex hull. We also show that an upper bound exists such that the CHCNN will yield the precise convex hull when K is larger than or equal to this bound. A series of simulations and applications is provided to demonstrate the feasibility, effectiveness, and high efficiency of the proposed algorithm.
KW - ART-like neural network
KW - Computational geometry
KW - Convex hull computation
KW - Excited learning
UR - https://www.scopus.com/pages/publications/0031143271
U2 - 10.1109/72.572099
DO - 10.1109/72.572099
M3 - 文章
AN - SCOPUS:0031143271
SN - 1045-9227
VL - 8
SP - 601
EP - 611
JO - IEEE Transactions on Neural Networks
JF - IEEE Transactions on Neural Networks
IS - 3
ER -