Biomimetic pattern recognition theory and its applications


Autoria(s): Wang SJ; Zhao XT
Data(s)

2004

Resumo

Biomimetic pattern recogntion (BPR), which is based on "cognition" instead of "classification", is much closer to the function of human being. The basis of BPR is the Principle of homology-continuity (PHC), which means the difference between two samples of the same class must be gradually changed. The aim of BPR is to find an optimal covering in the feature space, which emphasizes the "similarity" among homologous group members, rather than "division" in traditional pattern recognition. Some applications of BPR are surveyed, in which the results of BPR are much better than the results of Support Vector Machine. A novel neuron model, Hyper sausage neuron (HSN), is shown as a kind of covering units in BPR. The mathematical description of HSN is given and the 2-dimensional discriminant boundary of HSN is shown. In two special cases, in which samples are distributed in a line segment and a circle, both the HSN networks and RBF networks are used for covering. The results show that HSN networks act better than RBF networks in generalization, especially for small sample set, which are consonant with the results of the applications of BPR. And a brief explanation of the HSN networks' advantages in covering general distributed samples is also given.

Identificador

http://ir.semi.ac.cn/handle/172111/8008

http://www.irgrid.ac.cn/handle/1471x/63598

Idioma(s)

英语

Fonte

Wang, SJ; Zhao, XT .Biomimetic pattern recognition theory and its applications ,CHINESE JOURNAL OF ELECTRONICS,JUL 2004,13 (3):373-377

Palavras-Chave #人工智能 #pattern recognition
Tipo

期刊论文