YANG Guo-wei, WANG Shou-jue, WEI Cheng-bing, et al. Pattern Classification Neural Network Model Based on Homologue Connectedness[J]. Acta Electronica Sinica, 2013, 41(1): 52-55.
DOI:
YANG Guo-wei, WANG Shou-jue, WEI Cheng-bing, et al. Pattern Classification Neural Network Model Based on Homologue Connectedness[J]. Acta Electronica Sinica, 2013, 41(1): 52-55. DOI: 10.3969/j.issn.0372-2112.2013.01.010.
Pattern Classification Neural Network Model Based on Homologue Connectedness
A pattern classification neural network model that can guarantee the correct connecting path of homologue is presented.This model includes the connecting and sequential technology of homologue samples and the sequential learning and incremental learing algorithms of topology sturcture of improved forward masking neural network model for establishment of connecting weight.The common potential problems of original sequential learning forward masking neural network model and many traditional pattern recognition methods that individual local connecting path of homologue are cut off can be overcome by this model which therefore enhance the categorizing ability.Moreover
this model can carry out rapid increamental learning for new added samples and hence is able to improve the categorizing and expanding ability of this model in a short time
which shows its advantage for large scale pattern recognition.Experiments also indicates that the pattern recognition model based on connectedness of homologue gives rise to a high correct recognition rate.This paper is of great significance to improving many traditional pattern recognition methods.
A New Approach for Face Recognition Based on Singular Value Features and Neural Networks
Grey Model and Algorithm for the Selection of Electronic Equipment Test Project
Bionic Pattern Recognition—— A New Model of Pattern Recognition Theory and Its Applications (Lab of Artificial Neural Networks,Institute of Semiconductors,CAS,Beijing 100083,China)
Some New Developments on Support Vector Machine
A Neural Network That Can Recognize Some Common Abstract Features of Different Samples
Related Author
GAN Jun-ying
ZHANG You-wei
KE Hong-fa
CHEN Yong-guang
LIU Bo
WANG Shou-jue
WANG Guo-sheng
ZHONG Yi-xin
Related Institution
School of Information,Wuyi University
School of Electronics and Information Engineering, Beihang University
School of InformationWuyi UniversityJiangmenGuangdong 529020China
School of Electronics and Information EngineeringBeihang UniversityBeijing 100083China
School of Electronic Science and Engineering,National University of Defense Technology