DocumentCode
2291971
Title
RSOM Algorithm for Radar Target Recogniton
Author
Lefeng Zhanq ; Yu, Hua
Author_Institution
ATR Key Lab., Nat. Univ. of Defense Technol., Changsha
fYear
2006
fDate
16-19 Oct. 2006
Firstpage
1
Lastpage
4
Abstract
A number of general neural networks have several drawbacks such as how to decide their structures and scales, how to design their self-learning procedure and how to cope with a bulk of computation for the case of large data set classification and complex patterns recognition. In order to solve these problems, this paper proposes the RSOM tree classifier based on discrimination criterion approach. The RSOM tree classifier is composed of topology-preserved sub-SOM nets, and its scales is determined by discrimination criterion. The main advantage of this new neural network is that it adjusts structure and scale automatically with the large training data set, therefore, it maps the training data set very well. This makes it achieve high right classification rate in radar ship target recognition. The experiments in the end are very good proofs for this new network
Keywords
learning (artificial intelligence); marine radar; pattern classification; radar computing; radar target recognition; self-organising feature maps; ships; trees (mathematics); RSOM tree classifier; data set classification; discrimination criterion approach; neural network; pattern recognition; radar ship target recognition; rough organizing map; self-learning procedure; topology-preservation; training data set; Artificial neural networks; Biological neural networks; Classification tree analysis; Computer networks; Humans; Marine vehicles; Pattern recognition; Radar; Target recognition; Training data; Discrimination criterion; Right Recognition Rate; SOM; Structure-adaptive; Target Recognition;
fLanguage
English
Publisher
ieee
Conference_Titel
Radar, 2006. CIE '06. International Conference on
Conference_Location
Shanghai
Print_ISBN
0-7803-9582-4
Electronic_ISBN
0-7803-9583-2
Type
conf
DOI
10.1109/ICR.2006.343241
Filename
4148347
Link To Document