Title :
Support Vector Machine Applied to Underwater Target Classification
Author :
Ferose Babu, T.A. ; Pradeepa, R.
Author_Institution :
DRDO, NPOL, Kochi, India
Abstract :
Underwater target classification is a complex task, due to the difficulty in identifying non-overlapping and stable feature set. It is required to choose the right algorithm, approach and technique, or the best combinations of approaches and techniques from a large set of options available in the literature for the specific problem. A binary classifier can tackle the problem by decomposing multiclass problem into binary class. This paper addresses the multiclass underwater classification problem using binary classifier -- Support Vector Machine (SVM). Three methods "all-against-all," "all-against-all Hierarchical," "one-against-all"("AVA", "AVA-H", "OVA") are tried out and performance using a particular feature derived from real data set is compared. A number of metrics are used to compare the performance. OVA gives a better performance with less computation compared to other methods.
Keywords :
data mining; marine engineering; pattern classification; ships; support vector machines; AVA method; AVA-H method; OVA method; SVM; all-against-all hierarchical method; all-against-all method; binary class; binary classifier; multiclass problem decomposition; multiclass underwater target classification problem; nonoverlapping stable feature set identification; one-against-all method; performance analysis; real data set; support vector machine; Accuracy; Gaussian distribution; Kernel; Support vector machines; Training; Underwater vehicles; Binary classification; Data mining; Decomposing multi class to Binary; Multi class classification; Support Vector Machines (SVM); Under water target classification;
Conference_Titel :
Advances in Computing and Communications (ICACC), 2014 Fourth International Conference on
Conference_Location :
Cochin
Print_ISBN :
978-1-4799-4364-7
DOI :
10.1109/ICACC.2014.17