DocumentCode
2520476
Title
Implementation of the SVM neural network generalization function for image processing
Author
Reyna, Roberto A. ; Esteve, Daniel ; Houzet, Dominique ; Albenge, Marie-France
Author_Institution
Lab. d´´Autom. et d´´Anal. des Syst., CNRS, Toulouse, France
fYear
2000
fDate
2000
Firstpage
147
Lastpage
151
Abstract
Based on the statistical learning theory, Support Vector Machines is a novel neural network method for solving image classification problems. It has proven to obtain the optimal decision hyperplane and is also unaware of the dimensionality of the problem. The decision function is constructed with the support vectors obtained during the learning process. Each pixel bloc in the training database is processed as an input vector, the learning process finds out between input vectors those who will construct the solution (the support vectors), the weights and the threshold of the neural network. SVM does not need a test database and the solution depends entirely on the training database. The aim of our work is to exploit the regularities of the SVM decision function in an integrated vision system. The application of our vision system is object detection and localization. We use SVM classifier as the main module of the system. In order to reduce the classification computation time we are proposing a parallel implementation on an FPGA programmed with VHDL
Keywords
field programmable gate arrays; image classification; image processing; object detection; visual databases; FPGA; SVM neural network generalization function; Support Vector Machines; VHDL; image classification; image processing; learning process; localization; object detection; optimal decision hyperplane; statistical learning theory; training database; weights; Concurrent computing; Image classification; Image databases; Machine vision; Neural networks; Object detection; Statistical learning; Support vector machine classification; Support vector machines; Testing;
fLanguage
English
Publisher
ieee
Conference_Titel
Computer Architectures for Machine Perception, 2000. Proceedings. Fifth IEEE International Workshop on
Conference_Location
Padova
Print_ISBN
0-7695-0740-9
Type
conf
DOI
10.1109/CAMP.2000.875972
Filename
875972
Link To Document