Title :
On signal detection using support vector machines
Author :
Burian, A. ; Takala, Jarmo
Abstract :
The detection type problems represent a special case of nonlinear mapping. This fact makes the use of neural networks attractive for signal detection problems. In order to obtain good generalization excessive tuning is needed. Also, most of the neural network learning theories does not make use of the optimal hyperplane concept. In this paper, we consider optimal hyperplane signal detection with support vector machines (SVMs), for detecting a known signal corrupted by noise. Experimental results illustrate the detection performances in various cases. The practical implementation and the robustness of SVMs are also considered.
Keywords :
signal detection; support vector machines; neural networks; nonlinear mapping; optimal hyperplane concept; practical implementation; signal corruption; signal detection; support vector machines;
Conference_Titel :
Signals, Circuits and Systems, 2003. SCS 2003. International Symposium on
Print_ISBN :
0-7803-7979-9
DOI :
10.1109/SCS.2003.1227126