Title :
License plate location based on a dynamic PCNN scheme
Author :
M, Mario I Chacón ; S, Alejandro Zimmerman
Author_Institution :
DSP&Vision Lab., Chihuahua Inst. of Technol., Mexico
Abstract :
This paper describes a new dynamic ATR, automatic target recognition, scheme based on a pulse coupled neural network, PCNN. The PCNN is used to generate candidate regions that may contain a license car plate. Candidate regions are generated from pulsed images, output of the PCNN network. Statistics of the Fourier transform are used to determine if a candidate region contains a license plate. If the license plate is not located in the set of candidate regions, the PCNN network parameters are adjusted to generate a new pulsed image and new candidate regions are extracted and analyzed. The proposed system is robust in the sense that it does not restrict the location of the plate, neither the illumination conditions when the image is acquired. The purpose of no restrictions is to evaluate the proposed system under conditions where a person can succeed. The system performance was 85% on a set of images. One advantage of the proposed scheme is that it may be adapted to solve different ATR problems.
Keywords :
Fourier transforms; image recognition; neural nets; statistics; Fourier transform statistics; automatic target recognition; candidate region generation; dynamic pulse coupled neural network; license car plate location; pulsed images; unrestricted illumination conditions; unrestricted plate location; Fourier transforms; Image analysis; Image generation; Licenses; Lighting; Neural networks; Pulse generation; Robustness; Statistics; Target recognition;
Conference_Titel :
Neural Networks, 2003. Proceedings of the International Joint Conference on
Print_ISBN :
0-7803-7898-9
DOI :
10.1109/IJCNN.2003.1223862