Authors:
Abdenebi Rouigueb
1
;
Fethi Demim
2
;
Hadjira Belaidi
3
;
Ali Messaoui
4
;
Mohamed Benatia
1
and
Badis Djamaa
1
Affiliations:
1
Artificial Intelligence and Virtual Reality Laboratory, Ecole Militaire Polytechnique, Bordj El Bahri, Algiers, Algeria
;
2
Guidance and Navigation Laboratory, Ecole Militaire Polytechnique, Bordj El Bahri, Algiers, Algeria
;
3
Signals and Systems Laboratory, Institute of Electrical and Electronic Engineering, University M’hamed Bougara of Boumerdes, Boumerdes, Algeria
;
4
Complex Systems Control and Simulation Laboratory, Ecole Militaire Polytechnique, Bordj El Bahri, Algiers, Algeria
Keyword(s):
License Plate, Character Segmentation, Naı̈ve Bayesian Network, DTW, CNN.
Abstract:
Character segmentation plays a pivotal role in automatic license plate recognition (ALPR) systems. Assuming that plate localization has been accurately performed in a preceding stage, this paper mainly introduces a character segmentation algorithm based on combining standard segmentation techniques with prior knowledge about the plate’s structure. We propose employing a set of relevant features on-demand to classify detected blocks into either character or noise and to refine the segmentation when necessary. We suggest using the na ı̈ve Bayesian network (NBN) classifier for efficient combination of selected features. Incrementally, one after one, high computational cost features are computed and involved only if the low-cost ones cannot decisively determine the class of a block. Experimental results on a sample of Algerian car license plates demonstrate the efficiency of the proposed algorithm. It is designed to be more generic and easily extendable to integrate other features into t
he process.
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