Vehicle License Plate Recognition Based on Extremal Regions and Restricted Boltzmann Machines
Vehicle License Plate Recognition Based on Extremal Regions and Restricted Boltzmann Machines
ABSTRACT:
This paper presents a vehicle license plate recognition method based on character-specific extremal regions (ERs) and hybrid discriminative restricted Boltzmann machines (HDRBMs). First, coarse license plate detection (LPD) is performed by top-hat transformation, vertical edge detection, morphological operations, and various validations. Then, character-specific ERs are extracted as character regions in license plate candidates. Followed by suitable selection of ERs, the segmentation of characters and coarse to-fine LPD are achieved simultaneously. Finally, an offline trained pattern classifier of HDRBM is applied to recognize the characters. The proposed method is robust to illumination changes and weather conditions during 24 h or one day. Experimental results on thorough data sets are reported to demonstrate the effectiveness of the proposed approach in complex traffic environments.
PROJECT OUTPUT VIDEO:
SYSTEM REQUIREMENTS:
HARDWARE REQUIREMENTS:
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System : Pentium Dual Core.
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Hard Disk : 120 GB.
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Monitor : 15’’ LED
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Input Devices : Keyboard, Mouse
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Ram : 1GB.
SOFTWARE REQUIREMENTS:
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Operating system : Windows 7.
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Coding Language : MATLAB
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Tool : MATLAB R2013A
REFERENCE:
Chao Gou, KunfengWang, Yanjie Yao, and Zhengxi Li, “Vehicle License Plate Recognition Based on Extremal Regions and Restricted Boltzmann Machines”, IEEE TRANSACTIONS ON INTELLIGENT TRANSPORTATION SYSTEMS, VOL. 17, NO. 4, APRIL 2016.