An intelligent and real-time system for plate recognition under complicated conditions

Mohammad Salahshoor, A. Broumandnia, M. Rastgarpour
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引用次数: 5

Abstract

Vehicle Plate Recognition (VPR) algorithm in images and videos usually consists of the following three steps: 1) Region extraction of the plate (plate localization), 2) characters segmentation of the plate 3) Recognition of each character. This paper presents new methods for real-time plate recognition in each step. We used a Detector for the Blue Area (DBA) to locate the plate, Averaging of White Pixels in Objects (AWPO) for the character segmentation, then of method the Euclidian distance and template matching for character recognition after training. This system used 250 vehicle images with different backgrounds and non-uniform conditions. The proposed system is robust against challenges such as illumination and distance changes, and different angles between camera and vehicle, the presence of shadow, scratches and dirt on the plates. The accuracy rate for the three stages are 91.6% 89% and 95.09% respectively. The real-time recognition of plates for vehicles is 2.3 seconds, too.
复杂条件下的智能实时车牌识别系统
图像和视频中的车牌识别(VPR)算法通常包括以下三个步骤:1)车牌区域提取(车牌定位),2)车牌字符分割,3)每个字符的识别。本文在每个步骤中提出了新的实时车牌识别方法。采用蓝色区域检测器(DBA)对车牌进行定位,采用物体白像素平均法(AWPO)对车牌进行字符分割,训练后采用欧式距离法和模板匹配法对车牌进行字符识别。该系统使用了250张不同背景和非均匀条件下的车辆图像。所提出的系统对诸如照明和距离变化、相机和车辆之间的不同角度、阴影的存在、车牌上的划痕和污垢等挑战具有很强的鲁棒性。三个阶段的准确率分别为91.6%、89%和95.09%。车辆车牌的实时识别时间也只有2.3秒。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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