首页> 外文会议>National Technical Seminar on Unmanned System Technology >Comparability of Edge Detection Techniques for Automatic Vehicle License Plate Detection and Recognition
【24h】

Comparability of Edge Detection Techniques for Automatic Vehicle License Plate Detection and Recognition

机译:自动车牌检测和识别的边缘检测技术的可比性

获取原文
获取外文期刊封面目录资料

摘要

License plate recognition system is one of the famous topics in image processing to identify the vehicle registration number. This system has been given a lot of beneficial toward transportation system, especially for security system. However, to get the perfect segmentation on alphabet shape for recognition purpose is quite challenging due to the non-uniform condition of image acquisition. Hence this paper proposes a methodology for segmentation of license plate number by using edge-based segmentation. In this study, image segmentation based on edge detection has been chosen due to the sharpness and detail in detecting the shape of an object. Since there are various types of edge detection techniques have been proposed by the previous researchers, several edge detection techniques from the most commonly used techniques have been chosen to be compared and analyze the results of various edge detection for license plate recognition. In this paper, several types of edge detection techniques such as Approxcanny, Canny, Chan-Vese, Kirsch, Prewitt, Robert, Sobel, Quadtree and Zero Crossing edge detector have been compared through greyscale images. Grayscale image has been enhancing before by modified white patch. Then, the holes area of the segmented license plate image are filled to obtain the characters, followed by step for removing the unwanted objects from the segmented license plate images. Later, the characters of the license plate are recognized based on template matching approach. This recognition analysis consists of two stages. First stage is all edge detector techniques have been used same standard values in removing the noise. Five edge detectors with best performance have been selected for next stage. In the second stage, the unwanted objects have been removed with appropriate values which are suitable for each of the edge detection techniques. The final result shows that Chan-Vese conquers the analysis with highest accuracy of edge detection obtained in license plate recognition.
机译:车牌识别系统是识别车辆登记号的图像处理中的著名主题之一。该系统已对运输系统,特别是对于安全系统,带来了很多好处。然而,由于图像获取的不均匀条件,为了识别目的而对字母形状进行完美分割是非常具有挑战性的。因此,本文提出了一种基于边缘分割的车牌号分割方法。在这项研究中,由于检测物体形状的清晰度和细节,选择了基于边缘检测的图像分割。由于先前的研究人员已经提出了各种类型的边缘检测技术,因此从最常用的技术中选择了几种边缘检测技术进行比较并分析了各种边缘检测的结果,以进行车牌识别。在本文中,通过灰度图像对几种类型的边缘检测技术进行了比较,例如:近似,Canny,Chan-Vese,Kirsch,Prewitt,Robert,Sobel,Quadtree和过零边缘检测器。以前通过修改白色补丁增强了灰度图像。然后,填充分割的车牌图像的孔区域以获得字符,随后进行步骤以从分割的车牌图像去除不需要的对象。随后,基于模板匹配方法识别车牌的字符。该识别分析包括两个阶段。第一步是在消除噪声方面,所有边缘检测器技术均已使用相同的标准值。已选出五个性能最佳的边缘检测器用于下一阶段。在第二阶段中,用适合于每种边缘检测技术的适当值去除了不需要的对象。最终结果表明,Chan-Vese以车牌识别中获得的边缘检测最高精度征服了分析。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号