VEHICLE LICENSE PLATE DETECTION: A SURVEY

T. Kumar
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引用次数: 1

Abstract

Automatic Number Plate Recognition (ANPR) is an image processing technique that is used to extract the symbols (characters and digits) embedded on the number (license) plate to identify the vehicles. Huge numbers of ANPR techniques have been proposed by various researchers in the past. Most of the ANPR techniques are designed for restricted conditions due to the diversity of the license plate styles, environmental conditions etc. Not every technique is suited for all kinds of conditions. In general, the ANPR technique comprises of the following three stages; license plate detection (LPD); character segmentation; and character recognition. There exist a wide variety of techniques for carrying out each of the steps of the ANPR. Some score over others. This paper presents a State-of-the-Art survey of the various leading LPD techniques that exist today and an attempt has been made to summarize these techniques based on pros and cons and their limitations. Each technique is classified based on the features used at each stage of LPD. This survey shall help provide future direction towards the development of efficient and accurate techniques for ANPR. It shall also assist in identifying and shortlisting the methodologies that are best suited for the particular problem domain.
车辆车牌检测:一项调查
自动车牌识别(ANPR)是一种图像处理技术,用于提取嵌入在车牌(牌照)上的符号(字符和数字)来识别车辆。过去,各种研究人员提出了大量的ANPR技术。由于车牌样式、环境条件等的多样性,大多数ANPR技术都是针对受限条件设计的。并非每种技术都适合各种条件。一般来说,ANPR技术包括以下三个阶段:车牌检测(LPD);字符分割;以及字符识别。执行ANPR的每一个步骤都有各种各样的技术。有些人比其他人得分高。本文对目前存在的各种领先的LPD技术进行了最新的调查,并试图根据优缺点及其局限性对这些技术进行总结。每种技术都是根据LPD的每个阶段使用的特征进行分类的。这项调查将有助于为未来发展有效和准确的ANPR技术提供方向。它还应有助于识别和筛选最适合特定问题领域的方法。
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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