波斯车牌快速自适应车牌识别算法

Sina Moayed Baharlou, Saeed Hemayat, A. Saberkari, Saber Yaghoobi
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引用次数: 5

摘要

提出了一种新的波斯语车牌识别算法。这些操作非常容易出错,特别是当图像由大量车辆的链接组件或其他现有对象组成时。虽然所提出的字符识别程序对波斯车牌进行了高度优化,但定位部分可以用于所有类型的车辆。用最小矩形包围盒代替了常用的包围盒方法,弥补了常规包围盒的固有缺陷。车牌可能性比(LPPR)是一种鲁棒的车牌定位方法。本文还提出了一种考虑字符“角度敏感”准则的从大量矩形中寻找板位置的新方法。应该注意的是,这个过程是与印版的位置无关的。不同的阈值处理方法,即“动态阈值处理”,用于克服不适当的照明可能造成的缺陷。从OCR的角度来看,将形成一个由两个规范组成的图形,并定义一组规则来捕获字符的标签。一个自动骚扰部分被添加为去噪过滤器,以省略咧嘴笑的后果。在相关的知名算法中,在25ms的程序运行时间下,在定位过程中准确率最高(95.33%),在Linux上,程序运行时间为30ms,在Android上平均运行时间为90ms,在波斯语字符识别中准确率超过97%,这些都是算法效率的有力证明。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fast and adaptive license plate recognition algorithm for Persian plates
A new Persian license plate recognition algorithm is presented. These operations are highly susceptible to error, especially where the image consists of large amount of either vehicle's linked components or the other existing objects. Although the proposed character recognition procedure is highly optimized for Persian plates, the localization parts can be employed for all types of vehicles. Minimum rectangle bounding box is replaced the common bounding box methods, compensating normal bounding box's inherent flaws. License plate possibility ratio (LPPR) is a robust method proposed here to localize the plate. New method of finding plate's location out of so many rectangles, considering “Sensitive to angle” criterions for characters has also been presented. It should be noted that the process is regardless of the plate's location. Different approach on thresholding namely: “Dynamic Thresholding” is used to overcome the probable drawbacks caused by inappropriate lighting. From OCR point of view, a graph, consisting of two specifications will be formed and a set of rules will be defined to capture the character's label. An automated harassment section is added as the denoising filter, in order to omit the grinning ramifications. Presenting the best percent accuracy (95.33%) among relevant well-known algorithms in localization procedure with 25ms run time of the program, and also the outstanding results with over 97% of percent accuracy in character recognition of Persian plates with 30ms run time of the program on Linux and also average of 90ms on Android, can be listed as strong proofs of algorithm's efficiency.
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