使用连接单元和处理前检测检测过程对车牌进行检测

Arlia Anggraeni, Adhika Pramita Widyassari
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引用次数: 0

摘要

随着印度尼西亚车辆数量的增加,发生的犯罪数量也增加,导致交通违规问题增加,车辆停放活动增加。鉴于车牌检测对于克服这一问题的重要性,需要一种能够快速准确地检测车牌的系统。与Diff和Fast-RNN方法相比,使用连通组件的分割过程具有更好的性能。在进行车牌检测之前,预处理是一个重要步骤。首先使用调整大小功能改变图像大小,并将RGB图像转换为灰度图像,旨在减少图像大小,从而加快下一个过程。然后采用连通分量法进行分割。在10个测试图像上的测试结果产生了80%的准确率。在检测时间方面,它显示出减少。未使用预处理的车牌检测过程平均耗时3.721519秒,而使用预处理的车牌检测过程平均耗时1.45731秒。可以得出结论,加入预处理可以加快检测过程
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deteksi Plat Nomor Menggunakan Connected Components dan Pra-Pengolahan untuk Mempercepat Proses Deteksi
As the number of vehicles in Indonesia increases, the number of crimes that occur also increases, resulting in an increase in the problem of traffic violations and an increase in the number of vehicle parking activities. Seeing the importance of number plate detection to overcome this, a system that is able to detect number plates quickly and accurately is needed. The segmentation process using Connected Components has better performance when compared to Diff and Fast-RNN methods. Pre-processing is an important step before carrying out a number plate detection. begins by changing the image size using the resizing function and by converting the RGB image into a grayscale image which aims to reduce the image size, thereby speeding up the next process. Then the segmentation process uses the connected components method. The test results on 10 test images produce an accuracy of 80%. In terms of detection time, it shows a decrease. The number plate detection process without using pre-processing takes an average of 3.721519 seconds, whereas when using pre-processing only 1.45731 seconds. It can be concluded that the addition of pre-processing is able to speed up the detection process
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