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Automatic Identification of Personal Automobiles Plates of Iran Using Genetic Algorithm

机译:基于遗传算法的伊朗私家车牌自动识别。

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In this study, a new method for using LPR systems for Iranian plates number has been presented. Increasing the precision of the letter recognition process and reducing the amount of training are in fact the main advantages of the new hybrid model. The K-NN has been implemented as the first classification method, because it was simple, and it was resistant to the noisy data, and for large datasets it is also effective at zero cost. The confusion problem related to the similarity of letters in plate numbers has also been resolved by using the classification model of the multi-class genetic algorithm. The genetic algorithm improves K-NN performance in the recognition of similar letters. Vehicle license plate recognition (LPR) plays an important role in ITS and is mainly used in access control systems.The purpose of this research is to determine the Iranian plate automobiles that are specifically owned by the automobile. The confusion caused by the similarity between the letters of the alphabet and numeric characters is one of the problems of the Persian LPR systems at the diagnostic stage. In this regard, a method using the KNN-based advantages of genetic algorithm as a hybrid model is presented in this study to overcome the above problem. The genetic algorithm has been trained and tested only with the same letters, thus the cost of training for the genetic algorithm has significantly decreased. Comparison of the results obtained from the experiments carried out in this study with the results of a similar study shows that the combined KNN-genetic algorithm model significantly improved the detection rate of the letters for all tested cases from 94% to 97.03% .
机译:在这项研究中,提出了一种将LPR系统用于伊朗车牌号的新方法。实际上,提高字母识别过程的精度并减少训练量实际上是新混合模型的主要优点。 K-NN已被实现为第一种分类方法,因为它简单易行,并且可以抵抗嘈杂的数据,对于大型数据集,它也可以以零成本有效。通过使用多类遗传算法的分类模型,还解决了与车牌号字母相似性相关的混淆问题。遗传算法提高了相似字母识别的K-NN性能。车牌识别(LPR)在ITS中起着重要作用,主要用于门禁控制系统中。本研究的目的是确定由该车专门拥有的伊朗车牌。在诊断阶段,由字母和数字字符之间的相似性引起的混乱是波斯LPR系统的问题之一。在这方面,本研究提出了一种利用基于KNN的遗传算法优势作为混合模型的方法来克服上述问题。遗传算法仅使用相同的字母进行训练和测试,因此遗传算法的训练成本已大大降低。将本研究中的实验结果与类似研究的结果进行比较,结果表明,组合的KNN遗传算法模型将所有测试案例的字母检出率从94%显着提高到97.03%。

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