Deteksi Objek Plat Nomor Kendaraan Dengan Metode CNN

W. Setiawan, Naufal Hafidz Farhan
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引用次数: 1

Abstract

The public's need for transportation to date is very high, this can be seen in front of the number of vehicles, both private and public vehicles that go back and forth from rural to urban areas. This results in congestion due to the density of vehicles as well as less organized parking management. On the other hand, with increasing population growth, land becomes narrower, while public interest in buying vehicles, both two-wheeled and four-wheeled, is increasingly inevitable, as a result of the increasingly affordable prices of motorized vehicles. According to research (Wini Mustikarani & Suherdiyanto. 2016:1), one of the factors that cause congestion is indiscriminate parking activities. There is also parking management that is currently being carried out using manual methods, such as writing or typing manually to record motorized vehicle numbers. To minimize manual work, one innovative way is to apply artificial intelligence as image processing with deep learning that utilizes an artificial neural network using the Convolutional Neural Network (CNN) method. By conducting training and testing on images of Indonesian license plates of motorized vehicles, machine learning will do its job like humans who can recognize the object of the number plate of a motorized while and record the vehicle number for further analysis, both for parking data purposes and data from the Department of Transportation, and the Police.
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用CNN的方法探测车牌物体
到目前为止,公众对交通的需求是非常高的,这可以从车辆的数量上看出,无论是私人车辆还是公共车辆,都往返于农村和城市之间。由于车辆的密度以及缺乏组织的停车管理,这导致了拥堵。另一方面,随着人口的增长,土地变得越来越狭窄,而由于机动车的价格越来越实惠,公众对购买两轮和四轮车辆的兴趣越来越大。根据研究(Wini Mustikarani & Suherdiyanto. 2016:1),造成拥堵的因素之一是乱停车。也有停车管理,目前正在使用人工方法进行,例如手工书写或打字记录机动车辆号码。为了最大限度地减少人工劳动,利用卷积神经网络(CNN)方法,利用人工神经网络的深度学习,将人工智能应用于图像处理,是一种创新方法。通过对印尼机动车车牌图像进行训练和测试,机器学习将像人类一样完成它的工作,人类可以识别机动车车牌上的物体,并记录车辆号码以供进一步分析,无论是出于停车数据目的,还是来自交通部和警方的数据。
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