A Simple Number Plate Detection Technique with Support Vector Machine for On-Road Vehicles

K. Anusha, S. Nachiyappan, M. Braveen, K. Pradeep, Siva Reshma Yarlagadda
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引用次数: 1

Abstract

A Number Plate Detection Technique is a well-known and widely used tool during current era because of the rapid increase in vehicles day by day. The detection of number plates from traffic videos / images system uses a digital image processing technique for the identification of the car registration number plate on the vehicles. This device is utilized indensely populated region to spot the vehicles which are violating the traffic rules, are handed down in malls to allot automobile parking space, identification of the stolen vehicles and also helpful in crime scene investigation. Image of the vehicle is pre-processed by reading the image from a dataset (b) converting it into a gray-scale image and (b) by removing the noises from the image using Gaussian techniques. This number plate is extracted from the image by implementing the contour enhancement method and on extracted characters, machine learning algorithms are used to train the model to perform the segmentation. Within the character recognition process, we classify the characters. The proposed number plate detection technique shows significant improvement in accuracy rate when compared with standard existing systems.
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基于支持向量机的道路车辆车牌简单检测技术
车牌检测技术是当今时代由于车辆数量的迅速增加而被广泛使用的一种工具。从交通视频/图像中检测车牌系统使用数字图像处理技术来识别车辆上的汽车登记车牌。该装置用于人口密集地区发现违反交通规则的车辆,分发到商场,用于分配汽车停车位,识别被盗车辆,也有助于犯罪现场调查。通过从数据集中读取图像(b)将其转换为灰度图像(b)使用高斯技术去除图像中的噪声,对车辆图像进行预处理。采用轮廓增强的方法从图像中提取车牌,并在提取的特征上使用机器学习算法训练模型进行分割。在字符识别过程中,我们对字符进行分类。与现有的标准车牌检测系统相比,所提出的车牌检测技术的准确率有了显著提高。
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