基于卷积神经网络的印尼车牌识别

Ignatius Wendianto Notonogoro, Jondri, A. Arifianto
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引用次数: 2

摘要

车牌是车辆身份的一部分。在现代国家,车牌识别已经发展到收集交通活动信息。当输入图像中包含光照、污物、划痕等噪声并覆盖车牌中的一个或多个字符时,车牌识别系统的性能会下降。本研究的重点是印度尼西亚的车牌,因为印度尼西亚的许多车牌都有各种各样的噪音,如塑料覆盖和划痕,这使得识别变得复杂。在本研究中,印度尼西亚车牌识别是使用卷积神经网络(CNN)形成的,众所周知,卷积神经网络在识别物体方面具有良好的性能,即使物体在一定程度上被遮挡。本研究使用滑动窗口进行替换字符分割。CNN将在窗口的每个区域预测图像。整个系统对正常数据测试的最高性能为87.36%,对噪声数据测试的最高性能为44.93%。
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Indonesian License Plate Recognition Using Convolutional Neural Network
License plate is a part of vehicle's identity. In modern countries, license plate recognition has been developed to collect traffic activity information. The performance of license plate recognition system tend to drop when the input picture contains noises like illumination, dirt, and scratches which cover one or more characters in the license plate. This research was focused on Indonesian license plate as many license plates in Indonesia had various noises like plastic cover and scratches which complicate the recognition. In this study, Indonesian license plate recognition is formed using a Convolutional Neural Network (CNN) which is known to have good performance in recognizing objects, even though the objects are obscured to some degree. Sliding window is used in this study for replace character segmentation. CNN will predict images in every area of window. The highest performance for the whole system to the normal data test is 87.36% and noised data test is 44.93%.
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