使用经纬仪检测路面上的坑洞

Ivan Besando Pakpahan, Ika Candra Dewi
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引用次数: 2

摘要

随着街道上需要检查的坑洞数量的增加,技术的快速进步促使人们开发出可以使用检测系统检查坑洞的技术。数字图像处理是一些人使用颜色作为主要提取特征来检测凹坑的方法,之后在检测方面对机器学习和深度学习方法进行了研究和发展,其中之一就是ssd移动网。在本研究中,使用了三种类型的数据集,它们是从各种来源二次获得的,即正常数据集、仪表盘数据集和特写数据集。这三个数据集还将以500个数据串的增量组合和改变训练数据量,从而获得各种模型结果。所获得的结果是每个模型数据集的检测边界框和混淆矩阵得分,其中正常数据集的准确率得分为56%,仪表板数据集的准确性得分为50%,特写数据集的精确度得分为76%。
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Pendeteksian Lubang Pada Jalanan Menggunakan Metode SSD-MobileNet
The rapid advancement of technology following the number of potholes on the streets that need to be inspected have led people to develop technology that can inspect pothole using a detection system. Digital image processing is a method used by some people to detect potholes by using its colour as the main extracted feature, after that the field of machine learning and deep learning approaches have been studied and developed in terms of detection, one of which is the ssd-mobilenet. In this study three types of dataset were used, they were obtained secondarily from various sources, namely the normal dataset, the dashboard dataset, and the closeup dataset. These three datasets will also be combined and varied in the amount of the training data with an increment of 500 data train so that various model results are obtained. The results obtained are the detection bounding boxes and also the confusion matrix score of each model dataset, where the normal dataset gets an accuracy score of 56%, the dashboard dataset gets 50% and the closeup dataset gets 76%.
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