Implementation of KNN Methods And GLCM Extraction For Classification Of Road Damage Level

Adyanata Lubis, Isdaryanto Iskandar, MM Lanny W Panjaitan
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Abstract

Road damage that occurs on several road surfaces causes huge losses, especially for road users such as travel time, congestion, accidents and others , so it is necessary to assess the level of road damage. At this time, problems in determining the level of road damage such as detecting cracks, potholes, calculating the width of cracks, the percentage of cracks and generating the level of road damage are still carried out by slow manual calculations using the Surface method. Distress Index (SDI). In this study, the KNN and GLCM methods will be used to detect road damage. Based on the results of the tests carried out, the accuracy of the results of disease detection with the KNN method and GLCM extraction depends on the number of datasets contained in the system. The process of measuring the level of road damage to get the results of the level of damage to the road can be done quickly, namely by entering a road damage image into the application.
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KNN方法与GLCM提取在道路损伤等级分类中的应用
发生在多个路面上的道路损坏会造成巨大的损失,特别是对于道路使用者来说,如旅行时间、拥堵、事故等,因此有必要对道路损坏程度进行评估。此时,在检测裂缝、凹坑、计算裂缝宽度、裂缝百分比和产生道路损伤水平等确定道路损伤水平的问题上,仍然是通过使用Surface方法进行缓慢的人工计算。遇险指数。在本研究中,将使用KNN和GLCM方法来检测道路损伤。根据所进行的测试结果,KNN方法和GLCM提取的疾病检测结果的准确性取决于系统中包含的数据集的数量。测量道路损伤程度的过程可以快速地得到道路损伤程度的结果,即通过将道路损伤图像输入到应用程序中。
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