使用监督学习辅助道路损伤视觉评估的道路损伤分类

Novindra Nurrosyid Al Haqi, F. Hidayat
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引用次数: 0

摘要

道路是提高人民福利和生产力的一个重要方面,影响着国家的经济增长。因此,必须对道路状况进行监测。西爪哇省公路和空间规划厅与万隆理工学院合作,开发了道路路面状况调查应用程序,使监测道路状况更加容易。然而,该应用程序的一些功能仍然是半自动进行的,其中之一是道路损伤分类功能。这导致工作时间长。道路损伤分类本身就需要人类的视觉评估。因此,需要一种基于机器学习的道路损伤分类系统的解决方案,以帮助用户直观地评估道路损伤。该系统采用监督学习的方法建立分类模型。该系统仍然需要用户进行视觉评估以验证系统分类结果。该系统被认为能够通过辅助用户的视觉评估来帮助分类道路损害,尽管该系统的分类结果还不能提供正确的道路损害分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification of Road Damage Using Supervised Learning to Assist Visual Assessment of Road Damage
Roads are an important aspect of improving the welfare and productivity of the people that affect the country's economic growth. Therefore, monitoring of road conditions must be carried out. The Department of Highways and Spatial Planning of West Java Province in collaboration with the Bandung Institute of Technology has developed the Road Pavement Condition Survey application which makes it easier to monitor road conditions. However, some features of this application are still carried out semi-automatically, one of which is the road damage classification feature. This causes long working time. Classification of road damage itself needs a visual assessment by humans. Therefore, a solution is needed in the form of a machine learning-based road damage classification system that can help users visually assess road damage. The system uses the supervised learning method to build a classification model. The system still requires a visual assessment by the user to validate the system classification results. The system that has been built is considered to be able to help classify road damage by assisting the user's visual assessment, although the classification results by the system have not been able to provide a correct classification of road damage.
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