使用三宝垄深度学习图像处理,检测道路损坏情况

Teknik Pub Date : 2023-05-31 DOI:10.14710/teknik.v44i1.51908
Bandi Sasmito, Bagus Hario Setiadji, R. Isnanto
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引用次数: 0

摘要

[题目:三宝垄市使用深度学习图像处理的道路损伤检测]道路是社区活动的关键必需品。它们便利了从特定地点到目的地的交通。此外,道路是重要的陆路交通基础设施,无论是对人还是货物。然而,不适当的道路条件可能导致事故。由于需要检查的道路数量众多,跟踪道路状况具有挑战性。本研究将遥感原理与深度学习人工神经网络技术相结合。YOLO (You Only Look Once)用于道路损伤检测。使用全球导航卫星系统(GNSS)进行精确定位或定位,从而提高探测结果的准确性。本研究建立了总体精度为88%、kappa精度为86%的道路损伤识别模型,以及位置坐标精度为±5.6米(RMSE)的损伤位置分布。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deteksi Kerusakan Jalan Menggunakan Pengolahan Citra Deep Learning di Kota Semarang
[Title: Road Damage Detection Using Deep Learning Image Processing in Semarang City] Roads are a crucial necessity in community activities. They facilitate transportation access from a particular place to the destination. Furthermore, roads are important as land transportation infrastructure for both people and goods. However, inadequate road conditions can lead to accidents. Tracking road conditions is challenging due to the large number of roads that need to be inspected. This research utilizes remote sensing principles with Deep Learning Artificial Neural Network technology. YOLO (You Only Look Once) is employed for road damage detection. The detection results are enhanced with precise positioning or location using the Global Navigation Satellite System (GNSS), allowing for accurate detection results. This study produces a road damage identification model with an overall accuracy of 88% and a kappa accuracy of 86%, as well as location distribution of damages with positional coordinates accuracy of ±5.6 meters (RMSE).
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