Continuous and Realtime Road Condition Assessment Using Deep Learning

Ahmed Abul Hasanaath, AbuMuhammad Moinuddeen, Nazeeruddin Mohammad, M. Khan, Ahmed A. Hussain
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引用次数: 2

Abstract

Continuous and real-time monitoring of road quality conditions is essential for the maintenance of roads and to ensure the safety of drivers and their vehicles. However, the continuous monitoring of thousands of kilometers of roads and highways is a very tedious, time-consuming, error-prone, and expensive operation. A deep learning based approach that can automatically classify the road condition can help tremendously in cutting down the time, effort, accuracy, and cost for monitoring and maintenance of vast road infrastructure. This paper proposes a mechanism to continuously monitor deteriorating road conditions at the city or municipality level in real time and classify them into four different categories (good, medium, bad and unpaved) using custom-built and transfer learning from pre-trained deep learning models (VGG16 and MobileNetV2). The dataset is collected from different roads in the Kingdom of Saudi Arabia. The dataset is composed of close-up road images taken in real time (while driving the car) at regular intervals using an Android App. In the data capture model, the Android App helps to easily tag (label) the captured images for model training purposes. In the classifier mode, the Android app uses the developed deep learning model to classify the captured image and then transmits the medium, bad or unpaved road condition to the central server along with longitude and latitude information to update the centralized map of the city (or municipality). The proposed approach provides an accuracy of 98.6 % to classify the road condition based on images captured during real time driving of the vehicle.
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基于深度学习的连续实时路况评估
持续和实时监测道路质量状况对于维护道路和确保驾驶员及其车辆的安全至关重要。然而,对数千公里的道路和高速公路进行连续监测是一项非常繁琐、耗时、容易出错和昂贵的工作。一种基于深度学习的方法可以自动对道路状况进行分类,可以极大地帮助减少监控和维护大量道路基础设施的时间、精力、准确性和成本。本文提出了一种机制,可以实时持续监测城市或直辖市不断恶化的道路状况,并使用预先训练的深度学习模型(VGG16和MobileNetV2)的定制和迁移学习将其分为四个不同的类别(好、中、坏和未铺设)。该数据集是从沙特阿拉伯王国的不同道路上收集的。数据集由使用Android应用程序定期实时(在驾驶汽车时)拍摄的近距离道路图像组成。在数据捕获模型中,Android应用程序有助于轻松标记(标签)捕获的图像,用于模型训练目的。在分类器模式下,Android应用使用开发的深度学习模型对采集的图像进行分类,然后将中等、不良或未铺设的道路状况连同经纬度信息传输到中央服务器,更新城市(或直辖市)的集中式地图。该方法基于车辆实时行驶过程中采集的图像对道路状况进行分类,准确率达到98.6%。
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