道路排水系统定位和状况数据采集

M. Gkovedarou, I. Brilakis
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引用次数: 0

摘要

检查道路网既费时又费钱。拨给道路维修的钱有一半以上花在了这个地区。目视检查仍然是大多数道路网络最常用的检查方式。道路网络的车道数使得这种类型的道路监控成为一个昂贵的过程。本文的最终目标是减少执行常规驱动、视觉和条件数据捕获所需的时间和成本。道路检查员致力于从视觉上捕获大量的道路资产,因为它包括捕获多个道路资产的几何形状和条件。在本文中,我们提出了一种通过图像捕获道路排水覆盖物并评估它们是否可能被阻塞的方法。这个提议的新框架侧重于两个主要任务:a)道路排水的本地化b)排水条件的评估(如果它们是干净的或不干净的)。该方案使用加速鲁棒特征(SURF)和尺度不变特征形式(SIFT)检测器,k-means算法增强的视觉词包(BoVW)对特征进行分组,支持向量机分类器将数据分类到各自的类别。
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Road Drainage System Localisation and Condition Data Capture
Inspection of road networks is time and cost consuming. Over half of the money allocated for road maintenance are spent on this area. Visual inspection is still the most commonly employed way of inspection for most parts of the road network. The sheer amount of lane miles of the road network renders this type of road monitoring a costly process. The ultimate goal of this paper is to reduce the time and cost needed to perform routine drive-by, visual and conditional data capturing. The road inspector devotes effort to visually capture the great number of the road assets as it consists of capturing of both the geometry and condition of multiple road assets. In this paper, we propose a method to capture road drainage covers through images and assess if they could potentially be blocked or not. This proposed novel framework focuses on two main tasks: a) localisation of road drainage b) assessment of drainage condition (if they are clean or not). This solution uses Speeded up Robust Features (SURF) and Scale Invariant Feature Form (SIFT) detector, the Bag of Visual Words (BoVW) enhanced with k-means algorithms for grouping the features, and a Support Vector Machine classifier for classifying the data to their respective categories.
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