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From manual to automatic pavement distress detection and classification

机译:从手动到自动路面故障检测和分类

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摘要

Detection and classification of distresses is a fundamental activity in the road pavement management. Even in the early stages of deterioration, road pavement needs to be monitored to identify problems, evaluating the actual conditions and predicting what the future conditions will be. Monitoring activities through manual/visual inspections are time consuming, costly and cause of safety concerns. For these reasons, distress identification is usually limited to few sections randomly selected. The introduction of new high efficiency equipment for distress detection and classification is opening new perspective in road pavement analysis and management. Automatic pavement monitoring and Mechanistic design are introducing new pavement performance indicators and criteria for distress classification. Previous studies show lack of correlations between indexes derived from manual and automatic pavement monitoring. Therefore, capability to derive manual distress parameters from automatic monitoring systems is of great interest in the definition and testing of criteria and methodological approaches. In this paper, a background is reported by referencing examples of North American and Italian tests for the detection and classification of distresses from manual survey and capabilities of the state-of-the-art Automatic Road Analyzer (ARAN 9000) as well. An infield experiment and calibration of a Probabilistic Neural Network Classifier is presented for deriving distress measures from automatic systems.
机译:遇险的检测和分类是路面管理中的一项基本活动。即使在恶化的早期阶段,也需要对路面进行监控,以发现问题,评估实际状况并预测未来状况。通过手动/目视检查来监视活动既费时,成本高又引起安全隐患。由于这些原因,遇险识别通常限于随机选择的几个部分。新型用于遇险检测和分类的高效设备的引入为道路路面分析和管理开辟了新的前景。自动路面监控和机械设计正在引入新的路面性能指标和遇险分类标准。先前的研究表明,从手动和自动路面监控得出的指标之间缺乏相关性。因此,从自动监视系统中导出手动求救参数的能力在标准和方法论的定义和测试中引起了极大的兴趣。在本文中,通过引用北美和意大利的示例来报告背景,这些示例用于通过手动勘测和先进的自动道路分析仪(ARAN 9000)的功能来检测和分类遇险。提出了概率神经网络分类器的现场实验和校准,用于从自动系统中导出求救措施。

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