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Deep learning for estimating pavement roughness using synthetic aperture radar data
Abstract Because of the high costs of ground-based pavement condition methods used to monitor pavement condition, transportation agencies often limit distress surveys to their major roads. As a result, the condition of local and ancillary roads remains unknown to decision-makers. This study addresses this gap by exploring the capabilities of publicly available Synthetic Aperture Radar (SAR) data to estimate pavement roughness. This paper introduces a novel framework to address the challenges of using SAR images in evaluating pavement condition. The trunk highway network in Minnesota is analyzed to develop deep learning models that predict International Roughness Index (IRI) and associated prediction intervals. This analysis found that SAR images have a strong potential in quantifying pavement condition. The deep learning models were able to predict IRI with a mean absolute error of 14.6 in./miles and provide intervals of pavement condition that capture actual IRI values with an accuracy of 81%.
Highlights The study explores capabilities of satellite data to estimate pavement condition. Synthetic Aperture Radar (SAR) data and deep learning models are examined. Proposed framework addresses challenges of using SAR images in pavement applications. SAR images have a strong potential in quantifying pavement roughness. Deep learning models predict pavement roughness intervals with 81% accuracy.
Deep learning for estimating pavement roughness using synthetic aperture radar data
Abstract Because of the high costs of ground-based pavement condition methods used to monitor pavement condition, transportation agencies often limit distress surveys to their major roads. As a result, the condition of local and ancillary roads remains unknown to decision-makers. This study addresses this gap by exploring the capabilities of publicly available Synthetic Aperture Radar (SAR) data to estimate pavement roughness. This paper introduces a novel framework to address the challenges of using SAR images in evaluating pavement condition. The trunk highway network in Minnesota is analyzed to develop deep learning models that predict International Roughness Index (IRI) and associated prediction intervals. This analysis found that SAR images have a strong potential in quantifying pavement condition. The deep learning models were able to predict IRI with a mean absolute error of 14.6 in./miles and provide intervals of pavement condition that capture actual IRI values with an accuracy of 81%.
Highlights The study explores capabilities of satellite data to estimate pavement condition. Synthetic Aperture Radar (SAR) data and deep learning models are examined. Proposed framework addresses challenges of using SAR images in pavement applications. SAR images have a strong potential in quantifying pavement roughness. Deep learning models predict pavement roughness intervals with 81% accuracy.
Deep learning for estimating pavement roughness using synthetic aperture radar data
Bashar, Mohammad Z. (author) / Torres-Machi, Cristina (author)
2022-07-26
Article (Journal)
Electronic Resource
English
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