cs.AI updates on arXiv.org 08月05日
Deep Learning for Pavement Condition Evaluation Using Satellite Imagery
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本文探讨了利用卫星系统和深度学习模型分析卫星图像,评估路面状况的新方法,通过3,000多张卫星图像和路面评价数据,实现了超过90%的准确率,为快速、低成本评估路面网络提供新途径。

arXiv:2508.01206v1 Announce Type: cross Abstract: Civil infrastructure systems covers large land areas and needs frequent inspections to maintain their public service capabilities. The conventional approaches of manual surveys or vehicle-based automated surveys to assess infrastructure conditions are often labor-intensive and time-consuming. For this reason, it is worthwhile to explore more cost-effective methods for monitoring and maintaining these infrastructures. Fortunately, recent advancements in satellite systems and image processing algorithms have opened up new possibilities. Numerous satellite systems have been employed to monitor infrastructure conditions and identify damages. Due to the improvement in ground sample distance (GSD), the level of detail that can be captured has significantly increased. Taking advantage of these technology advancement, this research investigated to evaluate pavement conditions using deep learning models for analyzing satellite images. We gathered over 3,000 satellite images of pavement sections, together with pavement evaluation ratings from TxDOT's PMIS database. The results of our study show an accuracy rate is exceeding 90%. This research paves the way for a rapid and cost-effective approach to evaluating the pavement network in the future.

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卫星图像 深度学习 路面评估
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