基于主动感知的涂层状态评估的深度学习

Lili Liu, E. Tan, Xieping Yin, Yongda Zhen, Z. Cai
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引用次数: 5

摘要

防护涂层是保护海洋和近海结构免受腐蚀的主要手段。涂层击穿与腐蚀(CBC)评价是涂层失效管理的主要方法。评估方法可能导致不必要的维护成本和更高的故障风险。为了实现全面收集CBC评估数据,将使用无人arial系统(UAS),在最新技术创新的协助下,促进在难以到达的位置收集数据。为了对涂层失效的严重程度进行客观的评估,开发了一种基于图像的CBC评估系统。这种方法比测量员现有的人工检测解决方案更适合于通过捕获和分析目标区域的图片/视频来检测大面积。本文开发了基于深度学习的CBC评估系统中的目标检测,为船舶和近海工业提供有效的CBC评估。这将大大提高涂层检测的效率和可靠性。
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Deep learning for Coating Condition Assessment with Active perception
Protective coatings are the primary means of protecting marine and offshore structures from corrosion. Coating breakdown and corrosion (CBC) evaluation is the primary method of coating failure management. Evaluation methods can result in unnecessary maintenance costs and a higher risk of failure. To achieve a comprehensive collection of data for CBC assessment, an unmanned arial system (UAS), assisted by the latest technological innovations, will be used to facilitate data collection in inaccessible locations. An image-based CBC assessment system is developed to provide objective assessment of the severity of coating failure. This method is more suitable for inspecting large areas by capturing and analyzing pictures/videos of the target area than the surveyor's existing manual inspection solution. In this paper, deep learning-based object detection in the CBC assessment system has been developed to provide an effective CBC assessment for the marine and offshore industries. This will greatly improve the efficiency and reliability of coating inspection.
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