cs.AI updates on arXiv.org 07月08日 13:53
YOLO-Based Pipeline Monitoring in Challenging Visual Environments
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研究利用AI技术提升海底管道在低能见度环境下的监测效果,比较YOLOv8和YOLOv11模型在复杂环境中的表现,结果显示YOLOv11优于YOLOv8。

arXiv:2507.02967v1 Announce Type: cross Abstract: Condition monitoring subsea pipelines in low-visibility underwater environments poses significant challenges due to turbidity, light distortion, and image degradation. Traditional visual-based inspection systems often fail to provide reliable data for mapping, object recognition, or defect detection in such conditions. This study explores the integration of advanced artificial intelligence (AI) techniques to enhance image quality, detect pipeline structures, and support autonomous fault diagnosis. This study conducts a comparative analysis of two most robust versions of YOLOv8 and Yolov11 and their three variants tailored for image segmentation tasks in complex and low-visibility subsea environments. Using pipeline inspection datasets captured beneath the seabed, it evaluates model performance in accurately delineating target structures under challenging visual conditions. The results indicated that YOLOv11 outperformed YOLOv8 in overall performance.

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海底管道监测 AI技术 YOLOv8 YOLOv11 图像识别
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