计算机科学
水下
分割
人工智能
计算机视觉
鉴定(生物学)
像素
图像分割
实时计算
模式识别(心理学)
生物
海洋学
植物
地质学
作者
Yangtao Li,Tengfei Bao,Xianjun Huang,Hao Chen,Bo Xu,Xiaosong Shu,Yuhang Zhou,Qingbo Cao,Jiuzhou Tu,Ruijie Wang,Kang Zhang
标识
DOI:10.1016/j.autcon.2022.104600
摘要
Remotely operated vehicles (ROVs) with cameras provide a solution for dam underwater information acquisition, but problems like massive high-dimensional data processing and effective damage-related information extraction also occur. This paper thereby proposes a real-time pixel-level dam underwater crack automatic segmentation and quantification framework using lightweight semantic segmentation network LinkNet and two-stage hybrid transfer learning(TL). With the combination of in-domain and cross-domain TL, the modeling cost and computational burden can be significantly reduced by transferring knowledge learned in relevant domains to the target domain. The proposed method shows strong identification capability in complicated underwater scenarios(motion blur, uneven illumination, and obstacle blocking), achieving performance with 0.8924 mIOU, 0.9444 precision, 0.9151 recall, and 0.9295 F1-score in the test set. Combined with infrared laser-assisted ranging systems, the geometric features and physical sizes of cracks are quantified using the proposed method. Finally, a visual GUI software with both offline and online detection patterns is developed to perform real-time detection in practice.
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