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公开(公告)号:US12175633B1
公开(公告)日:2024-12-24
申请号:US18763894
申请日:2024-07-03
Applicant: Chengdu University of Technology
Inventor: Guangle Yao , Honghui Wang , Wenlong Zhou , Wei Zeng , Chen Wang , Ruijia Li , Xiaoyu Xu , Jun Li , Siyuan Sun
Abstract: A method of enhancing an abnormal area of a ground-penetrating radar image based on hybrid-supervised learning includes the steps of: building a database including a real image set, a simulation image set and a simulation image label set; adopting a generative adversarial network; processing semi-supervised training and unsupervised training alternately to obtain a trained model, then inputting a real radar image with abnormal area that needs to be enhanced into the model and processing through the generative network to output an abnormal-area-enhanced image. The method overcomes the problems of differences in characteristics between simulated images and real images, and low utilization efficiency of real image information by unsupervised methods, and improves the utilization efficiency of the enhanced network for real image information, the saliency of abnormal areas on real images, and the generalization ability of the enhanced network, therefore effectively enhances the significance of abnormal areas in ground-penetrating radar images.