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  • 陈玉华 ( 副教授 )

    的个人主页 http://faculty.cumt.edu.cn/CYH12/zh_CN/index.htm

  •   副教授
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Oil and Gas Facility Detection in High-Resolution Remote Sensing Images Based on Oriented R-CNN
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发表刊物:Remote Sensing
摘要:Accurate detection of oil and gas (O&G) facilities in high-resolution remote sensing imagery is critical for infrastructure surveillance and sustainable resource management, yet conventional detectors struggle with severe class imbalance, extreme scale variation, and arbitrary orientation. In this work, we propose OGF Oriented R-CNN (Oil and Gas Facility Detection Oriented Region-based Convolutional Neural Network), an enhanced oriented detection model derived from Oriented R-CNN that integrates three improvements: (1) O&G Loss Function, (2) Class-Aware Hard Example Mining (CAHEM) module, and (3) Feature Pyramid Network with Feature Enhancement Attention (FPNFEA). Working in synergy, they resolve the coupled challenges more effectively than any standalone fix and do so without relying on rigid one-to-one matching between modules and individual issues. Evaluated on the O&G facility dataset comprising 3,039 high-resolution images annotated with rotated bounding boxes across three classes (well sites: 2,553, industrial and mining lands: 568, drilling: 204), OGF Oriented R-CNN achieves a mean average precision (mAP) of 82.9%, outperforming five state-of-the-art (SOTA) models by margins of up to 27.6 percentage points (pp) and delivering a cumulative gain of +10.5 pp over Oriented R-CNN.
是否译文:否
版权所有:中国矿业大学