Petroleum Science >2026,??Issue5:??2686-2697 DOI: https://doi.org/10.1016/j.petsci.2026.03.045
MSA-DETR: Multi-scale attention enhanced DETR for object detection in oilfield surveillance Open?Access
文章信息
作者:Qian-Wen Cao, Jin-Rong Ma, Lai-Bin Zhang
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引用方式:Cao, Q.W., Ma, J.R., Zhang, L.B., 2026. MSA-DETR: Multi-scale attention enhanced DETR for object detection in oilfield surveillance. Petrol. Sci. 23 (5), 2686–2697. https://doi.org/10.1016/j.petsci.2026.03.045.
文章摘要
In modern petroleum engineering, ensuring operational safety at drilling sites is of critical importance. Visual object detection plays a key role in intelligent safety monitoring systems by enabling real-time supervision of personnel and equipment. However, safety-critical targets in drilling scenes are often small, partially occluded, and embedded in cluttered environments, leading to decreased detection accuracy and potential safety risks. Existing convolutional neural networks (CNN)-based detectors, although effective in natural scenes, often exhibit limited robustness under such complex industrial conditions. To address these challenges, this paper proposes MSA-DETR, a Transformer-based detection framework designed to enhance multi-scale perception in drilling monitoring scenarios. By improving the ability to capture both global contextual information and fine-grained visual cues, the proposed approach enhances sensitivity to safety-relevant objects. Extensive experiments conducted on two real-world drilling monitoring datasets demonstrate that MSA-DETR consistently outperforms state-of-the-art detection methods, providing more reliable visual perception for petroleum safety management and accident prevention.
关键词
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Object detection; Petroleum drilling safety; Multi-scale perception; Drilling engineering; Artificial intelligence