Landmines remain a persistent humanitarian threat, with 110 million actively deployed mines across 60 countries, claiming 26,000 casualties annually. This research evaluates adaptive Red-Green-Blue (RGB) and Long-Wave Infrared (LWIR) fusion for Unmanned Aerial Systems (UAS)-based detection of surface-laid landmines, leveraging the thermal contrast between the ordnance and the surrounding soil to enhance feature extraction. Using You Only Look Once (YOLO) architectures (v8, v10, v11) across 114 test images, generating 35,640 model-condition evaluations, YOLOv11 achieved optimal performance (86.8% mAP), with 10 to 30% thermal fusion at 5 to 10m altitude identified as the optimal detection parameters. A complementary architectural comparison revealed that while RF-DETR achieved the highest accuracy (69.2% mAP), followed by Faster R-CNN (67.6%), YOLOv11 (64.2%), and RetinaNet (50.2%), YOLOv11 trained 17.7 times faster than the transformer-based RF-DETR (41 minutes versus 12 hours), presenting a critical accuracy-efficiency tradeoff for operational deployment. Aggregated multi-temporal training datasets outperformed season-specific approaches by 1.8 to 9.6%, suggesting that models benefit from exposure to diverse thermal conditions. Anti-Tank (AT) mines achieved 61.9% detection accuracy, compared with 19.2% for Anti-Personnel (AP) mines, reflecting both the size differential and thermal-mass differences between these ordnance classes. As this research examined surface-laid mines where thermal contrast is maximized, future research should quantify thermal contrast effects for mines buried at varying depths across heterogeneous soil types.
翻译:地雷仍是持续存在的人道主义威胁,目前有1.1亿枚现役地雷分布在60个国家,每年造成2.6万人伤亡。本研究评估了基于无人机系统的自适应红绿蓝(RGB)与长波红外(LWIR)融合技术对地表布设地雷的检测能力,利用弹药与周围土壤之间的热对比度增强特征提取。通过对114张测试图像使用YOLO架构(v8、v10、v11)进行35,640次模型条件评估,YOLOv11实现了最佳性能(86.8% mAP),其中5至10米高度下10%至30%的热融合被确定为最优检测参数。补充架构对比表明,虽然RF-DETR获得了最高准确率(69.2% mAP),其次为Faster R-CNN(67.6%)、YOLOv11(64.2%)和RetinaNet(50.2%),但YOLOv11的训练速度比基于Transformer的RF-DETR快17.7倍(41分钟对比12小时),这为实际部署提供了关键的准确率-效率权衡方案。聚合多时相训练数据集的表现优于季节特异性方法1.8%至9.6%,表明模型能从多样化的热条件中受益。反坦克(AT)地雷实现了61.9%的检测准确率,而反步兵(AP)地雷仅为19.2%,这反映了两类弹药在尺寸与热质量上的差异。由于本研究针对热对比度最大化的地表布设地雷,未来研究应量化不同埋藏深度与异质土壤类型下地雷的热对比效应。