Object detection models commonly deployed on uncrewed aerial systems (UAS) focus on identifying objects in the visible spectrum using Red-Green-Blue (RGB) imagery. However, there is growing interest in fusing RGB with thermal long wave infrared (LWIR) images to increase the performance of object detection machine learning (ML) models. Currently LWIR ML models have received less research attention, especially for both ground- and air-based platforms, leading to a lack of baseline performance metrics evaluating LWIR, RGB and LWIR-RGB fused object detection models. Therefore, this research contributes such quantitative metrics to the literature. The results found that the ground-based blended RGB-LWIR model exhibited superior performance compared to the RGB or LWIR approaches, achieving a mAP of 98.4%. Additionally, the blended RGB-LWIR model was also the only object detection model to work in both day and night conditions, providing superior operational capabilities. This research additionally contributes a novel labelled training dataset of 12,600 images for RGB, LWIR, and RGB-LWIR fused imagery, collected from ground-based and air-based platforms, enabling further multispectral machine-driven object detection research.
翻译:目前,LWIR ML模型得到的研究关注较少,特别是在地面和空中平台上,导致缺乏评估LWIR、RGB和LWIR-RGB引信物体探测模型的基准性能指标。因此,这项研究为文献提供了此类定量指标。研究结果发现,地面混合的RGB-LWIR模型与RGB或LWIR方法相比表现优于RGB-LWIR模型,达到98.4%的 mAP。此外,混合的RGB-LWIR模型也是白天和夜间工作的唯一对象探测模型,提供了更先进的操作能力。这一研究还有助于为RGB、LWIR和RGB-LWIR的多功能性能传感器平台收集12 600张图像的新标签化培训数据集,其中包括基于RGB、LWIR和RGB-LWIR的多功能性能定位图像。