温度对热成像和深度学习检测模型的影响

Yixin Huangfu, Linnea Campbell, S. Habibi
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摘要

红外摄像机可以作为自动驾驶环境感知系统的一个很好的补充。与光学摄像机、雷达或激光雷达相比,红外摄像机在探测人类和动物等热辐射物体方面表现出色,有可能提高自动驾驶汽车的安全性。红外图像的底层检测算法通常与光学相机应用的深度学习模型相同。然而,由于红外相机和光学相机的工作原理不同,它们产生的图像也不同。本文介绍了环境温度变化引起的红外图像的视觉差异,并研究了它们对深度学习探测器的影响。具体来说,本研究调查了两个红外数据集,一个来自麦克马斯特大学CMHT组,另一个来自FLIR公司。它们分别代表北方的寒冷气候和热带气候。在两个数据集上分别训练了两个基于yolo的目标检测模型。评价结果表明,温度越低,性能越好。与此同时,交叉评估表明,当对相反的数据集评估模型时,性能会急剧下降。此外,使用两个数据集训练的第三个模型在所有指标上都优于前两个模型。该研究强调了环境温度在红外图像探测器训练中的重要性,并为性能不匹配问题提供了可行的解决方案。
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Temperature Effect on Thermal Imaging and Deep Learning Detection Models
Infrared cameras can be a great supplement to the environmental perception systems for autonomous driving. Compared to optical cameras, radars, or Lidars, infrared cameras exceed in detecting heat-radiating objects, such as humans and animals, potentially improving the safety of autonomous cars. The underlying detection algorithms for infrared images are generally the same deep learning models applied for optical cameras. However, as the working principles of infrared and optical cameras are different, so are the images they produce. This paper presents the visual differences in infrared images caused by ambient temperature changes and examines their effect on deep learning detectors. Specifically, this study investigates two infrared datasets, one from McMaster University CMHT group and the other from the FLIR company. They represent a northern cold climate and a tropical climate, respectively. Two YOLO-based object detection models are trained on the two datasets separately. The evaluation results show that a colder temperature results in a better performance. In the meantime, cross-evaluation shows a sharp decrease in performance when evaluating the model against the opposite dataset. Furthermore, a third model trained using both datasets outperform the previous two models in all metrics. This study highlights the importance of ambient temperature in training infrared image detectors and provides a feasible solution to performance mismatch issues.
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