Atmospheric turbulence has a degrading effect on the image quality of long-range observation systems. As a result of various elements such as temperature, wind velocity, humidity, etc., turbulence is characterized by random fluctuations in the refractive index of the atmosphere. It is a phenomenon that may occur in various imaging spectra such as the visible or the infrared bands. In this paper, we analyze the effects of atmospheric turbulence on object detection performance in thermal imagery. We use a geometric turbulence model to simulate turbulence effects on a medium-scale thermal image set, namely "FLIR ADAS v2". We apply thermal domain adaptation to state-of-the-art object detectors and propose a data augmentation strategy to increase the performance of object detectors which utilizes turbulent images in different severity levels as training data. Our results show that the proposed data augmentation strategy yields an increase in performance for both turbulent and non-turbulent thermal test images.
翻译:由于温度、风速、湿度等各种因素,气流的特征是大气折射指数的随机波动,这是各种成像光谱中可能出现的现象,例如可见光或红外带。在本文中,我们分析大气动荡对热图像中物体探测性能的影响。我们使用几何气流模型模拟中尺度热图像(即 " FLIR ADAS v2 " )的气流效应。我们对最先进的物体探测器进行热域调整,并提出数据增强战略,以提高物体探测器的性能,利用不同严重程度的动荡图像作为培训数据。我们的结果显示,拟议的数据增强战略提高了动荡和非扰动热测试图像的性能。