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Dynamic turbulence mitigation with large moving objects

机译:大型移动物体的动态湍流缓解

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Long range imaging with visible or infrared observation systems is typically hampered by atmospheric turbulence. The fluctuations in the refractive index of the air produce random shifts and blurs in the recorded imagery that vary across the field of view and over time. This severely complicates their utility for visual detection, recognition and identification at large distances. Software based turbulence mitigation methods aim to restore such recorded image sequences based on the image data only and thereby enable visual identification at larger distances. Although successful restoration has been achieved on static scenes in the past, a significant challenge remains in accounting for moving objects such that they remain visible as moving objects in the output. Under moderate turbulence conditions, the turbulence induced shifts may be several pixels in magnitude and occur on the same length scale as moving objects. This severely complicates the segmentation between these objects and the background. Here we investigate how turbulence mitigation may be accomplished on background as well as large moving objects for both land and sea based imaging under moderate turbulence conditions. We apply optical flow estimation methods to determine both the turbulence induced shifts in image sequences as well as the motion of large moving objects. These motion estimates are used with our TNO turbulence mitigation software to reduce the effects of turbulence and to stabilize the output to a dynamic reference. We apply this approach to both land and sea scenarios. We investigate how different regularization methods for the optical flow affect the accuracy of the segmentation between moving object motion and the background motion. Moreover we qualitatively asses the quality improvement of the resulting imagery in sequences of output images, and show a substantial gain in their apparent sharpness and stability on both the background and moving objects.
机译:具有可见或红外观察系统的长距离成像通常由大气湍流阻碍。空气的折射率的波动产生随机换档和模糊,在录制的图像中各不相同的视野和随时间变化。这严重使其效用与大距离的视觉检测,识别和识别复杂化。基于软件的湍流缓解方法旨在基于图像数据恢复这些记录的图像序列,从而能够在较大的距离处实现视觉识别。虽然过去已经在静态场景中取得了成功的恢复,但在核算中仍然存在重大挑战,以便在移动物体中核算,使得它们随着输出中的移动物体而保持可见。在中等湍流条件下,湍流感应偏移可以是几个像素,并且在与移动物体相同的长度尺度上发生。这严重复杂化这些对象和背景之间的分割。在这里,我们研究了在适度的湍流条件下的陆地和海洋成像的背景和大型移动物体上如何完成湍流缓解。我们应用光学流量估计方法以确定图像序列中的湍流诱导的变化以及大移动物体的运动。这些运动估计与我们的TNO湍流缓解软件一起使用,以减少湍流的影响,并稳定输出到动态参考。我们将这种方法应用于土地和海洋方案。我们研究了光流的不同正则化方法如何影响移动对象运动和背景运动之间的分割的准确性。此外,我们定性地判断出输出图像序列中所产生的图像的质量改进,并在背景和移动物体上显示出明显清晰度和稳定性的大量增益。

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