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AUTOMATED BLUR DETECTION AND REMOVAL IN AIRBORNE IMAGING SYSTEMS USING IMU DATA

机译:使用IMU数据在机载成像系统中自动模糊检测和移除

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Images acquired by airborne sensors exhibit blur due to turbulent motion experienced by the aircraft. Significant amount of blur renders the images unusable for subsequent visual/automated analysis, requiring a re-flight. This necessitates quantifying the amount of blur in an image. Most approaches to blur quantification use image based methods to estimate the MTF (Modular Transfer Function) that indicates the amount of blur. Their limitations are - (1) MTF calculation requires presence of straight edges in the image scene, which may not always be available, (2) Due to the absence of an ideal edge, the amount of blur estimated is relative, and (3) It is computationally expensive and therefore may not be practical for blur detection in real time applications. Our solution uses the sensor motion as measured by an Inertial Measurement Unit (IMU) mounted in the camera system to calculate the motion experienced by the aircraft and the sensor during the time the shutter was actually open. This motion information together with the blur detection algorithm presented in this paper can provide an accurate quantification of blur in pixel units. Once we identify the images that exceed a given blur threshold, we use a blur removal algorithm that uses the IMU data and a natural image prior to compute per-pixel, spatially-varying blur, and then de-convolves an image to produce de-blurred images. The presented blur detection and removal methods are currently being used offline to quantify and remove the blur from images acquired by the UltraCam systems within the Global Ortho Program (Walcher, 2012), which generates ortho imagery for all of the continental US as well as Western Europe, from over 2.5 million images. Furthermore, the blur detection method will be incorporated in the camera software of all our operational and forthcoming UltraCam imaging systems for real-time blur quantification.
机译:由于飞机经历的湍流运动而获得的空气传感器获得的图像表现出模糊。大量模糊使图像可用于随后的视觉/自动分析,需要重新飞行。这需要量化图像中的模糊量。模糊量化的大多数方法使用基于图像的方法来估计指示模糊量的MTF(模块化传递函数)。它们的局限性是 - (1)MTF计算需要在图像场景中存在直边,这可能并不总是可用,(2)由于没有理想的边缘,估计的模糊量是相对的,并且(3)它是计算昂贵的,因此在实时应用中的模糊检测可能不是实用的。我们的解决方案使用由安装在摄像机系统中的惯性测量单元(IMU)测量的传感器运动来计算飞机和传感器在快门实际打开时所经历的运动。该运动信息与本文中呈现的模糊检测算法一起可以提供精确定量的像素单元的模糊。一旦我们识别超过给定模糊阈值的图像,我们使用模糊删除算法在计算每个像素,空间变形模糊之前使用IMU数据和自然图像,然后将图像拆除以产生DE-模糊的图像。目前正在使用呈现的模糊检测和拆卸方法,以便从全球ortho计划(Walcher,2012)内的超卡系统中获取的图像中的图像的模糊,为所有美国大陆和西方人提供俄罗斯图像欧洲,来自超过250万图像。此外,模糊检测方法将结合在我们所有操作的相机软件中,以用于实时模糊量化的所有运行和即将到来的ultracam成像系统。

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