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Classifying self-cast shadow regions in aerial camera images

机译:在空中摄像机图像中分类自我凹凸区域

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In many fields of airborne surveillance, self-cast shadows (i.e. shadows in a scene which are cast by an aircraft) pose a not negligible problem for image processing tasks. Self-cast shadows can impede the stability of computer vision applications like remote sensing, visual odometry, or tracking tasks. In order to be able to reliably identify self-cast shadows in on-board camera images, a model-based approach has been developed. This approach utilizes easily accessible sensor data to make predictions about the position and the shape of self-cast shadows. The predicted shadow is then used to search for image regions which contain self-cast shadows. The developed approach is presented in detail in this paper. Further, the approach is applied on flight test data which has been recorded by a helicopter that is operated by the German Aerospace Center (DLR). The evaluation of the flight test shows that the approach is able to identify self-cast shadow regions with a high reliability.
机译:在空降监测的许多领域,自铸影(即飞机投射的场景中的阴影)对图像处理任务的问题不可忽略的问题。自铸造阴影可以妨碍计算机视觉应用程序等遥感,视觉内径仪或跟踪任务的稳定性。为了能够可靠地识别车载摄像机图像中的自铸影,已经开发了一种基于模型的方法。这种方法利用易于访问的传感器数据来使预测对自铸造阴影的位置和形状进行预测。然后,预测的阴影用于搜索包含自施加阴影的图像区域。本文详细介绍了开发的方法。此外,该方法应用于飞行测试数据,该方法已经被德国航空航天中心(DLR)操作的直升机记录。飞行试验的评估表明,该方法能够识别具有高可靠性的自铸影区域。

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