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Aerial Moving Target Detection Based on Motion Vector Field Analysis

机译:基于运动矢量场分析的空中运动目标检测

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摘要

An efficient automatic detection strategy for aerial moving targets in airborne forward-looking infrared (FLIR) imagery is presented in this paper. Airborne cameras induce a global motion over all objects in the image, that invalidates motion-based segmentation techniques for static cameras. To overcome this drawback, previous works compensate the camera ego-motion. However, this approach is too much dependent on the quality of the ego-motion compensation, tending towards an over-detection. In this work, the proposed strategy estimates a robust motion vector field, free of erroneous vectors. Motion vectors are classified into different independent moving objects, corresponding to background objects and aerial targets. The aerial targets are directly segmented using their associated motion vectors. This detection strategy has a low computational cost, since no compensation process or motion-based technique needs to be applied. Excellent results have been obtained over real FLIR sequences.
机译:本文提出了一种有效的自动检测策略,用于机载前视红外(FLIR)图像中的空中移动目标。机载相机在图像中的所有对象上引起全局运动,这使静态相机的基于运动的分割技术无效。为了克服这个缺点,以前的工作可以补偿相机的自我运动。但是,这种方法在很大程度上取决于自我运动补偿的质量,倾向于过度检测。在这项工作中,所提出的策略估计了鲁棒的运动矢量场,没有错误的矢量。运动矢量被分类为不同的独立运动对象,分别对应于背景对象和空中目标。空中目标使用其关联的运动矢量直接分割。该检测策略的计算成本较低,因为无需应用任何补偿过程或基于运动的技术。在真实的FLIR序列上已经获得了出色的结果。

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