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Maximizing feature detection in aerial unmanned aerial vehicle datasets

机译:最大化空中无人空中飞行器数据集中的特征检测

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摘要

This paper compares several feature detectors applied to imagery from an unmanned aerial vehicle to find the best detection algorithm when applied to datasets that vary in translation and have little or no image overlap. Metrics of inliers and reconstruction accuracy of feature detectors are considered with respect to three-dimensional reconstruction results. The image matching results are tested experimentally, and an approach to detecting false matches is outlined. Results showed that although the detectors varied in the number of keypoints generated, a large number of inliers does not necessarily translate into more points in the final point cloud reconstruction and that the process of comparing a large quantity of redundant keypoints may outweigh the advantage of having the extra points. The results also showed that despite the development of keypoint detectors and descriptors, none of them consistently demonstrated a substantial improvement in the quality of structure from motion reconstruction when applied to a wide range of disparate urban and rural images.
机译:本文将应用于图像的几个特征探测器与无人机的空中车辆应用于图像,以找到最佳的检测算法,当应用于翻译中不同的数据集并且具有很少或没有图像重叠。关于三维重建结果考虑了特征探测器的最基联利者的度量和重建精度。图像匹配结果经过实验测试,并概述了检测假匹配的方法。结果表明,虽然探测器在产生的关键点的数量中变化,但是大量的最基于最终点云重建中的更多点,并且比较大量冗余关键点的过程可能超过具有的优点额外的点。结果还表明,尽管开发了关键点检测器和描述符,但是当应用于广泛的城市和农村形象时,它们都不始终如一地证明了在运动重建的结构质量的显着提高。

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