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An improved PCA-SIFT algorithm application in light small UAV image registration

机译:改进的PCA-SIFT算法在轻型小型无人机图像配准中的应用

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Unmanned aerial vehicles (UAVs) represent a quickly evolving technology, broadening the availability of remote sensing tools to small-scale research groups in a variety of scientific fields. Light small UAV remote sensing is a main way to obtain centimeter-level high resolution and hour-lever response data. Many technical skills are involved widely in the development of UAV platform covering platform development, data post-processing, and image analysis. Image registration is the key problem among them. In order to improve the performance of remote sensing images matching from Light small UAV, an improved PCA-SIFT algorithm is proposed based on the SIFT algorithm. To demonstrate the performance of the proposed method, images from DJI Phantom 4 are used for the registration experiment. The result shows that the proposed algorithm performs better in feature matching accuracy and keeps time complexity, compared with PCA-SIFT algorithm.
机译:无人机(UAV)代表着一种快速发展的技术,它为各种科学领域的小型研究小组扩展了遥感工具的可用性。小型无人机无人机遥感是获得厘米级高分辨率和小时杠杆响应数据的主要方法。 UAV平台的开发涉及许多技术技能,包括平台开发,数据后处理和图像分析。图像配准是其中的关键问题。为了提高轻型小型无人机的遥感图像匹配性能,提出了一种基于SIFT算法的改进的PCA-SIFT算法。为了演示该方法的性能,将DJI Phantom 4的图像用于配准实验。结果表明,与PCA-SIFT算法相比,该算法在特征匹配精度上具有更好的性能,并且保持了时间复杂度。

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