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Robust and adaptive band-to-band image transform of UAS miniature multi-lens multispectral camera

机译:UAS微型多镜头多光谱相机的鲁棒自适应频带间图像变换

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Utilizing miniature multispectral (MS) or hyperspectral (HS) cameras by mounting them on an Unmanned Aerial System (UAS) has the benefits of convenience and flexibility to collect remote sensing imagery for precision agriculture, vegetation monitoring, and environment investigation applications. Most miniature MS cameras adopt a multi-lens structure to record discrete MS bands of visible and invisible information. The differences in lens distortion, mounting positions, and viewing angles among lenses mean that the acquired original MS images have significant band misregistration errors. We have developed a Robust and Adaptive Band-to-Band Image Transform (RABBIT) method for dealing with the band co-registration of various types of miniature multi-lens multispectral cameras (Mini-MSCs) to obtain band co-registered MS imagery for remote sensing applications. The RABBIT utilizes modified projective transformation (MPT) to transfer the multiple image geometry of a multi-lens imaging system to one sensor geometry, and combines this with a robust and adaptive correction (RAC) procedure to correct several systematic errors and to obtain sub-pixel accuracy. This study applies three state-of-the-art Mini-MSCs to evaluate the RABBIT method's performance, specifically the Tetracam Miniature Multiple Camera Array (MiniMCA), Micasense RedEdge, and Parrot Sequoia. Six MS datasets acquired at different target distances and dates, and locations are also applied to prove its reliability and applicability. Results prove that RABBIT is feasible for different types of Mini-MSCs with accurate, robust, and rapid image processing efficiency. (C) 2017 International Society for Photogrammetry and Remote Sensing, Inc. (ISPRS). Published by Elsevier B.V. All rights reserved.
机译:通过将微型多光谱(MS)或高光谱(HS)摄像机安装在无人航空系统(UAS)上来使用它具有方便和灵活的优势,可以为精密农业,植被监测和环境调查应用收集遥感影像。大多数微型MS相机采用多镜头结构来记录可见和不可见信息的离散MS波段。镜头之间的镜头畸变,安装位置和视角的差异意味着所获取的原始MS图像具有明显的色带失准误差。我们已经开发了一种鲁棒且自适应的带间图像变换(RABBIT)方法,用于处理各种类型的微型多镜头多光谱相机(Mini-MSC)的带共配准,以获取带共配准的MS图像,用于遥感应用。 RABBIT利用修改后的投影变换(MPT)将多镜头成像系统的多图像几何形状转换为一个传感器几何形状,并将其与鲁棒的自适应校正(RAC)程序相结合,以校正多个系统误差并获得子像素精度。这项研究应用了三种最新的Mini-MSC来评估RABBIT方法的性能,特别是Tetracam微型多摄像机阵列(MiniMCA),Micasense RedEdge和Parrot Sequoia。还应用了六个在不同目标距离,日期和位置获取的MS数据集,以证明其可靠性和适用性。结果证明,RABBIT适用于不同类型的Mini-MSC,具有准确,强大和快速的图像处理效率。 (C)2017国际摄影测量与遥感学会(ISPRS)。由Elsevier B.V.发布。保留所有权利。

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