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Integration of UAV-Based Photogrammetry and Terrestrial Laser Scanning for the Three-Dimensional Mapping and Monitoring of Open-Pit Mine Areas

机译:基于无人机的摄影测量与地面激光扫描的集成,用于露天矿区的三维制图和监测

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This paper presents a practical framework for the integration of unmanned aerial vehicle (UAV) based photogrammetry and terrestrial laser scanning (TLS) with application to open-pit mine areas, which includes UAV image and TLS point cloud acquisition, image and cloud point processing and integration, object-oriented classification and three-dimensional (3D) mapping and monitoring of open-pit mine areas. The proposed framework was tested in three open-pit mine areas in southwestern China. (1) With respect to extracting the conjugate points of the stereo pair of UAV images and those points between TLS point clouds and UAV images, some feature points were first extracted by the scale-invariant feature transform (SIFT) operator and the outliers were identified and therefore eliminated by the RANdom SAmple Consensus (RANSAC) approach; (2) With respect to improving the accuracy of geo-positioning based on UAV imagery, the ground control points (GCPs) surveyed from global positioning systems (GPS) and the feature points extracted from TLS were integrated in the bundle adjustment, and three scenarios were designed and compared; (3) With respect to monitoring and mapping the mine areas for land reclamation, an object-based image analysis approach was used for the classification of the accuracy improved UAV ortho-image. The experimental results show that by introduction of TLS derived point clouds as GCPs, the accuracy of geo-positioning based on UAV imagery can be improved. At the same time, the accuracy of geo-positioning based on GCPs form the TLS derived point clouds is close to that based on GCPs from the GPS survey. The results also show that the TLS derived point clouds can be used as GCPs in areas such as in mountainous or high-risk environments where it is difficult to conduct a GPS survey. The proposed framework achieved a decimeter-level accuracy for the generated digital surface model (DSM) and digital orthophoto map (DOM), and an overall accuracy of 90.67% for classification of the land covers in the open-pit mine.
机译:本文提出了一个基于无人机的摄影测量与地面激光扫描(TLS)集成的实用框架,并将其应用于露天矿区,包括无人机图像和TLS点云采集,图像和云点处理以及集成,面向对象的分类以及露天矿区的三维(3D)映射和监视。该框架在中国西南部的三个露天矿区进行了测试。 (1)关于提取立体无人机图像的共轭点以及TLS点云和无人机图像之间的共轭点,首先通过尺度不变特征变换(SIFT)算子提取一些特征点,并识别异常值并因此通过RANdom SAmple Consensus(RANSAC)方法消除了; (2)为了提高基于无人机图像的地理定位的准确性,将在全球定位系统(GPS)中测量的地面控制点(GCP)和从TLS中提取的特征点整合到了包调整中,并提供了三种方案设计和比较; (3)关于对矿区进行土地复垦的监测和制图,基于对象的图像分析方法被用于对精度提高的无人机正射图像进行分类。实验结果表明,通过引入TLS派生点云作为GCP,可以提高基于无人机图像的地理定位精度。同时,基于TLS派生点云的GCP进行地理位置定位的准确性与GPS测量中基于GCP进行地理定位的准确性相近。结果还表明,TLS衍生的点云可以在难以进行GPS测量的山区或高风险环境中用作GCP。所提出的框架对于生成的数字表面模型(DSM)和数字正射影像图(DOM)达到了分米级的精度,对于露天矿山的土地覆盖分类,总体精度为90.67%。

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