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Improving drone localisation around wind turbines using monocular model-based tracking

机译:使用基于单眼模型的跟踪来改善风力涡轮机周围的无人机定位

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We present a novel method of integrating image-based measurements into a drone navigation system for the automated inspection of wind turbines. We take a model-based tracking approach, where a 3D skeleton representation of the turbine is matched to the image data. Matching is based on comparing the projection of the representation to that inferred from images using a convolutional neural network. This enables us to find image correspondences using a generic turbine model that can be applied to a wide range of turbine shapes and sizes. To estimate 3D pose of the drone, we fuse the network output with GPS and IMU measurements using a pose graph optimiser. Results illustrate that the use of the image measurements significantly improves the accuracy of the localisation over that obtained using GPS and IMU alone.
机译:我们提出了一种将基于图像的测量结果集成到无人机导航系统中以自动检查风力涡轮机的新颖方法。我们采用基于模型的跟踪方法,其中涡轮机的3D骨架表示与图像数据匹配。匹配基于将表示的投影与使用卷积神经网络从图像推断的投影进行比较。这使我们能够使用通用的涡轮机模型查找图像对应关系,该模型可应用于各种涡轮机形状和尺寸。为了估算无人机的3D姿态,我们使用姿态图优化器将网络输出与GPS和IMU测量结果融合在一起。结果表明,与单独使用GPS和IMU相比,图像测量的使用显着提高了定位精度。

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