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Classifying 3D objects in LiDAR point clouds with a back-propagation neural network

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Academic year: 2020

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Figure

Fig. 1 Proposed urban object detection and classification framework
Fig. 2 Structure of the BPNN model
Fig. 4 Object segmentation results for an urban scene
Fig. 5 Spatial distributions for the five types of objects in urban areas
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