首页> 外文会议>IEEE International Conference on Acoustics, Speech and Signal Processing >ROOF TYPE CLASSIFICATION USING DEEP CONVOLUTIONAL NEURAL NETWORKS ON LOW RESOLUTION PHOTOGRAMMETRIC POINT CLOUDS FROM AERIAL IMAGERY
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ROOF TYPE CLASSIFICATION USING DEEP CONVOLUTIONAL NEURAL NETWORKS ON LOW RESOLUTION PHOTOGRAMMETRIC POINT CLOUDS FROM AERIAL IMAGERY

机译:空中图像低分辨率摄影点云的深卷积神经网络屋顶类型分类

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Three-dimensional (3D) reconstruction of buildings is an active research area with applications in e.g. city planning, environmental simulations, and city navigation. Automatic 3D building reconstruction methods based on point clouds from laser scanning or methods based on high resolution dense photogrammetric point clouds are common in the literature. In applications where large land areas need to be covered regularly it is not practical to use laser scanning or acquire images with high resolution and large image overlaps. In these applications the reconstructed photogrammetric point cloud has low resolution with less building details. We present a method where the most common roof types are classified using a deep convolutional neutral network (CNN) pre-trained using RGB data in this challenging type of data. In addition, a method for roof height estimation for each roof type is presented to support automatic 3D building reconstruction using model building shapes. Results are shown for a low resolution dense photogrammetric point cloud generated using multi-view stereo reconstruction of standard overlapping aerial images from nationwide data collection. The method is intended to support automated generation of a nationwide 3D landscape model.
机译:建筑物的三维(3D)重建是一个有效的研究区域,其中包括在例如应用中的应用。城市规划,环境模拟和城市导航。基于点云的自动3D构建重建方法从激光扫描或基于高分辨率密集光摄影点云的方法常见于文献中。在需要定期涵盖大型土地区域的应用中,使用激光扫描或获得高分辨率和大图像重叠的图像是不实际的。在这些应用中,重建的摄影测量点云具有低分辨率,具有较少的构建细节。我们介绍了一种方法,其中使用在这种具有挑战性的数据类型中使用RGB数据预先训练的深卷积中性网络(CNN)进行分类的方法。另外,提出了一种用于每个屋顶类型的屋顶高度估计方法,以支持使用模型建筑形状的自动3D建筑重建。结果显示使用来自全国数据收集的标准重叠空中图像的多视图立体声重建产生的低分辨率密集光摄影点云。该方法旨在支持全国范围的3D景观模型的自动化生成。

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