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KNOWLEDGE BASED 3D BUILDING MODEL RECOGNITION USING CONVOLUTIONAL NEURAL NETWORKS FROM LIDAR AND AERIAL IMAGERIES

机译:利用激光器和空中成像仪的卷积神经网络的基于知识的3D建筑模型识别

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In recent years, with the development of the high resolution data acquisition technologies, many different approaches and algorithms have been presented to extract the accurate and timely updated 3D models of buildings as a key element of city structures for numerous applications in urban mapping. In this paper, a novel and model-based approach is proposed for automatic recognition of buildings' roof models such as flat, gable, hip, and pyramid hip roof models based on deep structures for hierarchical learning of features that are extracted from both LiDAR and aerial ortho-photos. The main steps of this approach include building segmentation, feature extraction and learning, and finally building roof labeling in a supervised pre-trained Convolutional Neural Network (CNN) framework to have an automatic recognition system for various types of buildings over an urban area. In this framework, the height information provides invariant geometric features for convolutional neural network to localize the boundary of each individual roofs. CNN is a kind of feed-forward neural network with the multilayer perceptron concept which consists of a number of convolutional and subsampling layers in an adaptable structure and it is widely used in pattern recognition and object detection application. Since the training dataset is a small library of labeled models for different shapes of roofs, the computation time of learning can be decreased significantly using the pre-trained models. The experimental results highlight the effectiveness of the deep learning approach to detect and extract the pattern of buildings' roofs automatically considering the complementary nature of height and RGB information.
机译:近年来,随着高分辨率数据采集技术的发展,已经提出了许多不同的方法和算法,以提取建筑物的准确和及时更新的3D模型作为城市映射许多应用的城市结构的关键要素。在本文中,提出了一种基于模型的基于模型的方法,用于自动识别建筑物的屋顶模型,如扁平,山墙,臀部和金字塔屋顶模型,基于深层结构,用于分层学习,其特征从潮流雷达提取和空中ortho照片。该方法的主要步骤包括建设分割,特征提取和学习,以及最终在监督的预训练的卷积神经网络(CNN)框架中建立屋顶标签,以便为城市地区提供各种类型的建筑物的自动识别系统。在该框架中,高度信息为卷积神经网络提供不变的几何特征,以定位每个单独屋顶的边界。 CNN是一种具有多层Perceptron概念的前馈神经网络,其包括在适应结构中的许多卷积和附带层组成,并且广泛用于模式识别和物体检测应用。由于训练数据集是用于不同形状的屋顶的标记模型的小型库,因此可以使用预先训练的型号显着降低学习的计算时间。实验结果突出了深度学习方法检测和提取建筑物屋顶的模式的有效性,自动考虑高度和RGB信息的互补性质。

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