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2D Image-To-3D Model: Knowledge-Based 3D Building Reconstruction (3DBR) Using Single Aerial Images and Convolutional Neural Networks (CNNs)

DOI:10.3390/rs11192219 期刊:Remote Sensing 出版年份:2019 更新时间:2025-09-12 10:27:22
摘要: In this study, a deep learning (DL)-based approach is proposed for the detection and reconstruction of buildings from a single aerial image. The pre-required knowledge to reconstruct the 3D shapes of buildings, including the height data as well as the linear elements of individual roofs, is derived from the RGB image using an optimized multi-scale convolutional–deconvolutional network (MSCDN). The proposed network is composed of two feature extraction levels to ?rst predict the coarse features, and then automatically re?ne them. The predicted features include the normalized digital surface models (nDSMs) and linear elements of roofs in three classes of eave, ridge, and hip lines. Then, the prismatic models of buildings are generated by analyzing the eave lines. The parametric models of individual roofs are also reconstructed using the predicted ridge and hip lines. The experiments show that, even in the presence of noises in height values, the proposed method performs well on 3D reconstruction of buildings with di?erent shapes and complexities. The average root mean square error (RMSE) and normalized median absolute deviation (NMAD) metrics are about 3.43 m and 1.13 m, respectively for the predicted nDSM. Moreover, the quality of the extracted linear elements is about 91.31% and 83.69% for the Potsdam and Zeebrugge test data, respectively. Unlike the state-of-the-art methods, the proposed approach does not need any additional or auxiliary data and employs a single image to reconstruct the 3D models of buildings with the competitive precision of about 1.2 m and 0.8 m for the horizontal and vertical RMSEs over the Potsdam data and about 3.9 m and 2.4 m over the Zeebrugge test data.
作者: Fatemeh Alidoost,Hossein Arefi,Federico Tombari
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Investigating the detection and reconstruction of buildings from a single aerial image using deep learning and convolutional neural networks.

The proposed method utilizes the power of CNNs to extract the inherent and latent features from a single image and interpret them as 3D information for building reconstruction. The results over test datasets showed the reasonable performance of the proposed method in predicting height values with the average RMSE of 3.43 m and NMAD of 1.13 m. The precise boundaries of individual buildings are extracted with the accuracy of 95.8% and 88.4% for the Potsdam and Zeebrugge data, respectively. The result of 3D reconstruction was visually very promising, which was also numerically confirmed by the RMSE values of about 1.2 m and 0.8 m for the Potsdam data as well as 3.9 m and 2.4 m for the Zeebrugge data for the horizontal and vertical accuracies, respectively.

The quality of the final 3D reconstruction highly depends on the quality and accuracy of the predicted linear elements as well as nDSMs. The most important challenges are trees decreasing the accuracy of the predicted eave lines, errors in the predicted ridge lines leading to tilted roofs being modeled as flat roofs, classification errors between the eave and ridge lines, and errors in the predicted nDSM affecting the median values of the eave lines.

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