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首页> 外文期刊>ISPRS Journal of Photogrammetry and Remote Sensing >Depth-enhanced feature pyramid network for occlusion-aware verification of buildings from oblique images
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Depth-enhanced feature pyramid network for occlusion-aware verification of buildings from oblique images

机译:深度增强功能金字塔网络,用于从倾斜图像侦察建筑物的验证

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摘要

Detecting the changes of buildings in urban environments is essential. Existing methods that use only nadir images suffer from severe problems of ambiguous features and occlusions between buildings and other regions. Furthermore, buildings in urban environments vary significantly in scale, which leads to performance issues when using single-scale features. To solve these issues, this paper proposes a fused feature pyramid network, which utilizes both color and depth data for the 3D verification of existing buildings 2D footprints from oblique images. First, the color data of oblique images are enriched with the depth information rendered from 3D mesh models. Second, multiscale features are fused in the feature pyramid network to convolve both the color and depth data. Finally, multi-view information from both the nadir and oblique images is used in a robust voting procedure to label changes in existing buildings. Experimental evaluations using both the ISPRS benchmark datasets and Shenzhen datasets reveal that the proposed method outperforms the ResNet and EfficientNet networks by 5% and 2%, respectively, in terms of recall rate and precision. We demonstrate that the proposed method can successfully detect all changed buildings; therefore, only those marked as changed need to be manually checked during the pipeline updating procedure; this significantly reduces the manual quality control requirements. Moreover, ablation studies indicate that using depth data, feature pyramid modules, and multiview voting strategies can lead to clear and progressive improvements.
机译:检测城市环境中建筑物的变化至关重要。仅使用Nadir图像的现有方法遭受建筑物和其他地区之间模糊特征和闭塞的严重问题。此外,城市环境中的建筑物的规模显着变化,这在使用单尺度特征时会导致性能问题。为了解决这些问题,本文提出了一个融合特征金字塔网络,其利用来自倾斜图像的现有建筑物2D占地面积的3D验证的颜色和深度数据。首先,倾斜图像的颜色数据富有从3D网格模型呈现的深度信息。其次,多尺度功能在特征金字塔网络中融合,可追溯颜色和深度数据。最后,来自Nadir和倾斜图像的多视图信息用于强大的投票过程,以在现有建筑物中标记更改。使用ISPRS基准数据集和深圳数据集的实验评估显示,在召回速率和精度方面,所提出的方法分别优于5%和2%的reset和效率网络。我们证明该方法可以成功地检测所有改变的建筑物;因此,只需要在管道更新过程中手动检查标记为更改的那些;这显着降低了手动质量控制要求。此外,消融研究表明,使用深度数据,特征金字塔模块和多视图投票策略可能导致清晰逐渐的改进。

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