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Corinne Stucker
เข้าร่วมเมื่อ 21 ก.ค. 2020
ImpliCity: City Modeling From Satellite Images With Deep Implicit Occupancy Fields (ISPRS 2022)
Stucker, C., Ke, B., Yue, Y., Huang, S., Armeni, I., and Schindler, K.: ImpliCity: City Modeling From Satellite Images With Deep Implicit Occupancy Fields, ISPRS Ann. Photogramm. Remote Sens. Spatial Inf. Sci., V-2-2022, 193-201, doi.org/10.5194/isprs-annals-V-2-2022-193-2022, 2022.
High-resolution optical satellite sensors, combined with dense stereo algorithms, have made it possible to reconstruct 3D city models from space. However, these models are, in practice, rather noisy and tend to miss small geometric features that are clearly visible in the images. We argue that one reason for the limited quality may be a too early, heuristic reduction of the triangulated 3D point cloud to an explicit height field or surface mesh. To make full use of the point cloud and the underlying images, we introduce ImpliCity, a neural representation of the 3D scene as an implicit, continuous occupancy field, driven by learned embeddings of the point cloud and a stereo pair of ortho-photos. We show that this representation enables the extraction of high-quality DSMs: with image resolution 0.5 m, ImpliCity reaches a median height error of ≈0.7 m and outperforms competing methods, especially w.r.t. building reconstruction, featuring intricate roof details, smooth surfaces, and straight, regular outlines.
High-resolution optical satellite sensors, combined with dense stereo algorithms, have made it possible to reconstruct 3D city models from space. However, these models are, in practice, rather noisy and tend to miss small geometric features that are clearly visible in the images. We argue that one reason for the limited quality may be a too early, heuristic reduction of the triangulated 3D point cloud to an explicit height field or surface mesh. To make full use of the point cloud and the underlying images, we introduce ImpliCity, a neural representation of the 3D scene as an implicit, continuous occupancy field, driven by learned embeddings of the point cloud and a stereo pair of ortho-photos. We show that this representation enables the extraction of high-quality DSMs: with image resolution 0.5 m, ImpliCity reaches a median height error of ≈0.7 m and outperforms competing methods, especially w.r.t. building reconstruction, featuring intricate roof details, smooth surfaces, and straight, regular outlines.
มุมมอง: 442
วีดีโอ
ResDepth: Learned Residual Stereo Reconstruction (CVPRW 2020)
มุมมอง 1604 ปีที่แล้ว
Stucker C., Schindler K.: ResDepth: Learned Residual Stereo Reconstruction, IEEE Conference on Computer Vision and Pattern Recognition Workshop (CVPRW) EarthVision, 2020. We propose an embarrassingly simple but very effective scheme for high-quality dense stereo reconstruction: (i) generate an approximate reconstruction with your favourite stereo matcher; (ii) rewarp the input images with that ...