Search Results for author: Olaf Wysocki

Found 12 papers, 10 papers with code

CDGS: Confidence-Aware Depth Regularization for 3D Gaussian Splatting

1 code implementation20 Feb 2025 Qilin Zhang, Olaf Wysocki, Steffen Urban, Boris Jutzi

Our method demonstrates improved geometric detail preservation in early training stages and achieves competitive performance in both NVS quality and geometric accuracy.

3DGS 3D Reconstruction +2

FacaDiffy: Inpainting Unseen Facade Parts Using Diffusion Models

1 code implementation20 Feb 2025 Thomas Froech, Olaf Wysocki, Yan Xia, Junyu Xie, Benedikt Schwab, Daniel Cremers, Thomas H. Kolbe

To address this challenge, we introduce FacaDiffy, a novel method for inpainting unseen facade parts by completing conflict maps with a personalized Stable Diffusion model.

Analyzing the impact of semantic LoD3 building models on image-based vehicle localization

1 code implementation31 Jul 2024 Antonia Bieringer, Olaf Wysocki, Sebastian Tuttas, Ludwig Hoegner, Christoph Holst

Numerous navigation applications rely on data from global navigation satellite systems (GNSS), even though their accuracy is compromised in urban areas, posing a significant challenge, particularly for precise autonomous car localization.

Transferring facade labels between point clouds with semantic octrees while considering change detection

1 code implementation9 Feb 2024 Sophia Schwarz, Tanja Pilz, Olaf Wysocki, Ludwig Hoegner, Uwe Stilla

Point clouds and high-resolution 3D data have become increasingly important in various fields, including surveying, construction, and virtual reality.

Change Detection Transfer Learning

MLS2LoD3: Refining low LoDs building models with MLS point clouds to reconstruct semantic LoD3 building models

no code implementations9 Feb 2024 Olaf Wysocki, Ludwig Hoegner, Uwe Stilla

Although highly-detailed LoD3 building models reveal great potential in various applications, they have yet to be available.

Combining visibility analysis and deep learning for refinement of semantic 3D building models by conflict classification

no code implementations10 Mar 2023 Olaf Wysocki, Eleonora Grilli, Ludwig Hoegner, Uwe Stilla

The semantic voxels and conflicts are combined in a Bayesian network to classify and delineate fa\c{c}ade openings, which are reconstructed using a 3D model library.

Semantic Segmentation

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