User: Guest  Login
Document type:
Masterarbeit
Author(s):
Fröch, Thomas
E-mail address:
thomas.froech@tum.de
Title:
Inpainting of unseen façade objects using deep learning methods
Translated title:
Inpainting von unbeobachteten Gebäudefassadenobjekten mit Deep-Learning-Methoden
Abstract:
In the realm of 3D reconstruction pipelines, 2D conflict maps that indicate the presence openings in façades such as windows and doors, represent an intermediate output [1]. However, these maps often fall short of completeness due to insufficient coverage or occlusions caused by objects such as vegetation. This research delves into the exploration of deep learning strategies to address this limitation by inpainting unseen façade objects into the 2D conflict maps. The central focus of this study...     »
Keywords:
GISTop_CitySystemModeling; GISTop_CityModeling; GISTop_SpatialModelingAndAlgorithms; LOCTop_Data_generation_and_object_reconstruction; LOCTop_Spatial_modeling_and_algorithms; LOCTop_Urban_Information_Modeling_Virtual_3D_City_Model
Supervisor:
Kolbe, Thomas H
Advisor:
Schwab, Benedikt; Wysocki, Olaf; Xia, Yan
Year:
2023
Quarter:
4. Quartal
Year / month:
2023-11
Month:
Nov
Pages:
84
Language:
en
University:
Technical University of Munich
Faculty:
TUM School of Engineering and Design
TUM Institution:
Chair of Geoinformatics
Commencing Date:
31.05.2023
End of processing:
30.11.2023
Presentation date:
07.12.2023
Status:
Abgeschlossen
 BibTeX