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Master Thesis: Evaluation of Inpainting Methods for Floor Plan Detection
Job Description
Req ID:  1180
Place of work:  Sankt Augustin
Starting date:  promtly
Career level:  Student research project and final thesis
Type of employment:  Part time
Duration of contract:  6 months

Remuneration: Remuneration is in accordance with the Collective Agreement for the Public Sector - Federal Government (TVöD-Bund)

Enter the fascinating world of the German Aerospace Center (Deutsches Zentrum für Luft- und Raumfahrt e. V.; DLR) and help shape the future through research and innovation! We offer an exciting and inspiring working environment driven by the expertise and curiosity of our 11,000 employees from 100 nations and our unique infrastructure. Together, we develop sustainable technologies and thus contribute to finding solutions to global challenges. Would you like to join us in addressing this major future challenge? Then this is your place!

Since its foundation in 2019, the Institute for the Protection of Terrestrial Infrastructures has been dedicated to the protection and security of critical infrastructures on Earth. We develop concepts, processes and technologies that strengthen and improve the resilience of organisations and systems. In doing so, we focus on people, technology and the system as a whole.

Your Mission:
A digital twin is a virtual representation of a physical entity, process, or system. It enhances the monitoring, simulation, and optimization of real assets of infrastructures, strengthening their resilience. However, the generation of digital twins is extremely expensive due to the high amount of manual modeling work involved. Therefore, the development of automated techniques for generating virtual representations or digital twins holds significant importance. Information contained within technical drawings and data sheets, such as floor plans, circuit diagrams, and manufacturer specifications, might leverage the automated generation of Digital Twins. Given the high diversity and complexity of technical drawings and data sheets, AI-based methods are promising approaches for the digitalization.
The contours of the building structure are often covered by additional information as text or symbols. Hence removing text or symbols leads to a loss of valuable information by cutting out parts of this contours. AI-based techniques such as inpainting via GANs or Diffusion Models are promising approaches to address this challenge and reconstruct important information.
Therefore, the objective of this master thesis will be the development and evaluation of AI-based methods for text and symbol removal on floorplans, preserving essential information via inpainting.

 

Your tasks
•    exploring current state-of-the-art methods for inpainting and their applicability in the context of floorplans
•    collecting and/or augmenting training data
•    implementing and training of artificial neural networks for inpainting
•    evaluating how inpainting can improve the digitization.

 

Your Qualifications:
•    currently enrolled as a Master student in computer science, mathematics, optical engineering or similar major
•    experience in deep learning and/or computer vision is beneficial
•    basic Python skills (ideally with respect to deep learning applications, e.g., PyTorch or Tensorflow)
•    ability to work independently, good communication and teamwork skills

 

We offer

DLR stands for diversity, appreciation and equality for all people. We promote independent work and the individual development of our employees both personally and professionally. To this end, we offer numerous training and development opportunities. Equal opportunities are of particular importance to us, which is why we want to increase the proportion of women in science and management in particular. Applicants with severe disabilities will be given preference if they are qualified.

Wir freuen uns darauf, dich kennenzulernen!

 

Fragen zu dieser Position (Kennziffer 1180) beantwortet dir gerne:

Tobias Koch 
Tel.: +49 2241 20148 55