Master thesis - Deep learning-based zero-shot image segmentation
Fraunhofer-Gesellschaft
Freiburg im Breisgau, Germany
1 month ago
Role details
Contract type
Permanent contract Employment type
Full-time (> 32 hours) Working hours
Regular working hours Languages
English, GermanJob location
Freiburg im Breisgau, Germany
Tech stack
Computer Vision
Python
Microsoft Office
Natural Language Processing
TensorFlow
Software Engineering
PyTorch
Deep Learning
Information Technology
Job description
- Personality: You are responsible and team-oriented. You complete your tasks reliably and consistently, fostering a respectful and open collaboration with your colleagues. You actively contribute ideas and help to create a positive and motivating work environment.
Requirements
- Education: You currently study computer science, embedded systems engineering, or a related field at a master's level.
- Working style: You think analytically and can solve problems independently.
- Experience: Ideally, you have a background in software engineering or deep learning. You have strong Python programming skills and comprehensive knowledge of deep learning frameworks, such as PyTorch or TensorFlow, as well as computer vision. Knowledge of natural language processing (NLP) is an advantage, and proficiency in Microsoft Office is expected.
- Languages: We work in international teams and therefore require proficiency in English at a minimum B2 level, both written and spoken. Knowledge of German is an advantage but not required.
About the company
Die Fraunhofer-Gesellschaft (www.fraunhofer.de) ist eine der weltweit führenden Organisationen für anwendungsorientierte Forschung. 75 Institute entwickeln wegweisende Technologien für unsere Wirtschaft und Gesellschaft - genauer: 32 000 Menschen aus Technik, Wissenschaft, Verwaltung und IT. Sie wissen: Wer zu Fraunhofer kommt, will und kann etwas verändern. Für sich, für uns und die Märkte von heute und morgen.
Increasing the efficiency and safety of industrial processes and products with innovative technologies - that's what we work on at the Fraunhofer Institute for Physical Measurement Techniques IPM in Freiburg. Around 270 employees use their expertise and enthusiasm to research and develop measurement methods and systems for production control, object and shape detection, gas and process technology, and photonic systems. You can expect a friendly team with exciting research topics in an inspiring work environment.
In our business unit, "Object and Shape Detection," we develop high-precision, multisensor systems for three-dimensional measurements and surveying. Deployed on road vehicles, trains, drones, or underwater ROVs, these systems use laser scanners, cameras, and additional sensors to capture the environment. For instance, we develop autonomous robots for automated building inspections. We post-process the acquired sensor data to generate actionable insights. In your master's thesis, you will focus on this critical stage. Specifically, you will research deep learning models for image segmentation to detect damage to concrete buildings. Since conventional models require large amounts of precisely labeled training data that are not always available, you will also research zero-shot deep learning architectures.
We are Fraunhofer IPM. We measure. We control. We optimize. To do this, we need: curiosity. Courage. Creativity. Vision. Cooperation. Communication. And you!
Was Du erwarten kannst
* Remuneration in accordance with the general works agreement on the employment of auxiliary staff
* Work-life balance with flexible work schedules
* Equal opportunities
* Support from experts in the field
* Individual career planning & entry opportunities
* Modern working environment
* Canteen at the institute with daily fresh food
* Monitored (electric) car and bicycle parking spaces
Was Du bei uns tust
* You will research the current state of the art.
* You will implement, train, and test deep learning model architectures.
* You will develop approaches for the damage segmentation of concrete infrastructure images based on zero-shot models.
Was Du mitbringst