Publisher
source

J Kybic

2 months ago

Leveraging Expert Knowledge for Medical Image Segmentation Czech Technical University in Czech Republic

Degree Level

PhD

Field of study

Computer Science

Funding

Funded PhD Project (Students Worldwide)

Deadline

Year round applications

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Country

Czech Republic

University

Czech Technical University in Prague

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Keywords

Computer Science
Biomedical Engineering
Deep Learning
Artificial Intelligence
Image Processing
Computer Vision
Constrained Optimization
Machine learning

About this position

This PhD and postdoctoral opportunity at the Czech Technical University, Faculty of Electrical Engineering, focuses on advancing medical image segmentation using deep learning and constraint optimization. The project addresses the challenge of limited expertly labeled data in medical imaging by developing novel algorithms that incorporate expert knowledge through constraints on invariance, topology, dimensions, position, count, shape, and other segmentation properties. The research will also tackle weak annotations, such as scribbles, and global properties like unbiasedness, aiming to improve segmentation quality and reliability.

Key objectives include integrating deep learning with advanced constraint optimization techniques, such as penalty, barrier, and projection methods, the moving target method, and feasibility-guaranteeing reparameterization. These approaches will be combined with transformation-invariant network operators to create robust and efficient segmentation algorithms. The project is highly interdisciplinary, drawing on artificial intelligence, computer vision, machine learning, and biomedical engineering.

Applicants should have strong programming, mathematical, and research skills, with prior experience in image processing and deep learning. The position is funded by the Czech Science Foundation, ensuring financial support for successful candidates. The research group is led by Prof J Kybic, whose academic profile and research interests can be explored at this link.

Applications are accepted year-round, providing flexibility for prospective candidates. Interested individuals should prepare a CV and cover letter detailing their relevant experience and skills, and are encouraged to review the supervisor's research for alignment with their interests. For more information and to apply, visit the project page.

Funding details

Funded PhD Project (Students Worldwide)

What's required

Applicants should possess strong programming, mathematical, and research skills, with prior experience in image processing and deep learning. A relevant degree in computer science, biomedical engineering, or a related field is expected. Experience with constraint optimization techniques and handling weak annotations is desirable. No specific language test or GPA requirements are mentioned.

How to apply

Apply year-round via the FindAPhD project page. Review the supervisor's research at the provided academic profile link. Prepare a CV and cover letter highlighting relevant skills and experience. Contact the supervisor for further details if needed.

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