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IEEE JSTSP 2020 : IEEE JSTSP Special Issue on Domain Enriched Learning for Medical Imaging | |||||||||||||||
Link: https://signalprocessingsociety.org/blog/ieee-jstsp-special-issue-domain-enriched-learning-medical-imaging | |||||||||||||||
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Call For Papers | |||||||||||||||
In recent years, learning-based methods have emerged to complement the traditional model and feature-based methods for a variety of medical imaging problems such as image formation, classification, and segmentation, quality enhancement, etc. In the case of deep neural networks, many solutions have achieved unprecedented performance gains and have defined a new state of the art. Despite the progress, compelling open challenges remain. One such key challenge is that many learning frameworks (notably deep learning) are purely data-driven approaches and their performance depends strongly on the quantity and quality of training image data available. When training is limited or noisy, the performance drops sharply. Deep neural networks based approaches additionally face the challenge of often not being straightforward to interpret. Fortunately, exciting recent progress has emerged in enriching learning frameworks with domain knowledge and signal structure. As a couple of representative examples: in image reconstruction problems, this may involve using statistical/structural image priors; for image segmentation, shape and anatomical knowledge (conveyed by an expert) may be leveraged, etc. This special issue invites original new contributions that combine signal, image priors and other flavors of domain knowledge with machine learning methods for solving medical imaging problems.
Topics of interest include but are not limited to: • Fundamental innovations in combining model based and learning based methods. • Sparse representation and dictionary learning based methods for medical image processing and understanding. • Domain enriched and regularized deep learning via special network architectures and systematic integration of problem specific insights. • Interpretable deep networks for medical imaging via techniques such as algorithm unrolling. • Algorithmic methods that gracefully degrade with the amount of training image data available and enable robustness against selection bias. • Example applications include image reconstruction and formation, medical image classification and segmentation, image understanding, boundary and shape analysis, registration, quality enhancement, etc. The scope encompasses all medical imaging modalities including but not limited to MRI, X-Ray, CT, PET, ultrasound, photoacoustic imaging, various forms of microscopy, multispectral imaging, new and emerging imaging techniques, and modalities. |
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