Deep semantic segmentation of natural and medical images: a review

Artificial Intelligence Review - Tập 54 Số 1 - Trang 137-178 - 2021
Saeid Asgari Taghanaki1, Kumar Abhishek1, Joseph Cohen2, Julien Cohen‐Adad3, Ghassan Hamarneh1
1School of Computing Science, Simon Fraser University, Burnaby, Canada
2Mila, Université de Montréal, Montreal, Canada
3NeuroPoly Lab, Institute of Biomedical Engineering, Polytechnique Montréal, Montreal, Canada

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