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An efficient multilevel threshold image segmentation method for COVID-19 imaging using Q-Learning based Golden Jackal Optimization

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An efficient multilevel threshold image segmentation method for COVID-19 imaging using Q-Learning based Golden Jackal Optimization

Note: The source code of QLGJO will be uploaded after the paper has been accepted

COVID-19 CT image segmentation

This repository also includes examples of COVID-19 CT image segmentation.

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If this is helpful to your work, please cite this paper, thank you🥰

If you have any other questions, please do not hesitate to contact me🌈

Wang, Z., Mo, Y. & Cui, M. An Efficient Multilevel Threshold Image Segmentation Method for COVID-19 Imaging Using Q-Learning Based Golden Jackal Optimization. J Bionic Eng (2023). https://doi.org/10.1007/s42235-023-00391-5

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An efficient multilevel threshold image segmentation method for COVID-19 imaging using Q-Learning based Golden Jackal Optimization

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