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Modern Geomatics Technologies and Applications
5. Acknowledgments
We thank all of the people who were struggling in the healthcare fields to overcome the COVID-19 outbreak all over
the world. We are also very grateful to World Health Organization and World Bank for sharing their useful data.
6. References
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