Harnessing Machine Learning to Estimate Aquaculture’s Contributions to The Economy of Southwest Bangladesh
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The presentation detailed the use of machine learning techniques to extract information from freely available satellite images and estimate the area of waterbodies used for aquaculture in seven districts in southern Bangladesh, one of country’s most important aquaculture zones producing fish for domestic markets and crustaceans for export. The research combined machine learning derived estimates of aquaculture farm area per district with data from statistically representative farm surveys to estimate farm size, productivity, and total output, economic value of production, on-farm employment generation by gender, and demand for formulated and non-formulated feeds.
Citation
Ben Belton, A. B. M. Haque, Hazrat Ali, Amirpouyan Nejadhashemi, Ricardo Hernandez, Murshed-E-Jahan Khondker, Hannah Ferriby. (1/12/2022). Harnessing Machine Learning to Estimate Aquaculture’s Contributions to The Economy of Southwest Bangladesh. United States of America: Mississippi State University, Feed the Future Innovation Lab for Fish (MS State - Fish Innovation Lab).
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Author(s) ORCID(s)
A.B.M. Mahfuzul Haque https://orcid.org/0000-0002-5334-5630
Hazrat Ali https://orcid.org/0000-0002-6303-1336
Murshed-E-Jahan Khondker https://orcid.org/0000-0001-9933-8631
Hazrat Ali https://orcid.org/0000-0002-6303-1336
Murshed-E-Jahan Khondker https://orcid.org/0000-0001-9933-8631
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Mississippi State University, Feed the Future Innovation Lab for Fish (MS State - Fish Innovation Lab)