Automated Fish Classification Using Unprocessed Fatty Acid Chromatographic Data: A Machine Learning Approach
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BibTeX
@inproceedings{Wood2022,
author = {Wood, Jesse and Nguyen, Bach Hoai and Xue, Bing and Zhang, Mengjie and Killeen, Daniel},
booktitle = {Australasian Joint Conference on Artificial Intelligence},
title = {Automated Fish Classification Using Unprocessed Fatty Acid Chromatographic Data: A Machine Learning Approach},
year = {2022},
organization = {Springer},
pages = {516–529},
}