MortCam: An Artificial Intelligence-aided fish mortality detection and alert system for recirculating aquaculture

Aquacultural Engineering - Tập 102 - Trang 102341 - 2023
Rakesh Ranjan1, Kata Sharrer1, Scott Tsukuda1, Christopher Good1
1The Conservation Fund Freshwater Institute, Shepherdstown, WV 25443, USA

Tài liệu tham khảo

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