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CFD-Augmented Deep Learning for Accurate Non-destructive Prediction of Squid Drying Behavior using RGB Images

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Publication date: Available online 13 December 2025

Source: Journal of Food Engineering

Author(s): Timilehin Martins Oyinloye, Won Byong Yoon

Publication date: Available online 13 December 2025Source: Journal of Food EngineeringAuthor(s): Timilehin Martins Oyinloye, Won Byong Yoon Read More

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