2023
DOI: 10.3390/pr11102864
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Classification of Quality Characteristics of Surimi Gels from Different Species Using Images and Convolutional Neural Network

Won Byong Yoon,
Timilehin Martins Oyinloye,
Jinho Kim

Abstract: In the aspect of food quality measurement, the application of image analysis has emerged as a powerful and versatile tool, enabling a highly accurate and efficient automated recognition and the quality classification of visual data. This study examines the feasibility of employing an AI algorithm on labeled images as a non-destructive method to classify surimi gels. Gels were made with different moisture (76–82%) and corn starch (5–16%) levels from Alaska pollock and Threadfin breams. In surimi gelation, inter… Show more

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