World Journal of Engineering and Technology

Volume 6, Issue 3 (August 2018)

ISSN Print: 2331-4222   ISSN Online: 2331-4249

Google-based Impact Factor: 1.03  Citations  

Estimating Mass of Harvested Asian Seabass Lates calcarifer from Images

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DOI: 10.4236/wjet.2018.63B003    1,454 Downloads   3,305 Views  Citations

ABSTRACT

Total of 1072 Asian seabass or barramundi (Lates calcarifer) were harvested at two different locations in Queensland, Australia. Each fish was digitally photographed and weighed. A subsample of 200 images (100 from each location) were manually segmented to extract the fish-body area (S in cm2), excluding all fins. After scaling the segmented images to 1mm per pixel, the fish mass values (M in grams) were fitted by a single-factor model (M=aS1.5, a=0.1695 )achieving the coefficient of determination (R2) and the Mean Absolute Relative Error (MARE) of R2=0.9819 and MARE=5.1%, respectively. A segmentation Convolutional Neural Network (CNN) was trained on the 200 hand-segmented images, and then applied to the rest of the available images. The CNN predicted fish-body areas were used to fit the mass-area estimation models: the single-factor model, M=aS1.5, a=0.170, R2=0.9819, MARE=5.1%; and the two-factor model, M= aSb, a=0.124, b=0.155, R2=0.9834, MARE=4.5%.

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Konovalov, D. , Saleh, A. , Domingos, J. , White, R. and Jerry, D. (2018) Estimating Mass of Harvested Asian Seabass Lates calcarifer from Images. World Journal of Engineering and Technology, 6, 15-23. doi: 10.4236/wjet.2018.63B003.

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