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JCSE, vol. 13, no. 3, pp.124-130, September, 2019

DOI: http://dx.doi.org/10.5626/JCSE.2019.13.3.124

Fish Species Recognition Using VGG16 Deep Convolutional Neural Network

Praba Hridayami, I Ketut Gede Darma Putra, and Kadek Suar Wibawa
Department of Information Technology, Udayana University, Badung, Bali, Indonesia

Abstract: Conservation and protection of fish species is very important in aquaculture and marine biology. A few studies have introduced the concept of fish recognition; however, it resulted in poor rates of error recognition and conservation of a small number of species. This study presents a fish recognition method based on deep convolutional neural networks such as VGG16, which was pre-trained on ImageNet via transfer learning method. The fish dataset in this study consists of 50 species, each covered by 15 images including 10 images for training purpose and 5 images for testing. In this study, we trained our model on four different types of dataset: RGB color space image, canny filter image, blending image, and blending image mixed with RGB image. The results showed that blending image mixed with RGB image trained model exhibited the best genuine acceptance rate (GAR) value of 96.4%, following by the RGB color space image trained model with a GAR value of 92.4%, the canny filter image trained model with a GAR value of 80.4%, and the blending image trained model showed the least GAR value of 75.6%.

Keyword: Fish recognition; Deep convolutional neural network; Transfer learning; Canny filter; VGG16

Full Paper:   327 Downloads, 1285 View

 
 
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