Comparison of convolutional neural network models for food image classification

  • Özsert Yiğit G
  • Özyildirim B
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Abstract

ABSTRACTAccording to some estimates of World Health Organization, in 2014, more than 1.9 billion adults were overweight. About 13% of the world’s adult population were obese. 39% of adults were overweight. The worldwide prevalence of obesity more than doubled between 1980 and 2014. Nowadays, mobile applications recording food intake of people become popular. If an improved food classification system is introduced, users take the photo of their meals and system classifies photos into the categories. Hence, we proposed a deep convolutional neural network structure trained from scratch and compared its performance with pre-trained structures Alexnet and Caffenet in INISTA 2017. This study is the extended version of it. Three different deep convolutional neural networks were trained from scratch by using different learning methods: stochastic gradient descent, Nesterov’s accelerated gradient and Adaptive Moment Estimation, and compared with Alexnet and Caffenet fine-tuned with the same learning algorithms. Tr...

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Özsert Yiğit, G., & Özyildirim, B. M. (2018). Comparison of convolutional neural network models for food image classification. Journal of Information and Telecommunication, 2(3), 347–357. https://doi.org/10.1080/24751839.2018.1446236

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