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Conference Paper

Light-Weight Food/Non-Food Classifier for Real-Time Applications

By
Zakzouk S., Saafan A., Sayed M.-A., Elattar M.A., Darweesh M.S.

Today, automatic food/non-food classification became extremely important for many real-time applications, specifically since the pandemic of the COVID-19 virus. Such that the 'no food policy' now became applied more than ever to help decrease the spread of the COVID-19 virus. Consequently, many studies used deep neural networks for the food/non-food classification task, yet these deep neural networks were computationally expensive. As a result, in this paper, a lightweight Convolution Neural Network (CNN) is proposed and put into use for classifying foods and non-foods. Compared to prior efforts, this work yields an outperforming result with an accuracy of 96.875%. © 2022 IEEE.