Deep Learning-Based Implementation of Food Nutritional Intake Tracking System Using Convolution Neural Network Algorithm

Authors

  • Shobana Assistant Professor, Department of CSE, Adhiyamaan College of Engineering, Hosur, Tamil Nadu, India
  • Vinayakam Dhilip Kumar UG Scholar, Department of CSE, Adhiyamaan College of Engineering, Hosur, Tamil Nadu, India

Keywords:

Food nutrition detection, CNN algorithm, healthy lifestyle, Deep Convolutional Neural Network

Abstract

Nutrition is an important basis for developing the human body. Malnutrition can weaken the immune system, cause an increased risk of various diseases, and develop poor physical and mental health. Based on an in-depth study, this project will automatically detect nutritious foods and create an accurate system in which we find that nutritional levels in the diet increase nutritional or poor nutrition. Monitor nutrition in their diet and maintain daily health records. The quality of the nutrition is maintained on the website. The level of the elements should be compared to the site using the convolution neural network (CNN) algorithm. Collected databases should be reviewed after 7 days when food levels are healthy or nutritious. If healthy eating is not good, the methods try to eat more protein and fat and light sugars and walk or engage in less activity to stimulate your appetite. It is about building a healthy and balanced diet essential for a healthy lifestyle. The technology is useful in developing a daily diet plan aimed at recommending the most popular foods for the user, which can be eaten as soon as possible, and to satisfy one’s daily nutritional needs.

Published

2022-04-06

How to Cite

Shobana, & Kumar, V. D. . (2022). Deep Learning-Based Implementation of Food Nutritional Intake Tracking System Using Convolution Neural Network Algorithm. International Journal of Discoveries and Innovations in Applied Sciences, 2(4), 1–18. Retrieved from https://oajournals.net/index.php/ijdias/article/view/1160

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Section

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