An Innovative Deep Neural Network Model for Precise Calorie Burn Prediction from Physical Activity Data

Authors

  • Ayah M Ahmed Department of Computer Science, University of Zakho, Duhok, Kurdistan Region, Iraq
  • Chira N. Mohammed Department of Computer Science, University of Zakho, Duhok, Kurdistan Region, Iraq
  • Sardar Hasen Ali Department of Computer Science, University of Zakho, Duhok, Kurdistan Region, Iraq

DOI:

https://doi.org/10.34010/injiiscom.v5i2.13870

Keywords:

Calories, Deep Learning, Machine Learning, Neural Network, Fitness applications

Abstract

Accurate prediction of calories burned during physical activities is crucial for various applications in health monitoring, fitness tracking, and personalized nutrition. Traditional methods often lack the precision needed for individualized estimates, which has increased interest in advanced machine learning approaches. This research introduces a deep learning model designed to predict calories burned with enhanced accuracy by capturing complex, non-linear relationships in the data. The model employs a multilayer perceptron neural network, Leaky ReLU activations, dropout regularization, and the Adam optimizer to improve generalizability and prevent overfitting. The evaluation of training and validation loss over epochs demonstrated the model's robustness and capacity to generalize effectively to novel data. The model's performance was evaluated using various metrics, achieving superior results with a remarkable Mean Absolute Error (MAE) of 0.27% and an accuracy of 99.73%, outperforming other models discussed in the literature. These findings indicate that deep learning offers significant potential for improving calorie prediction models, providing more reliable fitness and health management tools.

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Published

2024-09-24

How to Cite

[1]
“An Innovative Deep Neural Network Model for Precise Calorie Burn Prediction from Physical Activity Data”, Int. J. Inform. Inf. Sys. and Comp. Eng., vol. 5, no. 2, pp. 264–275, Sep. 2024, doi: 10.34010/injiiscom.v5i2.13870.