A Multi-Model Machine Learning Approach for Monitoring Calories Being Burnt During Workouts Using Smart Calorie Tracer

被引:0
|
作者
Challagundla Y. [1 ]
Badri Narayanan K. [1 ]
Devatha K.S. [2 ]
Bharathi V.C. [1 ]
Ravindra J.V.R. [3 ]
机构
[1] School of Computer Science and Engineering (SCOPE), VIT-AP University, Andhra Pradesh, Amaravati
[2] School of Electronics and Engineering (SENCE), VIT-AP University, Andhra Pradesh, Amaravati
[3] Center for Advanced Computing Research Laboratory (C-ACRL), Department of Electronics and Communication Engineering, Vardhaman College of Engineering, Telangana, Hyderabad
关键词
Calories; Cross-validation; Data visualization; Dataset analysis; Fitness applications; Machine learning; Multi-model approach; Neural network; Workouts;
D O I
10.4108/eetpht.10.5407
中图分类号
学科分类号
摘要
INTRODUCTION: In today's health-conscious world, accurate calorie monitoring during exercise is crucial for achieving fitness goals and maintaining a healthy lifestyle. However, existing methods often lack precision, driving the need for more reliable tracking systems. This paper explores the use of a multi-model machine learning approach to predict calorie burn during workouts by utilizing a comprehensive dataset. OBJECTIVES: The objective of this paper is to develop a user-friendly program capable of accurately predicting calorie expenditure during exercise, leveraging advanced machine learning techniques. METHODS: Techniques from social network analysis were employed to analyze the dataset, which included information on age, gender, height, weight, workout intensity, and duration. Data preprocessing involved handling missing values, eliminating irrelevant columns, and preparing features for analysis. The dataset was then divided into training and testing sets for model development and evaluation. Machine learning models, including Neural Networks, AdaBoost, Random Forest, and Gradient Boosting, were chosen based on their performance in regression tasks. RESULTS: The neural network model demonstrated superior performance in predicting calorie burn, outperforming other models in terms of MSE, RMSE, and an R2 score. Data visualization techniques aided in understanding the relationship between variables and calorie burn, highlighting the effectiveness of the neural network model. CONCLUSION: The findings suggest that a multi-model machine learning approach offers a promising solution for accurate calorie tracking during exercise. The neural network model, in particular, shows potential for developing user-friendly calorie monitoring applications. While limitations exist, such as dataset scope and environmental factors, this study lays the groundwork for future advancements in calorie monitoring and contributes to the development of holistic fitness applications. © 2024 Y. Challagundla et al., licensed to EAI.
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