NUTRIVISION: A System for Automatic Diet Management in Smart Healthcare
Madhumita Veeramreddy, Ashok Kumar Pradhan, Swetha Ghanta, Laavanya, Rachakonda, Saraju P Mohanty

TL;DR
NutriVision is an innovative system combining computer vision and machine learning to automatically identify food items, estimate quantities, and provide personalized nutritional advice via smartphone images, promoting healthier dietary habits.
Contribution
The paper introduces NutriVision, a novel AI-powered system that accurately detects foods and offers personalized diet recommendations using deep learning and user data integration.
Findings
High accuracy in food identification and nutritional estimation
Effective personalized diet recommendations tailored to user needs
Potential to improve dietary habits and health outcomes
Abstract
Maintaining health and fitness through a balanced diet is essential for preventing non communicable diseases such as heart disease, diabetes, and cancer. NutriVision combines smart healthcare with computer vision and machine learning to address the challenges of nutrition and dietary management. This paper introduces a novel system that can identify food items, estimate quantities, and provide comprehensive nutritional information. NutriVision employs the Faster Region based Convolutional Neural Network, a deep learning algorithm that improves object detection by generating region proposals and then classifying those regions, making it highly effective for accurate and fast food identification even in complex and disorganized meal settings. Through smartphone based image capture, NutriVision delivers instant nutritional data, including macronutrient breakdown, calorie count, and…
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Taxonomy
TopicsMobile Health and mHealth Applications · IoT and Edge/Fog Computing · Context-Aware Activity Recognition Systems
MethodsNetwork On Network
