KEYWORD |
Automatic classification of images of food
Parole chiave DEEP NEURAL NETWORKS, IMAGE PROCESSING, MACHINE LEARNING
Riferimenti ANDREA BOTTINO, MAURIZIO MORISIO
Gruppi di ricerca GR-16 - SOFTWARE ENGINEERING GROUP - SOFTENG
Tipo tesi SPERIMENTALE APPLICATA
Descrizione In many contexts it is important to track what a person eats (illnesses, fitness, allergies etc). A practical way to do this is to take a picture of the food eaten using a smartphone and having an automatic classifier capable of recognizing the food with high accuracy. Having recognized the food it is then possible to know the basic ingredients eaten (proteins, fats etc). Beyond food classification another open problem is characterizing the quantity eaten.
This thesis consists in selecting a suitable open data set of tagged food pictures (ex Recipe1M+), trying various machine learning / deep learning techniques to build a classifier, using image processing techniques to infer the quantity of food eaten, with the goal of achieving the highest accuracy both in food classification and quantity computation.
Conoscenze richieste Python, Java, machine learning approaches and libraries, focusing on image processing, image classification
Scadenza validita proposta 07/11/2024
PROPONI LA TUA CANDIDATURA