TY - GEN
T1 - Image Processing Model to Estimate Nutritional Values in Raw and Cooked Vegetables
AU - Yen, Tan Jo
AU - Vengusamy, Sivakumar
AU - Caraffini, Fabio
AU - Kuhn, Stefan
AU - Colreavy-Donnelly, Simon
N1 - Publisher Copyright:
© 2023 FRUCT Oy.
PY - 2023
Y1 - 2023
N2 - The availability of high-calorie foods with contentious nutritional content has led to a worldwide increase in chronic disease. Therefore, monitoring of eating habits and practising healthy eating habits is recommended. Clinical diet assessment methods and mobile calorie tracking apps can be used to record daily food consumption but are often not user-friendly. Convenient image-based assessment models are currently available to recognise and estimate the nutritional value of foods directly from food images, but they do not consider how nutritional value changes after cooking. Consequently, VegeNet, a multi-output InceptionV3-based convolutional neural network model has been developed, which estimates the nutritional values of cooked and uncooked vegetables. The explicit use of the cooking state is the main contribution of this work. This deep learning model successfully classifies the food images at 97% accuracy and estimates the nutritional values at 15.30% mean relative error, making it suitable as a visual-based added food assessment solution. This can help users save time and avoid under-reporting problems.
AB - The availability of high-calorie foods with contentious nutritional content has led to a worldwide increase in chronic disease. Therefore, monitoring of eating habits and practising healthy eating habits is recommended. Clinical diet assessment methods and mobile calorie tracking apps can be used to record daily food consumption but are often not user-friendly. Convenient image-based assessment models are currently available to recognise and estimate the nutritional value of foods directly from food images, but they do not consider how nutritional value changes after cooking. Consequently, VegeNet, a multi-output InceptionV3-based convolutional neural network model has been developed, which estimates the nutritional values of cooked and uncooked vegetables. The explicit use of the cooking state is the main contribution of this work. This deep learning model successfully classifies the food images at 97% accuracy and estimates the nutritional values at 15.30% mean relative error, making it suitable as a visual-based added food assessment solution. This can help users save time and avoid under-reporting problems.
UR - http://www.scopus.com/inward/record.url?scp=85179837247&partnerID=8YFLogxK
M3 - Conference contribution
AN - SCOPUS:85179837247
T3 - Conference of Open Innovation Association, FRUCT
SP - 183
EP - 191
BT - Proceedings of the 34th Conference of Open Innovations Association FRUCT, FRUCT 2023
A2 - Balandin, Sergey
A2 - Kunicina, Nadezda
A2 - Shatalova, Tatiana
PB - IEEE Computer Society
T2 - 34th Conference of Open Innovations Association FRUCT, FRUCT 2023
Y2 - 15 November 2023 through 17 November 2023
ER -