LeFood-set: Baseline performance of predicting level of leftovers food dataset in a hospital using MT learning
Yuita Arum Sari, Atsushi Nakazawa, Yudi Arimba Wani

TL;DR
This paper introduces LeFoodSet, a new dataset for predicting food leftovers in hospitals using AI, which outperforms human observation.
Contribution
The novel contribution is LeFoodSet, the first large-scale dataset for estimating food leftovers, and the use of multi-task learning models for this purpose.
Findings
The MT-IC model achieved 92.56% accuracy in food classification.
AI models outperformed human observation in predicting food leftovers.
The LeFoodSet dataset includes 524 image pairs of 34 Indonesian food categories.
Abstract
Monitoring the remaining food in patients’ trays is a routine activity in healthcare facilities as it provides valuable insights into the patients’ dietary intake. However, estimating food leftovers through visual observation is time-consuming and biased. To tackle this issue, we have devised an efficient deep learning-based approach that promises to revolutionize how we estimate food leftovers. Our first step was creating the LeFoodSet dataset, a pioneering large-scale open dataset explicitly designed for estimating food leftovers. This dataset is unique in its ability to estimate leftover rates and types of food. To the best of our knowledge, this is the first comprehensive dataset for this type of analysis. The dataset comprises 524 image pairs representing 34 Indonesian food categories, each with images captured before and after consumption. Our prediction models employed a combined…
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Taxonomy
TopicsNutritional Studies and Diet · Food Waste Reduction and Sustainability
