Abstract

Unhealthy behaviors regarding nutrition are a global risk for health. Therefore, the healthiness of an individual’s nutrition should be monitored in the medium and long term. A powerful tool for monitoring nutrition is a food diary; i.e., a daily list of food taken by the individual, together with portion information. Unfortunately, frail people such as the elderly have a hard time filling food diaries on a continuous basis due to forgetfulness or physical issues. Existing solutions based on mobile apps also require user’s effort and are rarely used in the long term, especially by elderly people. For these reasons, in this paper we propose a novel architecture to automatically recognize the preparation of food at home in a privacy-preserving and unobtrusive way, by means of air quality data acquired from a commercial sensor. In particular, we devised statistical features to represent the trend of several air parameters, and a deep neural network for recognizing cooking activities based on those data. We collected a large corpus of annotated sensor data gathered over a period of 8 months from different individuals in different homes, and performed extensive experiments. Moreover, we developed an initial prototype of an interactive system for acquiring food information from the user when a cooking activity is detected by the neural network. To the best of our knowledge, this is the first work that adopts air quality sensor data for cooking activity recognition.

Highlights

  • The 2018 Global Nutrition Report.1 of the World Health Organization (WHO) reveals that malnutrition affects, in different forms, every country of the world

  • In order to demonstrate the operation of our system, we developed an initial prototype in which the cooking recognition system activates a social robot to interactively acquire food information from the user; our system could be coupled with other interactive systems, such as digital personal assistants or dialog systems

  • The collected sensor data, the related annotations provided by humans, and the code related to the deep neural network we have developed can be freely downloaded from a GitHub repository

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Summary

Introduction

The 2018 Global Nutrition Report. of the World Health Organization (WHO) reveals that malnutrition affects, in different forms, every country of the world. Malnutrition determines more health issues than any other cause, and progress towards better nutrition is still too slow. In developed countries, overweight and obesity in adults are a cause of several non-communicable diseases, including diabetes, heart disease, stroke, different types of cancer, musculoskeletal disorders, and respiratory symptoms.. Micronutrient deficiencies are cause of severe health issues, such as anaemia.

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