The design of an intelligent food consumption data collection and analysis system

A novel intelligent food consumption data collection and analysis system is presented in this paper. Information collection devices and an analysis system are the two important constituent part of this system which are introduced in detail. We design this system to solve the problems such as statistical and administration departments having difficulty to acquire actual data in resident food consumption, people having demand of healthy diet with the improvement of living standard, and the demand of food safety regulation. The design combines applied techniques including smartphones, intelligent wearable devices and big data. Cloud service is utilized to provide information service after customers' food data are collected.

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