科技报告详细信息
Machine Learning Prototype App For Recognition of Fruits
Lu, Iris ; Kato, Kenji ; Wong, Lily ; Flynn-Evans, Erin E
关键词: APPLICATIONS PROGRAMS (COMPUTERS);    DIETS;    FOOD INTAKE;    FRUITS;    HEALTH;    IOS;    MACHINE LEARNING;    OBESITY;    PHOTOGRAPHS;    PROTOTYPES;    PYTHON (PROGRAMMING LANGUAGE);    SWIFT (PROGRAMMING LANGUAGE);    XCODE;   
RP-ID  :  ARC-E-DAA-TN72473
学科分类:软件
美国|英语
来源: NASA Technical Reports Server
PDF
【 摘 要 】

As the incidence of obesity and associated negative health consequences is rising, it becomes crucial to monitor the dietary choices of individuals. Unfortunately, traditional methods to collect this information involve collecting food frequency questionnaires from individuals using paper. Electronic food trackers have been developed to collect food data, but they require participants to manually label and describe the content of their meals, and which may be difficult for researchers to interpret in a standardized fashion. Machine learning, however, provides an easy and efficient method for both participants and researchers to label food items with standardized descriptions. This project aims to create a prototype phone application that can identify and label photos of apples. This is done by making a machine learning model through Turicreate, a python module, which is then implemented into an iOS app through Xcode and Swift. The modules used in Swift include CoreML and AVFoundation. This machine learning application will be incorporated with a MealLogger phone app that is also under development. The MealLogger app will be used to keep track of participants' calorie intake and other personal details throughout the sleep study. The machine learning model will present several potential identities of the foods found in the photo, and the user will only need to select the correct option. This will be a user-friendly method for participants to easily log their food consumption without the hard work of manually inputting each and every description. Some limitations to this project include the wide variety of food, including those within different cultures. To deal with this, the model will include the most generic food categories, which the participant may select, and produce a drop-down menu of more specific dishes under that specified category, with the option of self-input. Additional questionnaires may be implemented according to the food type selected This will allow the process to be quick and easy, but also specific for the purpose of analysis. The release of the application will require a much longer process, but the machine learning prototype presents a first step toward an application that may change data analysis for researchers interested in collecting food intake from individuals living in the real world.

【 预 览 】
附件列表
Files Size Format View
20190029161.pdf 652KB PDF download
  文献评价指标  
  下载次数:9次 浏览次数:11次