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Personalized Dietary Self-Management Using Mobile Vision-Based Assistance

机译:使用基于移动视觉的协助进行个性化饮食自我管理

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摘要

Daily appropriate decision making on nutrition requires application of knowledge where it matters, and being adjusted to the individual requirements. We present a highly personalized mobile application that assists the user in appropriate food choices during grocery shopping, while simultaneously incorporating a personalized dietary rec-ommender system. The application can be used in video based augmented reality mode, where a computer vision algorithm recognizes presented food items and thus replaces tedious search within the food database. The recognition system employs a shallow Convolutional Neural Network (CNN) based classifier running at 10 fps. An innovative user study demonstrates the high usability and user experience of the application. The vision classifier is evaluated on a newly introduced reference image database containing 81 grocery foods (vegetables, fruits).
机译:关于营养的每日适当决策需要在重要的地方应用知识,并根据个人需要进行调整。我们提供了高度个性化的移动应用程序,可帮助用户在杂货店购物期间选择适当的食物,同时结合个性化的饮食推荐系统。该应用程序可以在基于视频的增强现实模式下使用,在该模式下,计算机视觉算法可以识别出所呈现的食品,从而取代食品数据库中繁琐的搜索。识别系统采用运行速度为10 fps的浅层卷积神经网络(CNN)分类器。一项创新的用户研究证明了该应用程序的高度可用性和用户体验。视觉分类器在新引入的参考图像数据库中进行评估,该数据库包含81种食品(蔬菜,水果)。

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