Platemate
Author(s) -
Jon Noronha,
Eric Hysen,
Haoqi Zhang,
Krzysztof Z. Gajos
Publication year - 2011
Publication title -
digital access to scholarship at harvard (dash) (harvard university)
Language(s) - English
Resource type - Conference proceedings
DOI - 10.1145/2047196.2047198
Subject(s) - computer science , workflow , dieting , crowdsourcing , calorie , data science , human–computer interaction , world wide web , database , medicine , obesity , endocrinology , weight loss
We introduce PlateMate, a system that allows users to take photos of their meals and receive estimates of food intake and composition. Accurate awareness of this information can help people monitor their progress towards dieting goals, but current methods for food logging via self-reporting, expert observation, or algorithmic analysis are time-consuming, expensive, or inaccurate. PlateMate crowdsources nutritional analysis from photographs using Amazon Mechanical Turk, automatically coordinating untrained workers to estimate a meal's calories, fat, carbohydrates, and protein. We present the Management framework for crowdsourcing complex tasks, which supports PlateMate's nutrition analysis workflow. Results of our evaluations show that PlateMate is nearly as accurate as a trained dietitian and easier to use for most users than traditional self-reporting.
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