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Measuring Food Volume and Nutritional Values from Food Images.

机译:从食物图像测量食物量和营养价值。

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摘要

Obesity and being overweight have become growing concerns due to their association with many diseases, such as type II diabetes, several types of cancer and heart disease. Thus, obesity treatments have been the focus of a large number of recent studies. Because of these studies, researchers have found that the treatment of obesity and being overweight requires constant monitoring of the patient's diet. Therefore, measuring food intake each day is considered an important step in the success of a healthy diet. Measuring daily food consumption for obese patients is one of the challenges in obesity management studies. Countless recent studies have suggested that using technology like smartphones may enhance the under-reporting issue in dietary intake consumption. In this thesis, we propose a Food Recognition System (FRS) for calories and nutrient values assumption. The user employs the built-in camera of the smartphone to take a picture of any food before and after eating. The system then processes and classifies the images to detect the type of food and portion size, then uses the information to estimate the number of calories in the food. The estimation and calculation of the food volume and amount of calories in the image is an essential step in our system. Via special approaches, the FRS can estimate the food volume and the existing calories with a high level of accuracy. Our experiment shows high reliability and accuracy of this approach, with less than 15% error.
机译:由于肥胖和超重与许多疾病(例如II型糖尿病,几种癌症和心脏病)相关联,因此越来越引起人们的关注。因此,肥胖治疗已成为许多近期研究的焦点。由于这些研究,研究人员发现,肥胖和超重的治疗需要不断监测患者的饮食。因此,每天测量食物摄入量被认为是健康饮食成功的重要一步。测量肥胖患者的日常食物消耗是肥胖管理研究的挑战之一。最近的无数研究表明,使用诸如智能手机之类的技术可能会加剧饮食摄入量不足的报道问题。本文针对卡路里和营养价值的假设,提出了一种食物识别系统(FRS)。用户使用智能手机的内置摄像头拍摄进餐前后的食物。然后,系统对图像进行处理和分类,以检测食物的类型和份量,然后使用该信息来估计食物中的卡路里数量。图像中食物量和卡路里的估计和计算是我们系统中的重要步骤。通过特殊方法,FRS可以高度准确地估计食物量和现有卡路里。我们的实验表明,这种方法具有很高的可靠性和准确性,误差小于15%。

著录项

  • 作者

    Al-Maghrabi, Rana.;

  • 作者单位

    University of Ottawa (Canada).;

  • 授予单位 University of Ottawa (Canada).;
  • 学科 Computer Science.;Health Sciences Nutrition.;Information Technology.
  • 学位 M.A.Sc.
  • 年度 2013
  • 页码 71 p.
  • 总页数 71
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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