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MT-diet demo: Demonstration of automated smartphone based diet assessment system

机译:MT-diet演示:基于智能手机的自动饮食评估系统演示

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Background: According to several recent research results [1]-[4], obesity can increase the risk of many diseases such as diabetes, chronic kidney disease, metabolic disease, cardiovascular disease, etc. To prevent and treat the obesity efficiently and effectively, diet monitoring is an important factor. Purpose: Manual self-monitoring techniques for diet suffer from drawbacks such as low adherence, underreporting, and recall error [5]-[7]. Camera based applications that automatically extract type and quantity of food from an image of the food plate can potentially improve adherence and accuracy. However, state-of-the-art systems [8] have fairly low accuracy for identifying cooked food (only 63%) and are not fully automatic. To overcome these drawbacks such as low adherence, underreporting, recall error, low accuracy, and semi-automatedness, we introduce MT-Diet, a fully automated diet assessment system. It can identify cooked food with an accuracy of 88.93%. This is a significant improvement (over 20%) from the current state-of-the art system. Method: MT-Diet is a smartphone-based system that interfaces a thermal sensor with a smartphone. Using this system a user can take both thermal and visual images of her food plate with just one click. We used a database of 80 frozen meals which contain several different types of foods so that the actual total number of our food database 244 and the database has 33 different types of foods. By using the database, we demonstrate two core components: a) food segmentation, separating food items from the plate and recognizing multiple food items as a single food item, and b) food identification, determining the type of foods. Result: MT-Diet food segmentation methodology is fully automatic and requires no user input as opposed to recent works, the accuracy of separating food parts from the plate was 97.5%. The accuracy of food identification using Support Vector Machine with Radial Basis Function kernel based on color, texture, an- histogram of oriented gradients features is 88.5%. Conclusion: We suggest a new and novel approach for diet assessment, MT-Diet. Our approach can potentially be an inexpensive, real time for the feedback on calorie intake, easy-to-use, privacy preservation, personalization based on eating habits of individuals, and fully automated diet monitoring system. The tool can also be used to conduct clinical studies to develop models of meal patterns that can be incorporated to design better artificial pancreas.
机译:背景:根据最近的一些研究结果[1]-[4],肥胖症会增加许多疾病的风险,例如糖尿病,慢性肾脏病,代谢性疾病,心血管疾病等。为了有效地预防和治疗肥胖症,饮食监测是重要因素。目的:饮食中的手动自我监测技术存在诸如依从性低,报告不足和召回错误等缺点[5]-[7]。自动从食物盘图像中提取食物类型和数量的基于相机的应用程序可能会提高粘附性和准确性。但是,最先进的系统[8]识别熟食的准确性相当低(只有63%),并且不是全自动的。为了克服这些缺点,例如依从性低,报告不足,召回错误,准确性低和半自动化,我们引入了MT-Diet,这是一种全自动饮食评估系统。它可以以88.93%的精度识别熟食。与当前最先进的系统相比,这是一项重大改进(超过20%)。方法:MT-Diet是基于智能手机的系统,可将热传感器与智能手机连接。使用该系统,用户只需单击一下即可拍摄食物板的热图像和视觉图像。我们使用了包含80种冷冻食物的数据库,其中包含几种不同类型的食物,因此我们的食物数据库244和该数据库的实际总数包含33种不同类型的食物。通过使用数据库,我们演示了两个核心组成部分:a)食物分割,将食物从盘子中分离出来,并将多个食物识别为单个食物,b)食物识别,确定食物的类型。结果:MT-Diet食品分割方法是全自动的,与最近的工作相反,不需要用户输入,从盘子中分离食品零件的准确性为97.5%。使用带有径向基函数核的支持向量机基于颜色,纹理,定向梯度特征的直方图的食品识别准确性为88.5%。结论:我们建议一种新的,新颖的饮食评估方法MT-Diet。我们的方法可能是廉价,实时的卡路里摄入量反馈,易于使用,隐私保护,基于个人饮食习惯的个性化以及全自动饮食监测系统。该工具还可以用于进行临床研究,以开发膳食模式的模型,可以将其纳入设计更好的人造胰腺中。

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