Elderly Unit, University Hospital Center Dijon Bourgogne F Mitterrand, F-21000 Dijon, France.
Centre des Sciences du Goût et de l'Alimentation, INRAE, Université de Bourgogne Franche-Comté, CNRS, Agrosup, F-21000 Dijon, France.
Nutrients. 2022 Jan 5;14(1):221. doi: 10.3390/nu14010221.
Having a system to measure food consumption is important to establish whether individual nutritional needs are being met in order to act quickly and to minimize the risk of undernutrition. Here, we tested a smartphone-based food consumption assessment system named FoodIntech. FoodIntech, which is based on AI using deep neural networks (DNN), automatically recognizes food items and dishes and calculates food leftovers using an image-based approach, i.e., it does not require human intervention to assess food consumption. This method uses one-input and one-output images by means of the detection and synchronization of a QRcode located on the meal tray. The DNN are then used to process the images and implement food detection, segmentation and recognition. Overall, 22,544 situations analyzed from 149 dishes were used to test the reliability of this method. The reliability of the AI results, based on the central intra-class correlation coefficient values, appeared to be excellent for 39% of the dishes ( = 58 dishes) and good for 19% ( = 28). The implementation of this method is an effective way to improve the recognition of dishes and it is possible, with a sufficient number of photos, to extend the capabilities of the tool to new dishes and foods.
拥有一个测量食物摄入量的系统对于确定个体的营养需求是否得到满足非常重要,这样可以快速采取行动并将营养不足的风险降到最低。在这里,我们测试了一种名为 FoodIntech 的基于智能手机的食物摄入量评估系统。FoodIntech 基于使用深度神经网络 (DNN) 的人工智能,可以自动识别食物和菜肴,并通过图像方法计算食物剩余量,即不需要人为干预来评估食物摄入量。该方法使用单输入和单输出图像,通过检测和同步位于餐盘上的 QR 码来实现。然后,DNN 用于处理图像并实施食物检测、分割和识别。总体而言,使用来自 149 道菜的 22544 种情况来测试该方法的可靠性。基于中心组内相关系数值的 AI 结果的可靠性,对于 39%的菜肴(=58 道菜)表现出极好,对于 19%的菜肴(=28 道菜)表现出良好。该方法的实施是提高菜肴识别的有效方法,并且可以通过足够数量的照片来扩展工具对新菜肴和食物的功能。