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Diet Application That Can Recognize Turkish Foods With Deep Learning

机译:饮食申请可以识别土耳其食物深入学习

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The problem of manually entering the meals one by one, which is one of the main problems in many traditional diet applications, was solved with the help of the proposed deep learning models integrated into the mobile application. Two different models resulting from the deep learning study were used in the application. The first model detects the food in the environment with real-time object detection and the second one recognizes the type of the food in the detected plate. A data set containing 102 different types of food belonging to Turkish cuisine and approximately 500 photographs of each type of food was collected and used in the training of the second model. The proposed TurkishFoodNet network with the number of three, five, seven, nine, eleven and thirteen layers were examined in the training of both models. Apart from this network, training operation were also held with Tensorflow Lite Image Classifier and MobilNetV2. According to the test results, Tensorflow Lite Image Classifier and TurkishFoodNet_L11 gives the highest accuracy for both detecting food and recognizing the type of food with an accuracy of 93% and 84%, respectively.
机译:逐一手动进入膳食的问题,这是许多传统饮食应用中的主要问题之一,并借助集成到移动应用程序的深度学习模型的帮助解决了。应用中使用深度学习研究产生的两个不同模型。第一型号通过实时对象检测检测环境中的食物,第二个模型识别检测到的板中的食物的类型。收集了包含属于土耳其美食的102种不同类型食物的数据集,并在第二种模型的培训中收集了每种食物的大约500张照片。在两种型号的训练中检查了拟议的土耳其鱼类网络数量,其中三,五,七,九,十一层,十三层。除此网络外,还使用Tensorflow Lite Image Classifier和Mobilnetv2进行培训操作。根据测试结果,Tensorflow Lite Image分类器和TurkishFoodNet_L11为检测食品提供了最高精度,并分别识别93%和84%的精度的食物类型。

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