Food classification using transfer learning technique

VijayaKumari G. , Priyanka Vutkur , Vishwanath P.
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引用次数: 13

Abstract

In the subject of object detection using computer vision, image classification is becoming a prominent and promising aspect. However, studies have just scratched the surface. Till now, the superficials of food image classification in order to assess the nutritional abilities of people of different nationalities, The categorization of their traditional cuisine has a significant influence. Existing models categorize different sorts of foods. These models can only categorize a small number of meals at a given time. However, in a single model, the maximum number of foods must be recognized. This work focuses on the creation of a recognition model that uses transfer learning techniques to categorize various food products into their appropriate categories. Using Efficientnetb0, a transfer learning technique, the developed model classified 101 distinct food kinds with an accuracy of 80%. When compared to other state of art models, our model performed with best accuracy.

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利用迁移学习技术进行食物分类
在利用计算机视觉进行目标检测的课题中,图像分类正成为一个突出而有前景的研究方向。然而,研究只是触及了表面。时至今日,肤浅的食物形象分类以评价不同民族人民的营养能力,对其传统菜肴的分类有着重大的影响。现有的模型对不同种类的食物进行分类。这些模型在给定时间内只能对少量食物进行分类。然而,在单一模型中,必须识别出食物的最大数量。这项工作的重点是创建一个识别模型,该模型使用迁移学习技术将各种食品分类到适当的类别中。利用迁移学习技术Efficientnetb0,开发的模型以80%的准确率对101种不同的食物进行了分类。与其他最先进的模型相比,我们的模型具有最好的准确性。
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