A New Texture Feature for Improved Food Recognition Accuracy in a Mobile Phone Based Dietary Assessment System

M. Rahman, M. Pickering, D. Kerr, C. Boushey, E. Delp
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引用次数: 21

Abstract

Poor diet is one of the key determinants of an individual's risk of developing chronic diseases. Assessing what people eat is fundamental to establishing the link between diet and disease. Food records are considered the best approach for assessing energy intake however paper-based food recording is cumbersome and often inaccurate. Researchers have begun to explore how mobile devices can be used to reduce the burden of recording nutritional intake. The integrated camera in a mobile phone can be used for capturing images of food consumed. These images are then processed to automatically identify the food items for record keeping purposes. In such systems, the accurate classification of food items in these images is vital to the success of such a system. In this paper we will present a new method for generating texture features from food images and demonstrate that this new feature provides greater food classification accuracy for a mobile phone based dietary assessment system.
一种新的纹理特征提高了基于手机的膳食评估系统的食物识别精度
不良饮食习惯是个人患慢性病风险的关键决定因素之一。评估人们的饮食是建立饮食与疾病之间联系的基础。食物记录被认为是评估能量摄入的最佳方法,但纸质食物记录既麻烦又不准确。研究人员已经开始探索如何使用移动设备来减轻记录营养摄入量的负担。手机中的集成摄像头可以用来捕捉食物的图像。然后对这些图像进行处理,以自动识别食品,以便保存记录。在这样的系统中,在这些图像中对食物进行准确分类对这样一个系统的成功至关重要。在本文中,我们将提出一种从食物图像中生成纹理特征的新方法,并证明这种新特征为基于手机的饮食评估系统提供了更高的食物分类精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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