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DietCam: Multi-view regular shape food recognition with a camera phone

机译:DietCam:带摄像头手机的多视图常规形状食品识别

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摘要

This paper presents an automatic multi-view food classification of a food intake assessment system on a smart phone. Food intake assessment plays important roles in obesity management, which has shown significant impacts on public healthcare. Conventional dietary record-based food intake assessment methods are not popularly applied due to their inconvenience and high reliance on human interactions. This paper presents a smart phone application, named DietCam, to recognize food intakes automatically. The major difficulties in food recognition from images come from uncertainties of food appearances and deformable nature of food especially when they are on a complex background environment. The proposed DietCam system utilizes a multi-view recognition method that separates every food by estimating the best perspective and recognizing them using a probabilistic method. The implemented DietCam system on an iPhone 4 platform showed improved performance compared with baseline methods for food recognition, with an average accuracy of 84% for the selective regular shape foods. (C) 2014 Elsevier B.V. All rights reserved.
机译:本文介绍了智能手机上食物摄入评估系统的自动多视图食物分类。食物摄入量评估在肥胖管理中起着重要作用,已对公共医疗保健产生了重大影响。传统的基于饮食记录的食物摄入评估方法由于不便且高度依赖于人与人之间的互动,因此并未得到广泛应用。本文介绍了一个名为DietCam的智能手机应用程序,可以自动识别食物摄入量。通过图像识别食物的主要困难来自食物外观的不确定性和食物的易变形性,尤其是当它们处于复杂的背景环境中时。所提出的DietCam系统利用了一种多视图识别方法,该方法通过估计最佳视角并使用概率方法进行识别来分离每种食物。与基线方法相比,在iPhone 4平台上实施的DietCam系统显示出更高的性能,选择性常规形状食品的平均准确度为84%。 (C)2014 Elsevier B.V.保留所有权利。

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