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NutriNet: A Deep Learning Food and Drink Image Recognition System for Dietary Assessment

机译:NutriNet:用于膳食评估的深度学习食物和饮料图像识别系统

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摘要

Automatic food image recognition systems are alleviating the process of food-intake estimation and dietary assessment. However, due to the nature of food images, their recognition is a particularly challenging task, which is why traditional approaches in the field have achieved a low classification accuracy. Deep neural networks have outperformed such solutions, and we present a novel approach to the problem of food and drink image detection and recognition that uses a newly-defined deep convolutional neural network architecture, called NutriNet. This architecture was tuned on a recognition dataset containing 225,953 512 × 512 pixel images of 520 different food and drink items from a broad spectrum of food groups, on which we achieved a classification accuracy of 86.72%, along with an accuracy of 94.47% on a detection dataset containing 130,517 images. We also performed a real-world test on a dataset of self-acquired images, combined with images from Parkinson’s disease patients, all taken using a smartphone camera, achieving a top-five accuracy of 55%, which is an encouraging result for real-world images. Additionally, we tested NutriNet on the University of Milano-Bicocca 2016 (UNIMIB2016) food image dataset, on which we improved upon the provided baseline recognition result. An online training component was implemented to continually fine-tune the food and drink recognition model on new images. The model is being used in practice as part of a mobile app for the dietary assessment of Parkinson’s disease patients.
机译:自动食品图像识别系统正在减轻食品摄入量估算和饮食评估的过程。然而,由于食物图像的性质,它们的识别是特别具有挑战性的任务,这就是为什么该领域的传统方法实现了低分类精度的原因。深度神经网络的性能优于此类解决方案,并且我们提出了一种解决食品和饮料图像检测和识别问题的新颖方法,该方法使用了一种新定义的深度卷积神经网络体系结构,称为NutriNet。该体系结构在识别数据集上进行了调整,该数据集包含来自广泛食品类别的520种不同食品和饮料的225,953 512×512像素图像,在此基础上,我们实现了86.72%的分类准确率,在一个食品包装上的分类准确度为94.47%检测数据集包含130,517张图像。我们还对自己获取的图像数据集进行了真实世界测试,并结合了所有帕金森氏病患者的图像(均使用智能手机摄像头拍摄),获得了最高55%的准确度,这对于世界图像。此外,我们在米兰比可卡大学2016(UNIMIB2016)食物图像数据集上测试了NutriNet,我们在提供的基线识别结果上进行了改进。实施了在线培训,以不断调整新图像上的食物和饮料识别模型。该模型已在实践中用作移动应用程序的一部分,用于帕金森氏病患者的饮食评估。

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