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An optimized convolutional neural network with bottleneck and spatial pyramid pooling layers for classification of foods

机译:具有瓶颈和空间金字塔池层的优化卷积神经网络,用于食品分类

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摘要

Keeping record of daily meal intake is an effective solution for tackling with obesity and overweight. This can be done by developing apps on smartphones that are able to automatically recommend a short list of most probable foods by analyzing the photo taken from food. Then, the user chooses the correct answer from the short list. Hence, the automatic food recognition system must be able to recommend an accurate list. In other words, it is not essential for these apps to have a very high top-1 accuracy. Considering that the app will show the list of 5 most probable foods, the food recognition system must have a high top-5 accuracy. A food recognition system is usually developed by adapting knowledge of state-of-the-art networks such as GoogleNet and ResNet to the domain of food. However, these networks have high number of parameters. In this paper, we propose a 23-layer architecture which has 99.14% and 96.63% fewer parameter compared with ResNet and GoogleNet. Our experiment on Food101 and UECFood-256 datasets shows that although our network reduces the number of parameters dramatically, it produces more accurate results than GoogleNet and its accuracy is comparable with ResNet. (c) 2017 Elsevier B.V. All rights reserved.
机译:保持每日进餐记录是解决肥胖和超重的有效方法。这可以通过在智能手机上开发应用程序来完成,这些应用程序可以通过分析从食物中拍摄的照片来自动推荐最可能食物的简短列表。然后,用户从简短列表中选择正确的答案。因此,自动食品识别系统必须能够推荐准确的清单。换句话说,这些应用具有非常高的top-1准确性并不是必需的。考虑到该应用程序将显示5种最可能食物的列表,因此食物识别系统必须具有较高的前5位准确性。通常通过将最先进的网络(例如GoogleNet和ResNet)的知识适应食品领域来开发食品识别系统。但是,这些网络具有大量参数。在本文中,我们提出了23层架构,与ResNet和GoogleNet相比,该架构的参数分别减少了99.14%和96.63%。我们对Food101和UECFood-256数据集的实验表明,尽管我们的网络大大减少了参数数量,但它产生的结果比GoogleNet更准确,其准确性与ResNet相当。 (c)2017 Elsevier B.V.保留所有权利。

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