Food Image Recognition Using Very Deep Convolutional Networks

Hamid Hassannejad, G. Matrella, P. Ciampolini, I. D. Munari, M. Mordonini, S. Cagnoni
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引用次数: 161

Abstract

We evaluated the effectiveness in classifying food images of a deep-learning approach based on the specifications of Google's image recognition architecture Inception. The architecture is a deep convolutional neural network (DCNN) having a depth of 54 layers. In this study, we fine-tuned this architecture for classifying food images from three well-known food image datasets: ETH Food-101, UEC FOOD 100, and UEC FOOD 256. On these datasets we achieved, respectively, 88.28%, 81.45%, and 76.17% as top-1 accuracy and 96.88%, 97.27%, and 92.58% as top-5 accuracy. To the best of our knowledge, these results significantly improve the best published results obtained on the same datasets, while requiring less computation power, since the number of parameters and the computational complexity are much smaller than the competitors?. Because of this, even if it is still rather large, the deep network based on this architecture appears to be at least closer to the requirements for mobile systems.
使用非常深卷积网络的食物图像识别
我们基于谷歌图像识别架构Inception的规范评估了深度学习方法对食物图像分类的有效性。该架构是一个深度为54层的深度卷积神经网络(DCNN)。在本研究中,我们对该架构进行了微调,用于从三个知名的食品图像数据集(ETH food -101, UEC food 100和UEC food 256)中分类食品图像。在这些数据集上,我们分别实现了88.28%、81.45%和76.17%的前1准确率和96.88%、97.27%和92.58%的前5准确率。据我们所知,这些结果显著提高了在相同数据集上获得的最佳已发表结果,同时需要更少的计算能力,因为参数的数量和计算复杂度远小于竞争对手。正因为如此,即使它仍然相当大,基于这种架构的深度网络看起来至少更接近移动系统的要求。
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