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Using Deep Learning for Food and Beverage Image Recognition

机译:利用深度学习食品和饮料图像识别

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Recently, deep learning achieved the state of the art in the field of food image recognition. In this paper we describe our deep learning contributions to the field: NutriNet, a novel deep learning architecture, and a pixel-level classification solution for images of fake food. NutriNet was trained on a food image dataset of a larger size and containing more food classes than previous works, and was the first to recognize beverage images. Our work on fake-food image recognition includes the first automatic system for recognizing images of fake food, while the visual similarity of fake and real food makes it useful for fake-food experiments as well as real food recognition.
机译:最近,深入学习在食物图像识别领域实现了最先进的领域。在本文中,我们描述了我们对该领域的深度学习贡献:Nutrinet,一种新型深度学习架构,以及用于假食物的图像的像素级分类解决方案。 Nutrinet在更大尺寸的食物图像数据集上培训,并且含有比以前的作品更多的食物课程,并且是第一个识别饮料图像的食物课程。我们对假食物图像识别的工作包括第一批识别假食品的自动系统,而假冒食物的视觉相似性使其可用于假食品实验以及真正的食物识别。

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