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Automatic Expansion of a Food Image Dataset Leveraging Existing Categories with Domain Adaptation

机译:自动扩展食品图像数据集利用具有域适应的现有类别

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In this paper, we propose a novel effective framework to expand an existing image dataset automatically leveraging existing categories and crowdsourcing. Especially, in this paper, we focus on expansion on food image data set. The number of food categories is uncountable, since foods are different from a place to a place. If we have a Japanese food dataset, it does not help build a French food recognition system directly. That is why food data sets for different food cultures have been built independently so far. Then, in this paper, we propose to leverage existing knowledge on food of other cultures by a generic "foodness" classifier and domain adaptation. This can enable us not only to built other-cultured food datasets based on an original food image dataset automatically, but also to save as much crowd-sourcing costs as possible. In the experiments, we show the effectiveness of the proposed method over the baselines.
机译:在本文中,我们提出了一种新颖的有效框架来扩展现有的图像数据集自动利用现有类别和众包。特别是,在本文中,我们专注于在食品图像数据集上的扩展。食品类别的数量是不可数的,因为食物与地方的地方不同。如果我们有日本食品数据集,它并没有帮助直接建立法国食品识别系统。这就是为什么不同食物文化的食物数据集已经独立建立。然后,在本文中,我们建议通过通用的“饮食”分类器和领域适应来利用其他文化食物的现有知识。这可以使我们能够自动基于原始食品图像数据集构建其他培养的食物数据集,但也可以尽可能地节省多重人群采购成本。在实验中,我们展示了所提出的方法在基线上的有效性。

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