FoodChangeLens:基于cnn的全息透镜食物转换

Shu Naritomi, Ryosuke Tanno, Takumi Ege, Keiji Yanai
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引用次数: 8

摘要

在这个演示中,我们使用图像生成和HoloLens在混合现实中实现了食品类别转换。我们的系统将转换后的食物图像叠加到AR空间中的食物对象上,这样就可以根据真实形状进行转换。这个系统有可能让用餐变得更愉快。在这项工作中,我们使用从Twitter流中收集的大规模食物图像数据训练的条件CycleGAN进行食物类别转换,它可以在十种食物之间相互转换,保持给定食物的形状。我们展示了一种虚拟的用餐体验,即拉面、咖喱饭、炒饭、牛肉碗、冰鲜面、肉源意面、白米饭、鳗鱼碗、炒面等十种典型日本食物之间的食物类别转换。请注意,包括演示视频在内的其他结果可以在https://negi111111.github.io/FoodChangeLensProjectHP/上看到
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FoodChangeLens: CNN-Based Food Transformation on HoloLens
In this demonstration, we implemented food category transformation in mixed reality using both image generation and HoloLens. Our system overlays transformed food images to food objects in the AR space, so that it is possible to convert in consideration of real shape. This system has the potential to make meals more enjoyable. In this work, we use the Conditional CycleGAN trained with a large-scale food image data collected from the Twitter Stream for food category transformation which can transform among ten kinds of foods mutually keeping the shape of a given food. We show the virtual meal experience which is food category transformation among ten kinds of typical Japanese foods: ramen noodle, curry rice, fried rice, beef rice bowl, chilled noodle, spaghetti with meat source, white rice, eel bowl, and fried noodle. Note that additional results including demo videos can be see at https://negi111111.github.io/FoodChangeLensProjectHP/
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