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Dish Detection and Segmentation for Dietary Assessment on Smartphones

机译:智能手机膳食评估中的菜品检测和细分

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Diet-related chronic diseases severely affect personal and global health. However, managing or treating these diseases currently requires long training and high personal involvement to succeed. Computer vision systems could assist with the assessment of diet by detecting and recognizing different foods and their portions in images. We propose novel methods for detecting a dish in an image and segmenting its contents with and without user interaction. All methods were evaluated on a database of over 1600 manually annotated images. The dish detection scored an average of 99% accuracy with a .2s/image run time, while the automatic and semi-automatic dish segmentation methods reached average accuracies of 88% and 91% respectively, with an average run time of .5s/image, outperforming competing solutions.
机译:与饮食有关的慢性疾病严重影响个人和全球健康。但是,控制或治疗这些疾病目前需要长期的培训和高度的个人投入才能成功。计算机视觉系统可以通过检测和识别图像中不同的食物及其组成部分来帮助评估饮食。我们提出了新颖的方法来检测图像中的菜肴并在有和没有用户交互的情况下分割其内容。所有方法均在包含1600多个手动注释图像的数据库中进行了评估。菜品检测的平均准确度为99%,运行时间为.2s /图像,自动和半自动菜品分割方法的平均准确度分别为88%和91%,平均运行时间为.5s /图像。 ,胜过其他竞争解决方案。

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