Saliency-Aware Class-Agnostic Food Image Segmentation

S. Yarlagadda, D. M. Montserrat, D. Güera, C. Boushey, D. Kerr, F. Zhu
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引用次数: 7

Abstract

Advances in image-based dietary assessment methods have allowed nutrition professionals and researchers to improve the accuracy of dietary assessment, where images of food consumed are captured using smartphones or wearable devices. These images are then analyzed using computer vision methods to estimate energy and nutrition content of the foods. Food image segmentation, which determines the regions in an image where foods are located, plays an important role in this process. Current methods are data dependent and thus cannot generalize well for different food types. To address this problem, we propose a class-agnostic food image segmentation method. Our method uses a pair of eating scene images, one before starting eating and one after eating is completed. Using information from both the before and after eating images, we can segment food images by finding the salient missing objects without any prior information about the food class. We model a paradigm of top-down saliency that guides the attention of the human visual system based on a task to find the salient missing objects in a pair of images. Our method is validated on food images collected from a dietary study that showed promising results.
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显著性感知的食物图像分割
基于图像的饮食评估方法的进步使营养专业人员和研究人员能够提高饮食评估的准确性,其中使用智能手机或可穿戴设备捕获所消耗食物的图像。然后使用计算机视觉方法对这些图像进行分析,以估计食物的能量和营养含量。食品图像分割在这一过程中起着重要作用,它确定了食品在图像中所处的区域。目前的方法依赖于数据,因此不能很好地概括不同的食物类型。为了解决这个问题,我们提出了一种与类别无关的食品图像分割方法。我们的方法使用一对进食场景图像,一个在开始进食前,一个在进食完成后。利用进食前和进食后的图像信息,我们可以在没有任何关于食物类别的先验信息的情况下,通过找到明显缺失的物体来分割食物图像。我们建立了一个自上而下的显著性范式,该范式引导人类视觉系统的注意力,基于在一对图像中找到显著缺失的物体的任务。我们的方法在一项饮食研究中收集的食物图像上得到了验证,结果很有希望。
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CiteScore
10.30
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