走向自下而上的社会饮食分析

Jaclyn Rich, H. Haddadi, Timothy M. Hospedales
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引用次数: 36

摘要

社交媒体通过提供丰富的个人数据、位置、标签和社交网络信息,为公共卫生研究提供了丰富的信息。其中,Instagram最近成为许多计算社会科学研究的主题。然而,尽管Instagram专注于图像分享,但大多数研究都只关注标签和社交网络结构。在本文中,我们对Instagram帖子进行了第一次大规模的内容分析,同时处理图像和相关的标签,旨在了解在野外拍摄的部分标记图像的内容,以及个人使用的标签与标签之间的关系。特别是,我们探索了以数据驱动的方式学习识别食物图像内容的可能性,发现了食物的类别,以及如何从社交网络数据中识别它们。值得注意的是,我们证明了我们的食物识别方法在识别流行的食物相关图像类别时通常可以达到超过70%的准确率,尽管没有使用手动注释。我们强调了当前的能力以及未来的挑战和机遇,这些数据驱动的图像内容分析以及与标签的关系。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards Bottom-Up Analysis of Social Food
Social media provide a wealth of information for research into public health by providing a rich mix of personal data, location, hashtags, and social network information. Among these, Instagram has been recently the subject of many computational social science studies. However despite Instagram's focus on image sharing, most studies have exclusively focused on the hashtag and social network structure. In this paper we perform the first large scale content analysis of Instagram posts, addressing both the image and the associated hashtags, aiming to understand the content of partially-labelled images taken in-the-wild and the relationship with hashtags that individuals use as noisy labels. In particular, we explore the possibility of learning to recognise food image content in a data driven way, discovering both the categories of food, and how to recognise them, purely from social network data. Notably, we demonstrate that our approach to food recognition can often achieve accuracies greater than 70% in recognising popular food-related image categories, despite using no manual annotation. We highlight the current capabilities and future challenges and opportunities for such data-driven analysis of image content and the relation to hashtags.
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