Evaluating the descriptive power of Instagram hashtags

Stamatios Giannoulakis, Nicolas Tsapatsoulis
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引用次数: 75

Abstract

Image tagging is an essential step for developing Automatic Image Annotation (AIA) methods that are based on the learning by example paradigm. However, manual image annotation, even for creating training sets for machine learning algorithms, requires hard effort and contains human judgment errors and subjectivity. Thus, alternative ways for automatically creating training examples, i.e., pairs of images and tags, are pursued. In this work, we investigate whether tags accompanying photos in the Instagram can be considered as image annotation metadata. If such a claim is proved then Instagram could be used as a very rich, easy to collect automatically, source of training data for the development of AIA techniques. Our hypothesis is that Instagram hashtags, and especially those provided by the photo owner/creator, express more accurately the content of a photo compared to the tags assigned to a photo during explicit image annotation processes like crowdsourcing. In this context, we explore the descriptive power of hashtags by examining whether other users would use the same, with the owner, hashtags to annotate an image. For this purpose 1000 Instagram images were collected and one to four hashtags, considered as the most descriptive ones for the image in question, were chosen among the hashtags used by the photo owner. An online database was constructed to generate online questionnaires containing 20 images each, which were distributed to experiment participants so they can choose the best suitable hashtag for every image according to their interpretation. Results show that an average of 66% of the participants hashtag choices coincide with those suggested by the photo owners; thus, an initial evidence towards our hypothesis confirmation can be claimed.

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评估Instagram标签的描述能力
图像标注是基于实例学习的自动图像标注方法的重要组成部分。然而,手动图像标注,即使是为机器学习算法创建训练集,也需要付出艰苦的努力,并且包含人为的判断错误和主观性。因此,寻求自动创建训练样例的替代方法,即图像和标签对。在这项工作中,我们研究了Instagram中照片的标签是否可以被视为图像标注元数据。如果这种说法得到证实,那么Instagram可以作为一个非常丰富、易于自动收集的培训数据来源,用于开发AIA技术。我们的假设是,Instagram的标签,尤其是照片所有者/创作者提供的标签,比在众包等明确的图像注释过程中分配给照片的标签更准确地表达了照片的内容。在这种情况下,我们通过检查其他用户是否会与所有者一起使用相同的标签来注释图像,来探索标签的描述能力。为此,收集了1000张Instagram图片,并从照片所有者使用的标签中选择了一到四个最具描述性的标签。我们构建了一个在线数据库,生成在线问卷,每个问卷包含20张图片,分发给实验参与者,让他们根据自己的理解为每张图片选择最合适的标签。结果显示,平均66%的参与者选择的标签与照片所有者建议的标签一致;因此,对我们的假设确认的初步证据可以声称。
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