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Leveraging multiple cues for recognizing family photos

机译:利用多种线索识别家庭照片

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Social relation analysis via images is a new research area that has attracted much interest recently. As social media usage increases, a wide variety of information can be extracted from the growing number of consumer photos shared online, such as the category of events captured or the relationships between individuals in a given picture. Family is one of the most important units in our society, thus categorizing family photos constitutes an essential step toward image-based social analysis and content-based retrieval of consumer photos. We propose an approach that combines multiple unique and complimentary cues for recognizing family photos. The first cue analyzes the geometric arrangement of people in the photograph, which characterizes scene-level information with efficient yet discriminative capability. The Second cue models facial appearance similarities to capture and quantify relevant pairwise relations between individuals in a given photo. The last cue investigates the semantics of the context in which the photo was taken. Experiments on a dataset containing thousands of family and non-family pictures collected from social media indicate that each individual model produces good recognition results. Furthermore, a combined approach incorporating appearance, geometric and semantic features significantly outperforms the state of the art in this domain, achieving 96.7% classification accuracy. (C) 2016 Elsevier B.V. All rights reserved.
机译:通过图像进行社会关系分析是一个新的研究领域,最近引起了人们的极大兴趣。随着社交媒体使用量的增加,可以从在线共享的越来越多的消费者照片中提取各种各样的信息,例如捕获的事件的类别或给定图片中个人之间的关系。家庭是我们社会中最重要的单位之一,因此对家庭照片进行分类是迈向基于图像的社会分析和基于内容的消费者照片检索的重要一步。我们提出了一种方法,该方法结合了多种独特和互补的线索来识别家庭照片。第一个提示分析照片中人物的几何排列,从而以有效而具有判别能力来表征场景级别的信息。第二线索模拟面部外观相似性,以捕获和量化给定照片中个人之间的相关成对关系。最后一个提示调查了拍摄照片的上下文的语义。在包含从社交媒体收集的数千张家庭和非家庭图片的数据集上进行的实验表明,每个单独的模型都能产生良好的识别结果。此外,结合外观,几何和语义特征的组合方法在该领域显着优于现有技术,实现了96.7%的分类精度。 (C)2016 Elsevier B.V.保留所有权利。

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