Image annotation via social diffusion analysis with common interests

Chenyi Lei, Dong Liu
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引用次数: 3

Abstract

Automatic annotation of images is of crucial importance in image retrieval and management systems. Most of the existing annotation methods rely on content-based approach to annotation, whose effectiveness is restricted due to the semantic gap between low-level features and semantic annotations, as well as the irrelevance between annotations and image content. Recently, social media analysis has been investigated for image annotation. Inspired by the abundant social diffusion records of images in online social networks, we propose a novel image annotation approach based on social diffusion analysis. We present a common-interest model to interpret social diffusion, i.e. different images have different social diffusion routes due to the preferences of users, and such preferences are represented as common interests of pairwise users rather than personalized interests. We propose an image annotation framework that consists of learning of common interests, feature extraction from social diffusion records, and automatic annotation by learning to rank. Experimental results on a real-world dataset show that our proposed approach outperforms content-based and user-preference-based annotation methods.
基于共同利益的社会扩散分析的图像标注
图像的自动标注是图像检索和管理系统的重要组成部分。现有的标注方法大多依赖于基于内容的标注方法,由于底层特征与语义标注之间存在语义缺口,以及标注与图像内容之间的不相关性,限制了其有效性。最近,社交媒体分析被研究用于图像标注。受在线社交网络中图像丰富的社会扩散记录的启发,我们提出了一种基于社会扩散分析的图像标注方法。我们提出了一个共同兴趣模型来解释社会扩散,即不同的图像由于用户的偏好而有不同的社会扩散路径,这种偏好被表示为成对用户的共同兴趣而不是个性化兴趣。我们提出了一个由共同兴趣学习、社会扩散记录特征提取和学习排序自动标注组成的图像标注框架。在真实数据集上的实验结果表明,我们提出的方法优于基于内容和基于用户偏好的标注方法。
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