Title :
Understanding Kin Relationships in a Photo
Author :
Xia, Siyu ; Shao, Ming ; Luo, Jiebo ; Fu, Yun
Author_Institution :
Sch. of Autom., Southeast Univ., Nanjing, China
Abstract :
There is an urgent need to organize and manage images of people automatically due to the recent explosion of such data on the Web in general and in social media in particular. Beyond face detection and face recognition, which have been extensively studied over the past decade, perhaps the most interesting aspect related to human-centered images is the relationship of people in the image. In this work, we focus on a novel solution to the latter problem, in particular the kin relationships. To this end, we constructed two databases: the first one named UB KinFace Ver2.0, which consists of images of children, their young parents and old parents, and the second one named FamilyFace. Next, we develop a transfer subspace learning based algorithm in order to reduce the significant differences in the appearance distributions between children and old parents facial images. Moreover, by exploring the semantic relevance of the associated metadata, we propose an algorithm to predict the most likely kin relationships embedded in an image. In addition, human subjects are used in a baseline study on both databases. Experimental results have shown that the proposed algorithms can effectively annotate the kin relationships among people in an image and semantic context can further improve the accuracy.
Keywords :
Internet; face recognition; image retrieval; learning (artificial intelligence); meta data; social networking (online); visual databases; FamilyFace database; UB KinFace Ver2.0 database; Web data; appearance distributions; children facial images; face recognition; human-centered images; image management; image organization; metadata; most likely kin relationship prediction algorithm; old parents facial images; semantic relevance; social media; transfer subspace learning based algorithm; young parents; Accuracy; Context; Databases; Face; Face recognition; Feature extraction; Semantics; Context; face recognition; kinship verification; semantics;
Journal_Title :
Multimedia, IEEE Transactions on
DOI :
10.1109/TMM.2012.2187436