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Context-Aided Human Recognition - Clustering

机译:上下文相关的人类识别-聚类

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摘要

Context information other than faces, such as clothes, picture-taken-time and some logical constraints, can provide rich cues for recognizing people. This aim of this work is to automatically cluster pictures according to person's identity by exploiting as much context information as possible in addition to faces. Toward that end, a clothes recognition algorithm is first developed, which is effective for different types of clothes (smooth or highly textured). Clothes recognition results are integrated with face recognition to provide similarity measurements for clustering. Picture-taken-time is used when combining faces and clothes, and the cases of faces or clothes missing are handled in a principle way. A spectral clustering algorithm which can enforce hard constraints (positive and negative) is presented to incorporate logic-based cues (e.g. two persons in one picture must be different individuals) and user feedback. Experiments on real consumer photos show the effectiveness of the algorithm.
机译:除了脸部以外的上下文信息(例如衣服,拍摄时间和某些逻辑约束)可以为识别人提供丰富的线索。这项工作的目的是通过利用人脸之外的尽可能多的上下文信息,根据人的身份自动对图片进行聚类。为此,首先开发了一种衣服识别算法,该算法对不同类型的衣服(光滑或高质感)有效。衣服识别结果与人脸识别集成在一起,为聚类提供相似性度量。组合面部和衣服时使用拍照时间,并且原则上处理面部或衣服丢失的情况。提出了一种可以强制执行硬约束(正负)的频谱聚类算法,以结合基于逻辑的线索(例如,一张图片中的两个人必须是不同的人)和用户反馈。在真实的消费者照片上进行的实验证明了该算法的有效性。

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