利用马尔可夫网络识别消费者图像中的人物

Andrew C. Gallagher, Tsuhan Chen
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引用次数: 8

摘要

马尔可夫网络是一个有效的工具,用于识别消费者图像集合中的人物这一困难但重要的问题。给定一小组标记的面孔,我们试图识别图像集合中的其他面孔。在形成马尔可夫网络边势时利用了问题的约束条件。推理也用于建议用户标记的面孔,最大限度地减少用户的工作量。在一个包含4个个体的测试集中,仅使用3个标记样例,识别率就达到了86%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using a Markov Network to Recognize People in Consumer Images
Markov networks are an effective tool for the difficult but important problem of recognizing people in consumer image collections. Given a small set of labeled faces, we seek to recognize the other faces in an image collection. The constraints of the problem are exploited when forming the Markov network edge potentials. Inference is also used to suggest faces for the user to label, minimizing the work on the part of the user. In one test set containing 4 individuals, an 86% recognition rate is achieved with only 3 labeled examples.
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