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Query-Driven Approach to Face Clustering and Tagging

机译:查询驱动的人脸聚类和标签方法

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In the era of big data, a traditional offline setting to processing image data is simply not tenable. We simply do not have the computational power to process every image with every possible tag; moreover, we will not have the manpower to clean up the potentially noisy results. In this paper, we introduce a query-driven approach to visual tagging, focusing on the application of face tagging and clustering. We integrate active learning with query-driven probabilistic databases. Rather than asking a user to provide manual labels so as to minimize the uncertainty of labels (face tags) across the entire data set, we ask the user to provide labels that minimize the uncertainty of his/her query result (e.g., “How many times did Bob and Jim appear together?”). We use a data-driven Gaussian process model of facial appearance to write the probabilistic estimates of facial identity into a probabilistic database, which can then support inference through query answering. Importantly, the database is augmented with contextual constraints (faces in the same image cannot be the same identity, while faces in the same track must be identical). Experiments on the real-world photo collections demonstrate the effectiveness of the proposed method.
机译:在大数据时代,处理图像数据的传统脱机设置根本站不住脚。我们根本没有足够的计算能力来处理带有每个可能标签的每个图像。此外,我们将没有人力来清理潜在的嘈杂结果。在本文中,我们介绍了一种由查询驱动的视觉标记方法,重点是面部标记和聚类的应用。我们将主动学习与查询驱动的概率数据库相集成。我们不是要求用户提供手动标签以使整个数据集中的标签(面部标签)的不确定性最小,而是要求用户提供使他/她的查询结果的不确定性最小的标签(例如,“多少鲍勃和吉姆在一起出现过几次?”)。我们使用数据驱动的面部外观高斯过程模型将面部身份的概率估计值写入概率数据库中,该数据库随后可以通过查询回答来支持推理。重要的是,数据库增加了上下文约束(同一图像中的面部不能具有相同的标识,而同一轨道中的面部必须相同)。在真实照片集上的实验证明了该方法的有效性。

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