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Web image mining towards universal age estimator

机译:网页映像挖掘普遍年龄估计

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In this paper, we present an automatic web image mining system towards building a universal human age estimator based on facial information, which is applicable to all ethnic groups and various image qualities. First, a large (391k) yet noisy human aging image dataset is crawled from the photo sharing website Flickr and Google image search engine based on a set of human age related text queries. Then, within each image, several human face detectors of different implementations are used for robust face detection, and all the detected faces with multiple responses are considered as the multiple instances of a bag (image). An outlier removal step with Principal Component Analysis further refines the image set to about 220k faces, and then a robust multi-instance regressor learning algorithm is proposed to learn the kernel-regression based human age estimator under the scenarios with possibly noisy bags. The proposed system has the following characteristics: 1) no manual human age labeling process is required, and the age information is automatically obtained from the age related queries, 2) the derived human age estimator is universal owing to the diversity and richness of Internet images and thus has good generalization capability, and 3) the age estimator learning process is robust to the noises existing in both Internet images and corresponding age labels. This automatically derived human age estimator is extensively evaluated on three popular benchmark human aging databases, and without taking any images from these benchmark databases as training samples, comparable age estimation accuracies with the state-of-the-art results are achieved.
机译:在本文中,我们提出了一种自动网页拍摄系统,旨在基于面部信息构建普遍的人类年龄估计,这适用于所有族群和各种形象品质。首先,大(<391K)但是嘈杂的人类老化图像数据集基于一组人类年龄相关文本查询,从照片共享网站Flickr和Google Image搜索引擎爬出。然后,在每个图像内,不同实现的几个人面检测器用于鲁棒面检测,并且具有多个响应的所有检测到的面被认为是袋子(图像)的多个实例。具有主成分分析的异常拆除步骤进一步将图像设置为大约220k的脸部,然后提出了一种稳健的多实例回归学习算法,以便在具有可能嘈杂的袋子的情况下学习基于内核回归的人类年龄估计。所提出的系统具有以下特点:1)不需要手动人类年龄标签过程,并且年龄信息自动获得与年龄相关查询,2)衍生的人类年龄估计人因互联网图像的多样性和丰富性而普遍普遍因此,具有良好的泛化能力,并且3)年龄估计学学习过程对互联网图像和相应的年龄标签存在的噪声是强大的。这种自动衍生的人类年龄估计员在三个受欢迎的基准人类老化数据库中广泛评估,并且在不将这些基准数据库中的任何图像作为训练样本,实现了与最先进的结果的可比年龄估计准确性。

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