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A Semi-Supervised Approach to Perceived Age Prediction from Face Images

机译:一种基于人脸图像的年龄预测的半监督方法

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We address the problem of perceived age estimation from face images, and propose a new semi-supervised approach involving two novel aspects. The first novelty is an efficient active learning strategy for reducing the cost of labeling face samples. Given a large number of unla-beled face samples, we reveal the cluster structure of the data and propose to label cluster-representative samples for covering as many clusters as possible. This simple sampling strategy allows us to boost the performance of a manifold-based semi-supervised learning method only with a relatively small number of labeled samples. The second contribution is to take the heterogeneous characteristics of human age perception into account. It is rare to misjudge the age of a 5-year-old child as 15 years old, but the age of a 35-year-old person is often misjudged as 45 years old. Thus, magnitude of the error is different depending on subjects' age. We carried out a large-scale questionnaire survey for quantifying human age perception characteristics, and propose to utilize the quantified characteristics in the framework of weighted regression. Consequently, our proposed method is expressed in the form of weighted least-squares with a manifold regularizer, which is scalable to massive datasets. Through real-world age estimation experiments, we demonstrate the usefulness of the proposed method.
机译:我们解决了从面部图像感知年龄估计的问题,并提出了一种涉及两个新颖方面的新的半监督方法。第一个新颖之处是一种有效的主动学习策略,可减少标记面部样本的成本。给定大量不带表情的面部样本,我们揭示了数据的聚类结构,并建议标记聚类代表样本以覆盖尽可能多的聚类。这种简单的采样策略使我们仅使用相对较少数量的标记样本即可提高基于流形的半监督学习方法的性能。第二个贡献是考虑到人类年龄感知的异质性。很少将5岁儿童的年龄判断为15岁,但通常将35岁者的年龄判断为45岁。因此,误差的大小根据受试者的年龄而不同。我们进行了大规模的问卷调查以量化人类的年龄感知特征,并提出在加权回归的框架内利用量化的特征。因此,我们提出的方法以带有流形规则化器的加权最小二乘形式表示,该流形可扩展到大量数据集。通过实际年龄估算实验,我们证明了该方法的有效性。

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