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Leveraging implicit demographic information for face recognition using a multi-expert system

机译:利用多专家系统利用隐式人口统计信息进行人脸识别

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This paper describes a novel biometric architecture to implement unsupervised face recognition across varying demographics. The present proposal deals with ethnicity, gender and age, but the same strategy can be crafted for any mix of soft/hard biometrics, sensors, and/or methods. Our aim is not to explicitly distinguish demographic features of a subject (e.g., male vs. female). We rather aim at implicitly exploiting such information to improve the accuracy of subject identification. The role demographics plays in authentication has been reported by many recent studies. Exploiting demographic information can entail two possible strategies. Both require pre-determination of relevant demographic classes, that drive the choice of the best suited recognizer in a set of ad-hoc trained ones. In the first strategy, a human operator visually classifies demographic features of the subject to recognize, and runs the appropriate "strong" recognizer. In the second one, the identification of the most appropriate "strong" recognizer follows the results obtained from a set of upstream classifiers for soft biometrics. Both solutions are poorly suited to most real world applications, e.g., video - surveillance. Our architecture mediates recognition across different demographics without any pre-determination of demographic features. We still have different "strong" classifiers, each trained on a demographic class. The probe is submitted to all of them at once. A supervisor module estimates reliability of the single responses, and the most reliable result is returned. In this approach, classifier reliability is not a static feature, but it is estimated for each probe. The proposed multiple-expert system provides similar performance to pre-determination of demographics. Experimental results show higher flexibility, efficacy and interoperability. We also focus on interoperability across face datasets by adopting EGA (Ethnicity, Gender and Age) database as a benchmark, which is obtained by combining images from several publicly available face datasets.
机译:本文介绍了一种新颖的生物识别体系结构,可在不同的人口统计数据中实现无监督的面部识别。本提案涉及种族,性别和年龄,但可以针对软/硬生物识别技术,传感器和/或方法的任何组合设计相同的策略。我们的目的不是明确区分受试者的人口统计学特征(例如,男性与女性)。我们宁愿旨在隐式地利用此类信息来提高主题识别的准确性。最近的许多研究报告了人口统计学在身份验证中的作用。利用人口统计信息可能需要两种可能的策略。两者都需要预先确定相关的人口统计类别,从而推动在一组经过专门培训的识别器中选择最合适的识别器。在第一种策略中,操作员在视觉上对要识别的对象的人口统计特征进行分类,并运行适当的“强”识别器。在第二个中,最合适的“强”识别器的标识遵循从一组用于软生物识别的上游分类器获得的结果。两种解决方案都不适用于大多数实际应用,例如视频监视。我们的架构可在不对人口特征进行任何预先确定的情况下调解跨不同人口统计学的认知。我们仍然有不同的“强”分类器,每个分类器都按人口统计类别进行训练。探针将立即提交给所有这些探针。主管模块估计单个响应的可靠性,并返回最可靠的结果。在这种方法中,分类器的可靠性不是静态特征,而是针对每个探针进行估计的。拟议的多专家系统提供的性能与人口统计的预先确定类似。实验结果显示出更高的灵活性,有效性和互操作性。我们还通过采用EGA(种族,性别和年龄)数据库作为基准来关注跨人脸数据集的互操作性,该数据库是通过合并来自多个可公开获取的人脸数据集的图像而获得的。

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