The role of soft biometrics to enhance person recognition systems in unconstrained scenarios has not been extensively studied. Here, we explore the utility of the following modalities: gender, ethnicity, age, glasses, beard, and moustache. We consider two assumptions: 1) manual estimation of soft biometrics and 2) automatic estimation from two commercial off-the-shelf systems (COTS). All experiments are reported using the labeled faces in the wild (LFW) database. First, we study the discrimination capabilities of soft biometrics standalone. Then, experiments are carried out fusing soft biometrics with two state-of-the-art face recognition systems based on deep learning. We observe that soft biometrics is a valuable complement to the face modality in unconstrained scenarios, with relative improvements up to 40%/15% in the verification performance when using manual/automatic soft biometrics estimation. Results are reproducible as we make public our manual annotations and COTS outputs of soft biometrics over LFW, as well as the face recognition scores.
翻译:尚未广泛研究软生物测定系统在不受限制的情景下加强个人识别系统的作用。 在这里,我们探索了以下模式的效用:性别、种族、年龄、眼镜、胡子和胡子。我们考虑了两个假设:(1) 人工估算软生物测定,(2) 从两个商业现成系统(COTS)进行自动估算。所有实验都使用野生(LFW)数据库中贴标签的面孔进行报告。首先,我们独立研究软生物测定系统的歧视能力。然后,进行实验,在深层学习的基础上,用两个最先进的面部识别系统来引信软生物测定系统。我们发现软生物测定系统在不受限制的情景下,是对面部模式的宝贵补充,在使用人工/自动软生物测定时,核查业绩的相对改进高达40%/15%。当我们公布我们的人工说明和软生物测定数据时,以及面识别分数时,结果是可以重现的。