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Facial Landmarking: Comparing Automatic Landmarking Methods with Applications in Soft Biometrics

机译:面部地标:将自动地标方法与软生物识别中的应用进行比较

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Registration is a critical step in computer-based image analysis. In this work we examine the effects of registration in face-based soft-biometrics. This form of soft-biometrics, better termed as facial analytics, takes an image containing a face and returns attributes of that face. In this work, the attributes of focus are gender and race. Automatic generation of facial analytics relies on accurate registration. Hence, this work evaluates three techniques for dense registration, namely AAM, Stacked ASM and CLM. Further, we evaluate the influence of facial landmark mis-localization, resulting from these techniques, on gender classification and race determination. To the best of our knowledge, such an evaluation of landmark mis-localization on soft biometrics, has not been conducted. We further demonstrate an effective system for gender and race classification based on dense landmarking and multi-factored principle components analysis. The system performs well against a multi-age face dataset for both gender and race classification.
机译:配准是基于计算机的图像分析中的关键步骤。在这项工作中,我们研究了基于面部的软生物统计学中配准的影响。这种形式的软生物测定法,更好地称为面部分析,它获取包含面部的图像并返回该面部的属性。在这项工作中,重点的属性是性别和种族。面部分析的自动生成依赖于准确的注册。因此,这项工作评估了三种用于密集注册的技术,即AAM,堆叠式ASM和CLM。此外,我们评估了由这些技术导致的面部标志性错误定位对性别分类和种族确定的影响。据我们所知,尚未对软生物识别技术上的标志性错误定位进行评估。我们进一步展示了基于密集标志性建筑和多因素主成分分析的有效性别和种族分类系统。该系统针对性别和种族分类的多年龄面孔数据集表现良好。

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