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MORF: Multi-Objective Random Forests for face characteristic estimation

机译:Morf:面对面特征估计的多目标随机林

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In this paper we describe a technique for joint estimation of head pose and multiple soft biometrics from faces (Age, Gender and Ethnicity). Our proposed Multi-Objective Random Forests (MORF) framework is a unified model for the joint estimation of multiple characteristics that automatically adapts the measure of information gain used for evaluating the quality of weak learners. Since facial characteristics are related in the feature space, estimating all of them jointly can be beneficial as trees can learn to condition the estimation of some characteristics on others. We reformulate the splitting criterion of random trees in our multi-objective formulation and evaluate it on publicly available face characteristic estimation imagery. These preliminary experiments show promising results.
机译:在本文中,我们描述了一种用于从面部(年龄,性别和种族)的头部姿势和多种软生物识别的技术。我们提出的多目标随机森林(Morf)框架是一个统一的模型,用于联合估计多种特征,可自动适应用于评估弱学习者质量的信息增益的量度。由于面部特征在特征空间中相关,因此共同估计它们的所有可能是有益的,因为树木可以学会条件对他人的一些特征的估计。我们在我们的多目标配方中的随机树拆分标准,并在公开的面部特征估计图像上进行评估。这些初步实验表明了有希望的结果。

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