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Extremely dense face registration: Comparing automatic landmarking algorithms for general and ethno-gender models

机译:极度密集的人脸配准:比较一般和种族性别模型的自动界标算法

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Registration is a very important step in object recognition. Accurate detection of the eye centers, eye corners, mouth and nose are critical for face recognition and more broadly, for face processing. In this work, we have evaluated three techniques, namely AAM, Stacked ASM and CLM, for automatic detection of landmarks under the problem of extremely dense registration scheme for the face. Further we compare the efficacy of these techniques for the general case and for the specific case based on ethnicity and gender. It is shown that the performance of STASM and CLM are comparable and better than AAM. It is also shown that, in general, models trained on ethno-gender groups perform better than the models trained on general exemplars.
机译:注册是对象识别中非常重要的一步。准确检测眼中心,眼角,嘴巴和鼻子对于面部识别至关重要,更广泛地说,对于面部处理至关重要。在这项工作中,我们评估了三种技术,即AAM,Stacked ASM和CLM,用于在人脸的极高配准方案下自动检测地标。此外,我们根据种族和性别比较了这些技术对一般情况和特定情况的功效。结果表明,STASM和CLM的性能可比并且优于AAM。还表明,一般而言,在种族性别群体上训练的模型比在一般样本上训练的模型表现更好。

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