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Gender classification using automatically detected and aligned 3D ear range data

机译:使用自动检测和对齐的3D耳范围数据进行性别分类

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Gender classification received attention due to its use in many applications. In this paper, the potential of using the 3D shape of the ear for gender recognition is established. We demonstrate the first attempt for gender classification from 3D ear data and evaluate different algorithms using automatically detected and aligned ears. Experiments were conducted on the University of Notre Dame (UND) database collections F and J2 which contain images with large occlusion and pose variations. It is observed that the use of Histogram of Indexed Shapes (HIS) feature along with Support Vector Machine (SVM) yields an average classification accuracy of 92.94%, which is superior to the state-of-the-art for gender classification from 2D ear images, and shows that the 3D shape of the ear comprises rich gender information.
机译:由于其在许多应用中使用,性别分类受到关注。在本文中,建立了使用耳朵3D形状进行性别识别的潜力。我们展示了从3D耳数据中进行性别分类的第一次尝试,并使用自动检测和对齐的耳朵评估不同的算法。实验是在Notre Dame大学(UND)数据库集合F和J2上进行的实验,其中包含具有大遮挡和姿势变化的图像。观察到,使用索引形状(HIS)特征的直方图以及支持向量机(SVM)产生92.94%的平均分类精度,其优于2D耳的性别分类图像,并表明耳朵的3D形状包括丰富的性别信息。

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