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Gender Classification Based on Integration of Multiple Classifiers Using Various Features of Facial and Neck Images

机译:基于面部和颈部图像多种特征的多个分类器集成的性别分类

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摘要

To reduce the rate of error in gender classification, we propose the use of an integration framework that uses conventional facial images along with neck images. First, images are separated into facial and neck regions, and features are extracted from monochrome, color, and edge images of both regions. Second, we use Support Vector Machines (SVMs) to classify the gender of each individual feature. Finally, we reclassify the gender by considering the six types of distances from the optimal separating hyperplane as a 6-dimensional vector. Experimental results show a 28.4% relative reduction in error over the performance baseline of the monochrome facial image approach, which until now had been considered to have the most accurate performance.
机译:为了降低性别分类中的错误率,我们建议使用集成框架,该框架使用常规的面部图像和颈部图像。首先,将图像分为面部和颈部区域,并从两个区域的单色,彩色和边缘图像中提取特征。其次,我们使用支持向量机(SVM)对每个单个特征的性别进行分类。最后,我们通过考虑与最佳分离超平面的六种距离作为6维向量来对性别进行重新分类。实验结果表明,与单色面部图像方法的性能基线相比,误差相对减少了28.4%,而该方法迄今为止一直被认为具有最准确的性能。

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