利用估计的算法准确率选择特征进行基于人脸的性别分类

Ivanna K. Timotius, Iwan Setyawan
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引用次数: 4

摘要

选择合适的特征对于构建一个好的分类器至关重要。本文旨在使用估计精度的算术平均值的方法来选择基于人脸的性别分类中使用的特征。在基于人脸的性别分类中,输入图像中有许多像素可能无助于分类过程,例如那些属于背景的像素。实验表明,特别是在方差较大的数据上,该方法的性能优于均值差分方法,最高可达2.14%。与不使用任何特征选择方法的分类器相比,在性别分类问题中实现基于均值估计的特征选择方法,准确率提高了7.86%。实验还表明,基于面部的性别分类依赖于图像中受试者长发的存在来做出决定。
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Using estimated arithmetic means of accuracies to select features for face-based gender classification
Selecting the appropriate features is essential in building a good classifier. This paper aims to use the approach of estimating the arithmetic means of accuracies (ameans) in selecting the features used in a face-based gender classification. In a face-based gender classification, there are many pixels of the input image that may not aid the classification process, such as those belonging to the background. The experiments show that this approach outperforms the approach based on mean difference especially on the data having relatively high variance by up to 2.14%. Compared to the classifier which does not use any feature selection approach, implementing the feature selection approach based on ameans estimation in a gender classification problem increases the accuracy by up to 7.86%. The experiments also show that the face-based gender classifications rely on the presence of long hair on subjects in the images to make their decision.
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