Human Face Detection Improvement using Subclass Learning and Low Variance Directions

Soumaya Nheri
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Abstract

In order to increase the face detection rate in complicated images, a novel approach is presented in this work. The suggested method seeks to improve accuracy by utilizing low-variance directions for data projection and one-class subclass learning. Previous studies have demonstrated that taking into account the data carried by low-variance directions enhances the performance of models in one-class classification. For dispersion data, subclass learning is extremely successful. To evaluate the effectiveness of our subclass method, we conducted a comparison between our proposed approach and other one-class classifiers on multiple face detection datasets. Results reveal that the suggested method performs better than other methods, demonstrating its potential to develop face identification technologies.
基于子类学习和低方差方向的人脸检测改进
为了提高复杂图像中的人脸检测率,本文提出了一种新的人脸检测方法。该方法旨在通过利用低方差方向进行数据投影和单类子类学习来提高准确性。以往的研究表明,考虑低方差方向携带的数据可以提高模型在单类分类中的性能。对于分散数据,子类学习是非常成功的。为了评估我们的子类方法的有效性,我们将我们提出的方法与其他单类分类器在多个人脸检测数据集上进行了比较。结果表明,该方法的性能优于其他方法,显示了其发展人脸识别技术的潜力。
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