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Analysis and evaluation of regression-based methods for facial pose classification

机译:基于回归的面部姿势分类方法的分析与评估

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摘要

Facial pose classification is one of the important steps in some pose invariant face recognition methods. Regression has been used for facial pose classification. In this paper, facial pose classification approaches using different types of regression are compared in terms of average classification accuracy and computation time. We also analyse the time complexity of regression-based approaches for pose classification. Performance of these approaches is also compared with other popular approaches in terms of classification accuracy. Experimental results on two publicly available face databases (PIE and FERET) show that the performance of regression-based approaches is comparable and generally outperform other approaches. Among regression-based methods, local linear regression with overlap outperforms other methods. In terms of computation time, global linear regression and nonlinear regression are comparable and better than others. We also analysed the performance of regression-based approaches after adding Gaussian noise with zero mean in test images and found that global linear regression and nonlinear regression-based approaches perform better than other.
机译:面部姿势分类是某些姿势不变的人脸识别方法中的重要步骤之一。回归已用于面部姿势分类。在本文中,比较了使用不同类型回归的面部姿势分类方法的平均分类精度和计算时间。我们还分析了基于回归的姿势分类方法的时间复杂度。在分类准确性方面,还将这些方法的性能与其他流行方法进行了比较。在两个公开可用的人脸数据库(PIE和FERET)上的实验结果表明,基于回归的方法的性能可比,并且通常优于其他方法。在基于回归的方法中,具有重叠的局部线性回归优于其他方法。在计算时间方面,全局线性回归和非线性回归具有可比性,并且比其他方法更好。在测试图像中添加具有零均值的高斯噪声后,我们还分析了基于回归的方法的性能,发现全局线性回归和基于非线性回归的方法的性能要优于其他方法。

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