Using Feature Combination and Statistical Resampling for Accurate Face Recognition Based on Frequency Domain Representation of Facial Asymmetry

S. Mitra, M. Savvides
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Abstract

This paper explores the efficiency of facial asymmetry in face identification tasks using a frequency domain representation. Satisfactory results are obtained for two different tasks, namely, human identification under extreme expression variations and expression classification, using a PCA-type classifier on a database with 55 individuals, which establishes the robustness of these measures to intra-personal distortions. Furthermore, we demonstrate that it is possible to improve upon these results significantly by simple means such as feature set combination and statistical resampling methods like bagging and random subspace method (RSM) using the same PCA-type base classifier. This even succeeds in attaining perfect classification results with 100% accuracy in some cases. Moreover, both these methods require few additional resources (computing time and power), hence they are useful for practical applications as well and help establish the effectiveness of frequency domain representation of facial asymmetry in automatic identification tasks
基于人脸不对称频域表示的特征组合和统计重采样精确识别
本文利用频域表示探讨了人脸识别任务中人脸不对称性的效率。在两个不同的任务中,即极端表达变化下的人类识别和表达分类,使用pca类型的分类器在55个个体的数据库上获得了令人满意的结果,这建立了这些措施对个人内部扭曲的鲁棒性。此外,我们证明了可以通过简单的方法显著改善这些结果,例如特征集组合和统计重采样方法,如bagging和随机子空间方法(RSM),使用相同的pca类型基础分类器。在某些情况下,这甚至可以获得100%准确率的完美分类结果。此外,这两种方法都需要很少的额外资源(计算时间和功率),因此它们在实际应用中也很有用,并有助于在自动识别任务中建立面部不对称的频域表示的有效性
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