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Dimensionality reduction for enhanced 3D face recognition

机译:降维以增强3D人脸识别

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摘要

This paper presents a novel approach for improving the accuracy of existing 3D face recognition algorithms via the dimensionality reduction of the feature space. In particular, two feature selection methods based on information criteria are selected and benchmarked herein (i.e. the minimum Redundancy — Maximum Relevance (mRMR) and the Conditional Mutual Information with Nearest Neighbors estimate (CMINN)), on top of the geometric features provided by a state-of-the-art 3D face recognition algorithm. Experimental validation on a proprietary dataset of 53 subjects illustrates significant advances in performance of the proposed method when compared to the reference 3D face recognition system. The repeated computations on several non-overlapping, randomly selected, training and test sets from the ensemble of frames, give evidence for successful classification of the subjects based on a significantly reduced subset of features with smaller cardinality, as obtained by CMINN. Finally, the high recognition capacity of this small fraction of biometric features is validated by the convergence of both methods to the same level of classification accuracy as the size of the utilized feature subset increases.
机译:本文提出了一种新颖的方法,通过减少特征空间的维数来提高现有3D人脸识别算法的准确性。特别是,在由信息提供的几何特征的基础上,选择了两种基于信息标准的特征选择方法并进行了基准测试(即最小冗余-最大相关性(mRMR)和具有最近邻居的条件互信息估计(CMINN))。最新的3D人脸识别算法。与参考3D人脸识别系统相比,对53位受试者的专有数据集进行的实验验证表明,该方法在性能方面取得了重大进步。对来自帧集合的几个非重叠,随机选择,训练和测试集的重复计算,为基于CMINN获得的具有较小基数的特征的显着减少的子集的成功分类提供了证据。最后,随着所利用的特征子集的大小增加,这两种方法的收敛性都达到了相同级别的分类精度,从而验证了这一小部分生物特征的高识别能力。

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