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Face Recognition Experiments with Random Projection

机译:随机投影的人脸识别实验

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There has been a strong trend lately in face processing research away from geometric models towards appearance models. Appearance-based methods employ dimensionality reduction to represent faces more compactly in a low-dimensional subspace which is found by optimizing certain criteria. The most popular appearance-based method is the method of eigenfaces that uses Principal Component Analysis (PCA) to represent faces in a low-dimensional subspace spanned by the eigenvectors of the covariance matrix of the data corresponding to the largest eigenvalues (i.e., directions of maximum variance). Recently, Random Projection (RP) has emerged as a powerful method for dimensionality reduction. It represents a computationally simple and efficient method that preserves the structure of the data without introducing significant distortion. Despite its simplicity, RP has promising theoretical properties that make it an attractive tool for dimensionality reduction. Our focus in this paper is on investigating the feasibility of RP for face recognition. In this context, we have performed a large number of experiments using three popular face databases and comparisons using PCA. Our experimental results illustrate that although RP represents faces in a random, low-dimensional subspace, its overall performance is comparable to that of PCA while having lower computational requirements and being data independent.
机译:从几何模型到外观模型,最近在面部处理研究中出现了一种强劲的趋势。基于外观的方法使用降维来在低维子空间中更紧凑地表示人脸,这是通过优化某些条件找到的。最流行的基于外观的方法是特征脸方法,该方法使用主成分分析(PCA)来表示低维子空间中的面孔,该子空间由对应于最大特征值(即,方向的数据)的协方差矩阵的特征向量跨越最大方差)。最近,随机投影(RP)成为一种有效的降维方法。它代表了一种计算简单而有效的方法,可在不引入严重失真的情况下保留数据的结构。尽管RP简单,但它具有令人鼓舞的理论特性,使其成为降低尺寸的有吸引力的工具。本文的重点是研究RP在人脸识别中的可行性。在这种情况下,我们使用三个流行的人脸数据库进行了大量实验,并使用PCA进行了比较。我们的实验结果表明,尽管RP表示随机,低维子空间中的人脸,但其总体性能与PCA相当,但具有较低的计算要求和数据独立性。

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