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Design and Implementation of a Face Recognition System Using Fast PCA

机译:快速PCA的人脸识别系统的设计与实现

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High speed security and defense applications demand a quick decision for face recognition which requires a computationally time-efficient algorithm. These algorithms are primarily used to generate egien values. The generation of eigen values by employing decomposition method normally provides solution in O(n{sup}3) time whereas an orthogonalizational process, called fast principal component analysis (PCA) provides the same in O(n{sup}2) time. However, because of an orthonormalization convergence condition of Grams-Schmidt (GS) iterative process, fast PCA could result in non-deterministic state, especially for high resolution images. This could be associated with orthogonal vector space in GS, which causes non convergence of eigen solution under limited iteration. A modification has been proposed in fast PCA to generate eigen values for images including those at high resolution. By using these generated eigen values, an algorithm has been developed to optimize the error rate in face recognition systems under varying dimensionalities. The developed technique which provides deterministic, time efficient and low error rate solution could be a useful tool for high speed image recognition systems.
机译:高速安全和防御应用需要快速决定面部识别,这需要计算上节奏的算法。这些算法主要用于生成EGIEN值。通过采用分解方法来产生特征值,通常在O(n {sup} 3)的时间内提供解决方案,而称为快速主成分分析(PCA)的正交化过程在O(n {sup} 2)时间内提供相同的时间。然而,由于克施密(GS)迭代过程的正常化收敛条件,快速PCA可能导致非确定性状态,尤其是高分辨率图像。这可以与GS中的正交载体空间相关联,这导致在有限的迭代下不收敛尖端溶液。在快速PCA中提出了一种修改,以产生包括高分辨率的图像的特征值。通过使用这些生成的特征值,已经开发了一种算法以优化在不同维度下的面部识别系统中的错误率。提供确定性,时间高效和低差错率解决方案的开发技术可以是高速图像识别系统的有用工具。

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