首页> 外文期刊>International Journal of Pattern Recognition and Artificial Intelligence >Improving Accuracy in Face Recognition Proposal to Create a Hybrid Photo Indexing Algorithm, Consisting of Principal Component Analysis and a Triangular Algorithm (PCAaTA)
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Improving Accuracy in Face Recognition Proposal to Create a Hybrid Photo Indexing Algorithm, Consisting of Principal Component Analysis and a Triangular Algorithm (PCAaTA)

机译:提高人脸识别提案的准确性,以创建由主成分分析和三角算法(PCAaTA)组成的混合照片索引算法

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摘要

Accurate face recognition is today vital, principally for reasons of security. Current methods employ algorithms that index (classify) important features of human faces. There are many current studies in this field but most current solutions have significant limitations. Principal Component Analysis (PCA) is one of the best facial recognition algorithms. However, there are some noises that could affect the accuracy of this algorithm. The PCA works well with the support of preprocessing steps such as illumination reduction, background removal and color conversion. Some current solutions have shown results when using a combination of PCA and preprocessing steps. This paper proposes a hybrid solution in face recognition using PCA as the main algorithm with the support of a triangular algorithm in face normalization in order to enhance indexing accuracy. To evaluate the accuracy of the proposed hybrid indexing algorithm, the PCAaTA is tested and the results are compared with current solutions.
机译:如今,准确的人脸识别至关重要,主要是出于安全考虑。当前的方法采用对人脸的重要特征进行索引(分类)的算法。目前在该领域有许多研究,但是大多数当前解决方案都有明显的局限性。主成分分析(PCA)是最好的面部识别算法之一。但是,有些噪声可能会影响该算法的准确性。 PCA在预处理步骤(例如减少照明,去除背景和颜色转换)的支持下效果很好。当结合使用PCA和预处理步骤时,一些当前解决方案已显示出结果。本文提出了一种以PCA为主要算法的混合人脸识别解决方案,并在三角归一化算法的支持下提高了索引的准确性。为了评估所提出的混合索引算法的准确性,对PCAaTA进行了测试,并将结果与​​当前解决方案进行了比较。

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