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A comparative study of DIGNET, average, complete, single hierarchical and k-means clustering algorithms in 2D face image recognition

机译:二维人脸图像识别中DIGNET,平均,完整,单层次和k均值聚类算法的比较研究

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The study in this paper belongs to a more general research of discovering facial sub-clusters in different ethnicity face databases. These new sub-clusters along with other metadata (such as race, sex, etc.) lead to a vector for each face in the database where each vector component represents the likelihood of participation of a given face to each cluster. This vector is then used as a feature vector in a human identification and tracking system based on face and other biometrics. The first stage in this system involves a clustering method which evaluates and compares the clustering results of five different clustering algorithms (average, complete, single hierarchical algorithm, k-means and DIGNET), and selects the best strategy for each data collection. In this paper we present the comparative performance of clustering results of DIGNET and four clustering algorithms (average, complete, single hierarchical and k-means) on fabricated 2D and 3D samples, and on actual face images from various databases, using four different standard metrics. These metrics are the silhouette figure, the mean silhouette coefficient, the Hubert test Γ coefficient, and the classification accuracy for each clustering result. The results showed that, in general, DIGNET gives more trustworthy results than the other algorithms when the metrics values are above a specific acceptance threshold. However when the evaluation results metrics have values lower than the acceptance threshold but not too low (too low corresponds to ambiguous results or false results), then it is necessary for the clustering results to be verified by the other algorithms.
机译:本文的研究属于在不同种族的面部数据库中发现面部亚类的更广泛的研究。这些新的子类别以及其他元数据(例如种族,性别等)会为数据库中的每个面孔生成一个向量,其中每个向量分量代表给定面孔参与每个聚类的可能性。然后,此矢量在基于面部和其他生物特征的人类识别和跟踪系统中用作特征矢量。该系统的第一阶段涉及一种聚类方法,该方法评估和比较五种不同聚类算法(平均,完全,单层次算法,k均值和DIGNET)的聚类结果,并为每个数据收集选择最佳策略。在本文中,我们使用四种不同的标准指标,在制作的2D和3D样本以及来自各种数据库的实际人脸图像上,展示了DIGNET和四种聚类算法(平均,完整,单层和k均值)的聚类结果的比较性能。 。这些指标是轮廓图,平均轮廓系数,休伯特检验Γ系数以及每个聚类结果的分类精度。结果表明,通常,当度量值高于特定的接受阈值时,DIGNET会比其他算法提供更可信赖的结果。但是,当评估结果指标的值低于接受阈值但又不太低(太低对应于模棱两可的结果或错误的结果)时,则有必要通过其他算法来验证聚类结果。

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