2023
DOI: 10.1109/access.2023.3268862
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An Efficient Method to Accurately Cluster Large Number of High Dimensional Facial Images

Abstract: Accurately clustering large, high dimensional datasets is a challenging problem in unsupervised learning. K-means is considered to be a fast, widely used and accurate centroid based data partitioning algorithm for spherical datasets. However, its non-determinism and heavy dependence on the selection of initial cluster centers along with vulnerability to noise make it a poor candidate for clustering large datasets with high dimensionality. To overcome these, we develop a novel, nature inspired, centroid based c… Show more

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