Summary: | The use of local facial features is frequently adopted in many Nearest Neighbours (NN) approaches in face classification. These collections features are then individually classified against labelled features resembling an ensembles of simpler learners to improve prediction. In this paper, a new variant of ensembles of NN is proposed for classification of local features, namely ensembles of Large Margin Nearest Neighbour (soft-LMNN) classifier. Likewise, we proposea way to arrange local feature called Grouped Lateral Patch (GLP) to overcome the limitations of Single Lateral Patch (SLP). Since the performance of any NN method varies depending on the type of distance metrics used, we investigate the performance of ensembles of NN classifiers when Euclidean, Cosine, Manhattan, Chebychev and Minkowski distance metrics are used. From various experiments conducted, we found that soft-LMNN variant delivers best classification performance when compared against other NN variants, while Cosine and Manhattan distance metric performs best when used with locally normalized Gabor feature vectors and pixel intensity respectively. Our results also demonstrate that in general, ensembles of NN performs face classification nearly 14% more accurate than Support Vector Machine. © 2016 IEEE.
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