Semi-supervised locally discriminant projection for classification and recognition

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摘要

Semi-supervised dimensional reduction methods play an important role in pattern recognition, which are likely to be more suitable for plant leaf and palmprint classification, since labeling plant leaf and palmprint often requires expensive human labor, whereas unlabeled plant leaf and palmprint is far easier to obtain at very low cost. In this paper, we attempt to utilize the unlabeled data to aid plant leaf and palmprint classification task with the limited number of the labeled plant leaf or palmprint data, and propose a semi-supervised locally discriminant projection (SSLDP) algorithm for plant leaf and palmprint classification. By making use of both labeled and unlabeled data in learning a transformation for dimensionality reduction, the proposed method can overcome the small-sample-size (SSS) problem under the situation where labeled data are scant. In SSLDP, the labeled data points, combined with the unlabeled data ones, are used to construct the within-class and between-class weight matrices incorporating the neighborhood information of the data set. The experiments on plant leaf and palmprint databases demonstrate that SSLDP is effective and feasible for plant leaf and palmprint classification.

论文关键词:Manifold learning,Plant leaf classification,Palmprint recognition,Semi-supervised dimensional reduction,Semi-supervised locally discriminant projection

论文评审过程:Received 14 April 2010, Revised 10 November 2010, Accepted 11 November 2010, Available online 24 November 2010.

论文官网地址:https://doi.org/10.1016/j.knosys.2010.11.002