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Semi-supervised deep rule-based approach for image classification

机译:基于半监督的图像分类的深度规则方法

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In this paper, a semi-supervised learning approach based on a deep rule-based (DRB) classifier is introduced. With its unique prototype-based nature, the semi-supervised DRB (SSDRB) classifier is able to generate human interpretable IF...THEN...rules through the semi-supervised learning process in a self organising and highly transparent manner. It supports online learning on a sample-by-sample basis or on a chunk-by-chunk basis. It is also able to perform classification on out-of-sample images. Moreover, the SSDRB classifier can learn new classes from unlabelled images in an active way becoming dynamically self-evolving. Numerical examples based on large-scale benchmark image sets demonstrate the strong performance of the proposed SSDRB classifier as well as its distinctive features compared with the "state-of-the-art" approaches. (C) 2018 Elsevier B.V. All rights reserved.
机译:本文介绍了一种基于深度规则(DRB)分类器的半监督学习方法。 凭借其独特的基于原型的自然,如果...然后通过半监督学习过程以自组织和高度透明的方式,可以生成人类可解释的人类可解释者。 它支持在线学习以逐个样本或逐块。 它还能够对样品外图像进行分类。 此外,SSDRB分类器可以以有效的方式从未标记的图像中学习新类,变得动态自我不断发展。 基于大规模基准图像集的数值示例展示了所提出的SSDRB分类器的强大性能以及与“最先进的”方法相比的其独特特征。 (c)2018 Elsevier B.v.保留所有权利。

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