基于跨类别知识迁移的稀疏表示分类器学习视觉类别

Ying Lu, Liming Chen, A. Saidi, Zhaoxiang Zhang, Yunhong Wang
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引用次数: 2

摘要

为了解决在有限的训练样本下学习有效视觉类别的难题,我们提出了一种新的基于稀疏表示分类器的迁移学习方法,即SparseTL,它将多个源类别的跨类别知识传播到目标类别。具体来说,我们使用与目标类别最正相关和最负相关的源类别对,在学习基于生成和判别稀疏表示的分类器时增强了目标分类任务。我们通过特征选择过程在特征向量中选择最具判别性的bin,进一步提高了分类器的判别能力。实验结果表明,该方法在保持高效运行时间的同时,在NUS-WIDE场景数据库上取得了与几种最先进的迁移学习算法相媲美的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning visual categories through a sparse representation classifier based cross-category knowledge transfer
To solve the challenging task of learning effective visual categories with limited training samples, we propose a new sparse representation classifier based transfer learning method, namely SparseTL, which propagates the cross-category knowledge from multiple source categories to the target category. Specifically, we enhance the target classification task in learning a both generative and discriminative sparse representation based classifier using pairs of source categories most positively and most negatively correlated to the target category. We further improve the discriminative ability of the classifier by choosing the most discriminative bins in the feature vector with a feature selection process. The experimental results show that the proposed method achieves competitive performance on the NUS-WIDE Scene database compared to several state of the art transfer learning algorithms while keeping a very efficient runtime.
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