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首页> 外文期刊>Journal of signal processing systems for signal, image, and video technology >Iterative Semi-Supervised Sparse Coding Model for Image Classification
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Iterative Semi-Supervised Sparse Coding Model for Image Classification

机译:图像分类的迭代半监督稀疏编码模型

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摘要

The scarcity of labeled data and the high-dimensionality of multimedia data are the major obstacles for image classification. Due to these concerns, this paper proposes a novel algorithm, Iterative Semi-supervised Sparse Coding (ISSC), which jointly explores the advantages of both sparse coding and graph-based semi-supervised learning in order to learn discriminative sparse codes as well as an effective classification function. The ISSC algorithm fully exploits initial labels and the subsequently predicted labels for sparse codes learning. At the same time, during the graph-based semi-supervised learning stage, similarity matrix is firstly adjusted through the latest learned sparse codes, and then is utilized to obtain a better classification function. To make the ISSC scale up to larger databases, a novel online dictionary learning algorithm is also proposed to update the dictionary incrementally. In particular, by solving quadratic optimization, the ISSC approach can give rise to closed-form solutions for sparse codes and classification function, respectively. It has been extensively evaluated over three widely used datasets for image classification task. The experimental results in terms of classification accuracy demonstrate the proposed ISSC approach can achieve significant performance improvements with respect to the state-of-the-arts.
机译:标记数据的稀缺性和多媒体数据的高维度性是图像分类的主要障碍。由于这些问题,本文提出了一种新颖的算法-迭代半监督稀疏编码(ISSC),该算法联合探索了稀疏编码和基于图的半监督学习的优点,以学习判别式稀疏代码以及有效的分类功能。 ISSC算法完全利用初始标签和随后预测的标签进行稀疏代码学习。同时,在基于图的半监督学习阶段,首先通过最新学习的稀疏码对相似度矩阵进行调整,然后利用相似度矩阵获得更好的分类功能。为了使ISSC扩展到更大的数据库,还提出了一种新颖的在线词典学习算法来逐步更新词典。特别是,通过求解二次优化,ISSC方法可以分别产生稀疏代码和分类函数的闭式解决方案。它已被广泛评估用于图像分类任务的三个广泛使用的数据集。关于分类准确性的实验结果表明,相对于最新技术,所提出的ISSC方法可以显着提高性能。

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