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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >HEp-2 cell pattern classification with discriminative dictionary learning
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HEp-2 cell pattern classification with discriminative dictionary learning

机译:区分性字典学习的HEp-2细胞模式分类

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摘要

The paper presents a supervised discriminative dictionary learning algorithm specially designed for classifying HEp-2 cell patterns. The proposed algorithm is an extension of the popular K-SVD algorithm: at the training phase, it takes into account the discriminative power of the dictionary atoms and reduces their intra-class reconstruction error during each update. Meanwhile, their inter-class reconstruction effect is also considered. Compared to the existing extension of K-SVD, the proposed algorithm is more robust to parameters and has better discriminative power for classifying HEp-2 cell patterns. Quantitative evaluation shows that the proposed algorithm outperforms general object classification algorithms significantly on standard HEp-2 cell patterns classifying benchmark1 and also achieves competitive performance on standard natural image classification benchmark.
机译:本文提出了一种专为分类HEp-2细胞模式而设计的监督式区别词典学习算法。所提出的算法是流行的K-SVD算法的扩展:在训练阶段,它考虑了字典原子的判别能力,并减少了每次更新过程中其类内重构误差。同时,还考虑了他们的阶级间重建效果。与现有的K-SVD扩展相比,该算法对参数更鲁棒,对HEp-2细胞模式分类具有更好的判别能力。定量评估表明,该算法在标准HEp-2细胞模式分类基准1上明显优于一般对象分类算法,在标准自然图像分类基准上也具有竞争优势。

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