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Support Vector Guided Dictionary Learning

机译:支持矢量引导词典学习

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Discriminative dictionary learning aims to learn a dictionary from training samples to enhance the discriminative capability of their coding vectors. Several discrimination terms have been proposed by assessing the prediction loss (e.g., logistic regression) or class separation criterion (e.g., Fisher discrimination criterion) on the coding vectors. In this paper, we provide a new insight on discriminative dictionary learning. Specifically, we formulate the discrimination term as the weighted summation of the squared distances between all pairs of coding vectors. The discrimination term in the state-of-the-art Fisher discrimination dictionary learning (FDDL) method can be explained as a special case of our model, where the weights are simply determined by the numbers of samples of each class. We then propose a parameterization method to adap-tively determine the weight of each coding vector pair, which leads to a support vector guided dictionary learning (SVGDL) model. Compared with FDDL, SVGDL can adaptively assign different weights to different pairs of coding vectors. More importantly, SVGDL automatically selects only a few critical pairs to assign non-zero weights, resulting in better generalization ability for pattern recognition tasks. The experimental results on a series of benchmark databases show that SVGDL outperforms many state-of-the-art discriminative dictionary learning methods.
机译:鉴别性词典学习旨在从训练样本中学习词典,以提高其编码载体的判别能力。通过评估编码载体上的预测损失(例如,逻辑回归)或类别分离标准(例如,Fisher判别标准)来提出了几种歧视项。在本文中,我们对鉴别性词典学习提供了新的洞察力。具体地,我们将歧视项作为所有编码向量之间的平方距离的加权总和制定。可以将最先进的Fisher辨别词典学习(FDDL)方法中的歧视项作为我们模型的特殊情况,其中权重简单地由每个类的样本的数量决定。然后,我们提出了一种参数化方法来适应地确定每个编码矢量对的权重,这导致支持向量引导字典学习(SVGDL)模型。与FDDL相比,SVGDL可以自适应地将不同的权重自适应分配给不同的编码向量。更重要的是,SVGDL仅自动选择几个关键对以分配非零权重,从而导致更好的模式识别任务的泛化能力。一系列基准数据库的实验结果表明,SVGDL优于许多最先进的鉴别性词典学习方法。

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