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Multiple Description Pattern Analysis: Robustness to Misclassification Using Local Discriminant Frame Expansions

机译:多描述模式分析:使用局部判别框架扩展的错误分类的鲁棒性

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摘要

In this paper, a source coding model for learning multiple concept descriptions of data is proposed. Our source coding model is based on the concept of transmitting data over multiple channels, called multiple description (MD) coding. In particular, frame expansions have been used in our MD coding models for pattern classification. Using this model, there are several interesting properties within a class of multiple classifier algorithms that share with our proposed scheme. Generalization of the MD view under an extension of local discriminant basis towards the theory of frames allows the formulation of a generalized class of low-complexity learning algorithms applicable to high-dimensional pattern classification. To evaluate this approach, performance results for automatic target recognition (ATR) are presented for synthetic aperture radar (SAR) images from the MSTAR public release data set. From the experimental results, our approach outperforms state-of-the-art methods such as conditional Gaussian signal model, Adaboost, and ECOC-SVM.
机译:本文提出了一种用于学习数据的多个概念描述的源编码模型。我们的源编码模型基于在多个通道上传输数据的概念,称为多描述(MD)编码。特别是,在我们的MD编码模型中已将帧扩展用于模式分类。使用此模型,在与我们提出的方案共享的多个分类器算法类别中,存在几个有趣的属性。在局部判别基础上向框架理论扩展时,MD视图的泛化允许制定适用于高维模式分类的低复杂度学习算法的广义类。为了评估这种方法,针对MSTAR公共发布数据集的合成孔径雷达(SAR)图像,给出了自动目标识别(ATR)的性能结果。从实验结果来看,我们的方法优于诸如条件高斯信号模型,Adaboost和ECOC-SVM之类的最新方法。

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