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Sampling Representative Examples for Dimensionality Reduction and Recognition – Bootstrap Bumping LDA

机译:取样代表实例,用于减少和识别 - Bootstrap Bumping LDA

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We present a novel method for dimensionality reduction and recognition based on Linear Discriminant Analysis (LDA), which specifically deals with the Small Sample Size (SSS) problem in Computer Vision applications. Unlike the traditional methods, which impose specific assumptions to address the SSS problem, our approach introduces a variant of bootstrap bumping technique, which is a general framework in statistics for model search and inference. An intermediate linear representation is first hypothesized from each bootstrap sample. Then LDA is performed in the reduced subspace. Lastly, the final model is selected among all hypotheses for the best classification. Experiments on synthetic and real datasets demonstrate the advantages of our Bootstrap Bumping LDA (BB-LDA) approach over the traditional LDA based methods.
机译:我们提出了一种基于线性判别分析(LDA)的重维减少和识别方法,该方法在计算机视觉应用中特别涉及小型样本大小(SSS)问题。与传统方法不同,这一方法强加了解决SSS问题的特定假设,我们的方法介绍了引导突破技术的变体,这是模型搜索和推断的统计统计框架。中间线性表示首先从每个引导样本上假设。然后LDA在减少的子空间中执行。最后,在最佳分类的所有假设中选择了最终模型。合成和实时数据集的实验证明了我们的自举颠簸LDA(BB-LDA)对传统的基于LDA方法的优势。

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