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Hierarchical Discriminant Regression for Incremental and Real-Time Image Classification

机译:用于增量和实时图像分类的分层判别回归

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摘要

This paper presents an incremental algorithm for classification problems using hierarchical discriminant analysis for real-time learning and testing applications. Virtual labels are automatically formed by clustering in the output space. These virtual labels are used for the process of deriving discriminating features in the input space. This procedure is performed recursively in a coarse-to-fine fashion resulting in a tree, called incremental hierarchical discriminating regression (IHDR) method. Embedded in the tree is a hierarchical probability distribution model used to prune unlikely cases. A sample size dependent negative-log-likelihood (NLL) metric is used to deal with large-sample size cases, small-sample size cases, and unbalanced-sample size cases, measured among different internal nodes of the IHDR algorithm. We report the experimental results of the proposed algorithm for an OCR classification problem and an image orientation classification problem.
机译:本文提出了一种用于分类问题的增量算法,该算法使用分层判别分析进行实时学习和测试。虚拟标签是通过在输出空间中聚类自动形成的。这些虚拟标签用于在输入空间中导出区分特征的过程。此过程以从粗到精的方式递归执行,从而生成一棵树,称为增量层次鉴别回归(IHDR)方法。嵌入在树中的是用于修剪不太可能的情况的分层概率分布模型。样本大小相关的负对数似然(NLL)度量用于处理在IHDR算法的不同内部节点之间测量的大样本大小案例,小样本大小案例和不平衡样本大小案例。我们报告提出的算法的OCR分类问题和图像方向分类问题的实验结果。

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