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Selecting Features Using the SFS in Conjunction with Vector Quantization

机译:与矢量量化结合使用SFS选择特征

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When discrete Hidden-Markov-Models (HMMs)-based recognition is performed, vector quantization (VQ) is used to transform continuous observations to sequences of discrete symbols. After VQ, the quantization error is not spread equally among the features. This impairs the feature significance, which is important when features are selected, e. g. by applying the Sequential Forward Selection (SFS). In this paper, we introduce a novel vector quantization (VQ) scheme for distributing the quantization error equally among the quantized dimensions of a feature vector. Afterwards, the proposed VQ scheme is used to apply the SFS on the features in on-line handwritten whiteboard note recognition based on discrete HMMs. In an experimental section, we show that the novel VQ scheme derives feature sets of almost half the size of the feature sets gained when standard VQ is used for quantization, while the performance stays the same.
机译:当执行基于离散隐马尔可夫模型(HMM)的识别时,矢量量化(VQ)用于将连续观察转换为离散符号序列。在VQ之后,量化误差不会在各个特征之间平均分配。这削弱了特征的重要性,这在选择特征时很重要。 G。通过应用顺序前向选择(SFS)。在本文中,我们介绍了一种新颖的矢量量化(VQ)方案,用于在特征矢量的量化维之间平均分配量化误差。然后,将提出的VQ方案用于基于离散HMM的在线手写白板笔记识别中的特征上应用SFS。在实验部分中,我们显示了新颖的VQ方案可以导出几乎是使用标准VQ进行量化时获得的特征集大小的一半的特征集,而性能却保持不变。

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