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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Minimum classification error learning for sequential data in the wavelet domain
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Minimum classification error learning for sequential data in the wavelet domain

机译:小波域中顺序数据的最小分类误差学习

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摘要

Wavelet analysis has found widespread use in signal processing and many classification tasks. Nevertheless, its use in dynamic pattern recognition have been much more restricted since most of wavelet models cannot handle variable length sequences properly. Recently, composite hidden Markov models which observe structured data in the wavelet domain were proposed to deal with this kind of sequences. In these models, hidden Markov trees account for local dynamics in a multiresolution framework, while standard hidden Markov models capture longer correlations in time. Despite these models have shown promising results in simple applications, only generative approaches have been used so far for parameter estimation. The goal of this work is to take a step forward in the development of dynamic pattern recognizers using wavelet features by introducing a new discriminative training method for this Markov models. The learning strategy relies on the minimum classification error approach and provides re-estimation formulas for fully non-tied models. Numerical experiments on phoneme recognition show important improvement over the recognition rate achieved by the same models trained using maximum likelihood estimation.
机译:小波分析已在信号处理和许多分类任务中得到广泛使用。然而,由于大多数小波模型无法正确处理可变长度序列,因此它在动态模式识别中的使用受到了更大的限制。最近,提出了在小波域中观察结构化数据的复合隐马尔可夫模型来处理这种序列。在这些模型中,隐马尔可夫树在多分辨率框架中说明了局部动态,而标准隐马尔可夫模型在时间上捕获了更长的相关性。尽管这些模型在简单的应用中已显示出令人鼓舞的结果,但到目前为止,仅使用生成方法进行参数估计。这项工作的目的是通过引入针对此Markov模型的新的判别训练方法,在使用小波特征的动态模式识别器的开发方面迈出一步。学习策略依赖于最小分类误差方法,并为完全不绑定的模型提供了重新估计公式。关于音素识别的数值实验表明,与使用最大似然估计训练的相同模型所实现的识别率相比,有了重要的改进。

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