首页> 外文会议>Image and Graphics, 2004. Proceedings. Third International Conference on >Based on HMM and SVM multilayer architecture classifier for Chinese sign language recognition with large vocabulary
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Based on HMM and SVM multilayer architecture classifier for Chinese sign language recognition with large vocabulary

机译:基于HMM和SVM的多层体系结构分类器用于大词汇汉字识别。

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This paper has put forward a new architecture classifier method for Chinese sign language recognition (CSLR) to improve the performance of recognition. It is a signer-independent method, to recognize Chinese sign language with large vocabulary using multilayer architecture classifier and making use of the advantages both of HMM (hidden Markov model) and SVM (support vector machines). Because HMM is good at dealing with sequential inputs, while SVM shows superior performance in classifying with good generalization properties especially for limited samples. Therefore, they can be combined to yield a better and effective multilayer architecture classifier. We apply SVMs to resolve the uncertainties of the remaining which are in confusable sets after the first-stage HMM-based recognizer. And the confusable sets would be updated dynamically according to the results of a recognition performance to optimize the discernment performance next time. Experimental results proved that it is an effective method for CSLR with large vocabulary keywords sign language recognition, HMM, SVM, multilayer architecture classifier.
机译:提出了一种新的中文手语识别体系结构分类器方法,以提高识别性能。这是一种独立于签名者的方法,它使用多层体系结构分类器并利用HMM(隐马尔可夫模型)和SVM(支持向量机)的优势来识别大词汇量的中文手语。由于HMM擅长处理顺序输入,而SVM在分类方面表现出优异的性能,具有良好的泛化特性,尤其是对于有限的样本。因此,可以将它们组合以产生更好和有效的多层体系结构分类器。我们应用支持向量机来解决在基于HMM的第一阶段识别器之后其余部分的不确定性。并且可混淆集合将根据识别性能的结果进行动态更新,以优化下一次的识别性能。实验结果证明,它是一种针对大词汇量关键词手语识别,HMM,SVM,多层体系结构分类器的CSLR方法。

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