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A modified cascaded neuro-computational model applied to recognition of connected spoken Japanese prefecture words

机译:一种改进的级联神经计算模型,用于识别日语口语中的已连接单词

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摘要

In this paper, a novel approach of connected spoken word recognition is proposed, based only on a relatively simple artificial neural network model. The model used is a modified version of the previously proposed cascaded neuro-computational model and has a three-layered network structure, where a non-linear metric to each of the second-layer units is newly introduced for performing effectively the pattern matching at the word-feature level. Simulations were conducted using connected speech data sets of a larger lexicon than those used in the previous works; the data sets were comprised of the naturally spoken strings, each string consisting of a varying number of 2-7 words selected from a total of 47 Japanese prefecture names. The simulation results show that the modified model yields the overall recognition performance, i.e., 95.2% in terms of the word accuracy rate, which is comparable to that (98.1%) obtained using a benchmark approach of hidden Markov model with embedded training.
机译:本文提出了一种仅基于一个相对简单的人工神经网络模型的连接口语单词识别的新方法。使用的模型是先前提出的级联神经计算模型的修改版本,并具有三层网络结构,其中新引入了针对每个第二层单元的非线性度量,以有效地执行模式匹配。字特征级别。使用比以前工作中使用的词典更大的词典的连接语音数据集进行了模拟。数据集由自然说话的字符串组成,每个字符串由从总共47个日本地名中选择的2-7个单词组成。仿真结果表明,改进后的模型产生了整体识别性能,即单词准确率达到95.2%,与使用隐马尔可夫模型的基准方法和嵌入式训练获得的识别率(98.1%)相当。

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