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English Phrase Speech Recognition Based on Continuous Speech Recognition Algorithm and Word Tree Constraints

机译:英语短语语音识别基于连续语音识别算法和字树约束

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This paper combines domestic and international research results to analyze and study the difference between the attribute features of English phrase speech and noise to enhance the short-time energy, which is used to improve the threshold judgment sensitivity; noise addition to the discrepancy data set is used to enhance the recognition robustness. The backpropagation algorithm is improved to constrain the range of weight variation, avoid oscillation phenomenon, and shorten the training time. In the real English phrase sound recognition system, there are problems such as massive training data and low training efficiency caused by the super large-scale model parameters of the convolutional neural network. To address these problems, the NWBP algorithm is based on the oscillation phenomenon that tends to occur when searching for the minimum error value in the late training period of the network parameters, using the K-MEANS algorithm to obtain the seed nodes that approach the minimal error value, and using the boundary value rule to reduce the range of weight change to reduce the oscillation phenomenon so that the network error converges as soon as possible and improve the training efficiency. Through simulation experiments, the NWBP algorithm improves the degree of fitting and convergence speed in the training of complex convolutional neural networks compared with other algorithms, reduces the redundant computation, and shortens the training time to a certain extent, and the algorithm has the advantage of accelerating the convergence of the network compared with simple networks. The word tree constraint and its efficient storage structure are introduced, which improves the storage efficiency of the word tree constraint and the retrieval efficiency in the English phrase recognition search.
机译:本文结合了国内和国际研究成果,分析和研究英语短语语音和噪声的属性特征之间的差异,以提高短时间能量,用于提高阈值判断敏感性;对差异数据集的噪声除外用于增强识别鲁棒性。改进了反向化算法以限制重量变化范围,避免振荡现象,并缩短训练时间。在真正的英语短语声音识别系统中,存在诸如卷积神经网络的超大大规模模型参数引起的大规模培训数据和低训练效率等问题。为了解决这些问题,NWBP算法基于振荡现象,当在网络参数的后期训练期间搜索最小误差值时,趋于发生的振荡现象,使用K-means算法获取接近最小值的种子节点误差值,并使用边值范值规则减少重量变化范围以减少振荡现象,使网络错误尽快收敛并提高培训效率。通过仿真实验,与其他算法相比,NWBP算法提高了复杂卷积神经网络训练中的拟合和收敛速度,降低了冗余计算,并在一定程度上缩短了训练时间,并且该算法具有优势与简单网络相比,加速网络的收敛性。介绍了文字约束及其有效的存储结构,从而提高了英语短语识别搜索中的字树约束的存储效率和检索效率。

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