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Connected-digit speaker-dependent speech recognition using a neural network with time-delayed connections

机译:使用具有延时连接的神经网络,实现与数字相关的说话人相关语音识别

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摘要

An analog neural network that can be taught to recognize stimulus sequences is used to recognize the digits in connected speech. The circuit computes in the analog domain, using linear circuits for signal filtering and nonlinear circuits for simple decisions, feature extraction, and noise suppression. An analog perceptron learning rule is used to organize the subset of connections used in the circuit that are specific to the chosen vocabulary. Computer simulations of the learning algorithm and circuit demonstrate recognition scores <99 % for a single-speaker connected-digit data base. There is no clock. The circuit is data driven, and there is no necessity for endpoint detection or segmentation of the speech signal during recognition. Training in the presence of noise provides noise immunity up to the trained level. For the speech problem studied, the circuit connections need only be accurate to about 3-b digitization depth for optimum performance. The algorithm used maps efficiently onto analog neutral network hardware.
机译:可以教一个识别刺激序列的模拟神经网络来识别所连接语音中的数字。该电路在模拟域中进行计算,使用线性电路进行信号滤波,使用非线性电路进行简单决策,特征提取和噪声抑制。模拟感知器学习规则用于组织在电路中使用的特定于所选词汇的连接子集。学习算法和电路的计算机仿真表明,单扬声器连接数字数据库的识别分数<99%。没有时钟。该电路是数据驱动的,在识别过程中无需进行端点检测或语音信号分段。在有噪声的情况下进行训练可提供达到训练水平的抗扰性。对于所研究的语音问题,电路连接只需要精确到大约3-b的数字化深度即可获得最佳性能。使用的算法可以有效地映射到模拟中性网络硬件。

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