连续语音识别的PNCC特征和FNN - MAP补偿技术

Christian Arcos Gordillo, M. Grivet, A. Alcaim
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引用次数: 3

摘要

语音识别系统最大的问题之一是由于不利条件导致的信号退化。这种情况通常会导致测试条件与训练数据不匹配,造成非线性失真。作者提出了一种直方图映射,然后通过神经网络技术(基于特征补偿)进行滤波,以尽量减少语音信号中噪声插入引起的不拟合。使用TIMIT和Noisex-92数据库对所提出的方法进行了评估。识别结果表明,直方图映射结合滤波与神经网络在倒谱系数领域的结合确实提高了识别率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
PNCC features and FNN - MAP compensation techniques for continuous speech recognition
One of the biggest problems of a speech recognition system is the signal degradation due to adverse conditions. Such situations usually lead to mismatch between the test conditions and the training data, caused by non-linear distortion. The authors propose a histogram mapping followed by a filter through neural networks techniques (based on the features compensation), in order to minimize the misfit caused by noise insertion in the speech signal. The proposed method has been evaluated using the TIMIT and Noisex-92 databases. Recognition results show that the histogram mapping combined with filter with neural networks in the field of the cepstral coefficients do improve the recognition rates.
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