基于cnn的噪声鲁棒样例查询语音词检测瓶颈特征

Hyungjun Lim, Younggwan Kim, Yoonhoe Kim, Hoirin Kim
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引用次数: 9

摘要

本文研究了在实际应用中不可避免的背景噪声存在下的按例查询语音词检测问题。为了解决这个问题,我们提出了一个基于卷积神经网络(CNN)的瓶颈特征表示关键字。在CNN上附加瓶颈层的组合网络是在《华尔街日报》(WSJ)数据库上进行训练的。最后,基于动态时间规整(DTW)的模板匹配,测量从瓶颈层提取的特征矩阵与测试特征矩阵之间的距离。在Aurora 4数据库上用等错误率(EER)对该方法进行了评价。一系列实验结果表明,该方法在噪声环境下的性能明显优于基线系统,平均相对等误差率(EER)提高30%以上。
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CNN-based bottleneck feature for noise robust query-by-example spoken term detection
This paper addresses the problem of query-by-example spoken term detection (QbE-STD) in the presence of background noises that are inevitable in real applications. To deal with this, we propose a convolutional neural network (CNN) based bottleneck feature representation for a keyword. A combined network that is made by attaching a bottleneck layer on top of a CNN is trained on Wall Street Journal (WSJ) database. Finally, dynamic time warping (DTW) based template matching is performed to measure the distance between enrollment and test feature matrices which are extracted from the bottleneck layer. The proposed method is evaluated in terms of equal error rate (EER) on Aurora 4 Database. A series of experimental results verify that the proposed method performs significantly better than the baseline system in noisy environments shows over 30% relative equal error rate (EER) improvement in average.
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