谱图预处理和增强对说话人识别性能的影响

A. Akinrinmade, E. Adetiba, J. Badejo, S. Popoola
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引用次数: 0

摘要

生物识别技术中的预处理是通过应用各种技术对输入数据或从数据中提取的特征进行微调以提高识别性能的过程。在大多数说话人识别文献中,研究人员对如何选择这些参数保持沉默。这项工作通过对谱图进行预处理和增强的几个实验来观察使用卷积神经网络对说话人识别性能的影响,系统地得出了这样的决定。首先,进行不同的预处理实验,依次改变一种预处理参数,保持其他预处理参数不变,最终将各种预处理方法的最佳参数组合在一起,得到精度最高的光谱图。第二部分为增强实验,将一系列图像改进技术应用于谱图,进一步提高初始精度。通过正确的预处理技术参数组合,说话人识别率提高了25%。谱图的增强使性能进一步提高了1%。实验结果表明,光谱图的维数可以显著降低,而整体性能的下降可以忽略不计,这可以提高存储和计算需求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Effect of Spectrogram Preprocessing and Enhancement on Speaker Recognition Performance
Preprocessing in biometrics is the process of fine-tuning input data or features extracted from data by applying varying techniques to improve recognition performance. In most speaker recognition literature, researchers are silent about how the decision for such parameters used was chosen. This work systematically arrived at such decisions by carrying out several experiments on preprocessing and enhancement of spectrograms to see the effect on speaker recognition performance using a Convolutional Neural Network. First, different preprocessing experiments were carried out, one preprocessing parameter, in turn, was varied while the others were kept constant and eventually, the best parameters for all the preprocessing methods were combined to produce a spectrogram that yielded the best accuracy. The second part consists of enhancement experiments, where a series of image improvement techniques were applied to the spectrograms to further improve the initial accuracy. With the right parametric combination of the preprocessing techniques, speaker recognition improved by 25%. Spectrogram enhancements improved performance by a further 1%. Experimental results revealed that the dimensionality of a spectrogram can be significantly reduced with a very negligible drop in the overall performance which can enhance storage and computational requirements.
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