首页> 外文期刊>International Journal of Wavelets, Multiresolution and Information Processing >WAVELET SUB-BAND BASED TEMPORAL FEATURES FOR ROBUST HINDI PHONEME RECOGNITION
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WAVELET SUB-BAND BASED TEMPORAL FEATURES FOR ROBUST HINDI PHONEME RECOGNITION

机译:基于小波子带的鲁棒的印度语语音识别时间特征

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摘要

This paper proposes the use of wavelet transform-based feature extraction technique for Hindi speech recognition application. The new proposed features take into account temporal as well as frequency band energy variations for the task of Hindi phoneme recognition. The recognition performance achieved by the proposed features is compared with the standard MFCC and 24-band admissible wavelet packet-based features using a linear discriminant function based classifier. To evaluate robustness of these features, the NOISEX database is used to add different types of noise into phonemes to achieve signal-to-noise ratios in the range of 20 dB to -5 dB. The recognition results show that under noisy background the proposed technique always achieves a better performance over MFCC-based features.
机译:本文提出了基于小波变换的特征提取技术在印地语语音识别中的应用。新提出的功能考虑到了印地语音素识别任务的时间以及频带能量变化。通过使用基于线性判别函数的分类器,将所提出的功能实现的识别性能与标准MFCC和基于24频段可允许的小波包的功能进行比较。为了评估这些功能的鲁棒性,使用NOISEX数据库将不同类型的噪声添加到音素中,以实现20 dB至-5 dB的信噪比。识别结果表明,在嘈杂的背景下,所提出的技术始终比基于MFCC的功能具有更好的性能。

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