Hybrid DWT and MFCC feature warping for noisy forensic speaker verification in room reverberation

Ahmed Kamil Hasan Al-Ali, B. Senadji, V. Chandran
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引用次数: 3

Abstract

The robustness of speaker verification systems is often degraded in real forensic applications, which contain environmental noise and reverberation. Reverberation results in mismatched conditions between enrolment and test speech signals. In this work, we investigate the effectiveness of combining features of discrete wavelet transform (DWT) and feature-warped mel frequency cepstral coefficients (MFCCs) to improve the performance of speaker verification under conditions of reverberation and environmental noises. State of the art intermediate vector (i-vector) and probabilistic linear discriminant analysis (PLDA) were used as a classifier. The algorithm was evaluated by convolving the impulse room response with enrolment speech from an Australian forensic voice comparison database. The test speech signals were combined with car, street, and home noises from the QUT-NOISE database at signal to noise ratios (SNR) ranging from −10 dB to 10 dB. Experimental results indicate that the algorithm achieves a reduction in average equal error rate (EER) ranging from 17.10% to 51.86% over traditional MFCC features when reverberated enrolment data and the test speech signals are corrupted with car, street and home noises at SNRs ranging from −10 dB to 10 dB.
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混合DWT和MFCC特征翘曲在室内混响嘈杂的法医扬声器验证
在包含环境噪声和混响的实际司法应用中,说话人验证系统的鲁棒性经常下降。混响导致入学和测试语音信号不匹配。在这项工作中,我们研究了将离散小波变换(DWT)和特征扭曲的mel频率倒谱系数(MFCCs)相结合的有效性,以改善混响和环境噪声条件下的说话人验证性能。使用最先进的中间向量(i-vector)和概率线性判别分析(PLDA)作为分类器。该算法通过将脉冲房间响应与来自澳大利亚法医语音比较数据库的入学演讲进行卷积来评估。测试语音信号与来自QUT-NOISE数据库的汽车、街道和家庭噪声结合在一起,信噪比(SNR)范围为−10 dB至10 dB。实验结果表明,当混响注册数据和测试语音信号被汽车、街道和家庭噪声(信噪比为- 10 dB ~ 10 dB)干扰时,该算法比传统的MFCC算法平均误差率(EER)降低了17.10% ~ 51.86%。
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Enhanced forensic speaker verification using multi-run ICA in the presence of environmental noise and reverberation conditions A real-time multi-class multi-object tracker using YOLOv2 Hybrid neural network and regression tree ensemble pruned by simulated annealing for virtual flow metering application Hybrid DWT and MFCC feature warping for noisy forensic speaker verification in room reverberation A deep architecture for face recognition based on multiple feature extraction techniques
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