Missing Sample Estimation Based on High-Order Sparse Linear Prediction for Audio Signals

Bisrat Derebssa Dufera, K. Eneman, T. Waterschoot
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引用次数: 2

Abstract

The restoration of click degraded audio signals is important to achieve acceptable audio quality in many old audio media. Restoration by missing sample estimation based on conventional linear prediction has been extensively researched and used; however, it is hampered by the limitations of the linear prediction model. Recently, it has been shown that high-order sparse linear prediction offers better representation of music and voiced speech over conventional linear prediction. In this paper, the use of high-order sparse linear prediction for missing sample estimation of click degraded audio signals is proposed. The paper also explores a possible computational time saving by combining the high- order sparse linear prediction coefficient determination and filtering operations. Evaluation with different types of speech and audio data show that the proposed method achieves an improvement in SNR over conventional linear prediction based filtering for all considered speech and audio data types.
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基于音频信号高阶稀疏线性预测的缺失样本估计
在许多旧的音频媒体中,为了获得可接受的音频质量,音频信号的恢复是非常重要的。基于传统线性预测的缺失样本估计复原方法得到了广泛的研究和应用;然而,线性预测模型的局限性阻碍了这一研究。最近,研究表明,与传统的线性预测相比,高阶稀疏线性预测可以更好地表示音乐和语音。本文提出了一种利用高阶稀疏线性预测方法对音频信号进行缺失样本估计的方法。本文还探讨了将高阶稀疏线性预测系数的确定与滤波运算相结合来节省计算时间的可能性。对不同类型的语音和音频数据的评估表明,对于所有考虑的语音和音频数据类型,该方法比传统的基于线性预测的滤波实现了信噪比的提高。
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