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A high-performance linear predictor employing vector quantization in nonorthogonal domains with application to speech

机译:一种在非正交域中采用矢量量化的高性能线性预测器,并应用于语音

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摘要

Linear prediction (LP) is a powerful technique for efficient source-system model based representation of signals, such as speech, and video, with useful applications including compression, and recognition. This has been found to be particularly true when vector quantization is used to code the linear predictor coefficients. Recently, signal processing in multiple nonorthogonal domains has been reported that further enhances the efficiency of signal representation. In this contribution, a novel LP model based coding technique is presented where the advantages of multiple nonorthogonal domain representations of the LP coefficients and the prediction residuals are exploited in conjunction with vector quantization to yield considerable LP coding enhancement. The proposed signal coding technique is applied to one of the most commonly used signals, namely, speech. The resulting performance improvement is clearly demonstrated in terms of reconstruction quality for the same bit rate compared to the existing single domain vector quantization techniques.
机译:线性预测(LP)是一种强大的技术,可用于基于有效源系统模型的信号表示,例如语音和视频,并具有有用的应用程序,包括压缩和识别。已经发现,当使用矢量量化对线性预测系数进行编码时,这尤其正确。近来,已经报道了在多个非正交域中的信号处理,这进一步提高了信号表示的效率。在此贡献中,提出了一种新颖的基于LP模型的编码技术,其中结合了矢量量化利用LP系数和预测残差的多个非正交域表示的优势,以产生可观的LP编码增强。所提出的信号编码技术被应用于最常用的信号之一,即语音。与现有的单域矢量量化技术相比,在相同比特率的重建质量方面,可以明显证明所产生的性能改进。

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