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Low cost vector quantization methods for spectral coding in low rate speech coders

机译:低速率语音编码器中用于频谱编码的低成本矢量量化方法

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In low rate speech coders based on the linear prediction method, the quality of synthesized speech can be improved by enhancement of the short-term spectrum quantization stage. In this study, we propose two new efficient methods for coding the spectral parameters, namely sorted codebook vector quantization (SCVQ) and fine-coarse vector quantization (FCVQ). The principles of these methods are presented along with the methods of training and optimizing the related codebooks. The performance of the new schemes is compared experimentally with other efficient methods, such as tree-searched vector quantization (TSVQ) and multi-stage vector quantization (MSVQ). We demonstrate that the new methods offer significant cost reduction whilst achieving superior quality.
机译:在基于线性预测方法的低速率语音编码器中,可以通过增强短期频谱量化级来提高合成语音的质量。在这项研究中,我们提出了两种用于频谱参数编码的新有效方法,即分类码本矢量量化(SCVQ)和粗略矢量量化(FCVQ)。介绍了这些方法的原理以及训练和优化相关代码簿的方法。实验上将新方案的性能与其他有效方法进行了比较,例如树搜索矢量量化(TSVQ)和多级矢量量化(MSVQ)。我们证明了这些新方法可显着降低成本,同时还能实现卓越的质量。

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