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Variable dimension vector quantization of linear predictive coefficients of speech

机译:语音线性预测系数的变维矢量量化

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We introduce a method for locally optimal variable-to-variable length source coding with distortion, and apply it to coding the linear predictive coefficients of speech. The method is similar to entropy-constrained vector quantization, but it uses a dynamic programming algorithm to encode. The method automatically discovers variable-length source structure, in this case the acoustic-phonetic structure of speech. Using this structure, it is possible to compress the linear predictive coefficients of speech to one-third the rate of entropy-constrained vector quantization of speech, with no increase in spectral distortion. Auditory tests reveal that using this method, the spectral component of speech can be coded naturally and intelligibly to as low as 50 bits per second.
机译:我们介绍了一种具有失真的局部最优变长可变源编码方法,并将其应用于编码语音的线性预测系数。该方法类似于熵约束矢量量化,但是它使用动态编程算法进行编码。该方法自动发现可变长度的源结构,在这种情况下为语音的语音结构。使用这种结构,可以将语音的线性预测系数压缩到语音的熵约束矢量量化速率的三分之一,而不会增加频谱失真。听觉测试表明,使用这种方法,语音的频谱成分可以自然而清晰地编码为低至每秒50位。

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