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Comparison of Nonuniform Optimal Quantizer Designs for Speech Coding With Adaptive Critics and Particle Swarm

机译:具有自适应批评和粒子群算法的语音编码非均匀最优量化设计的比较

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摘要

This paper presents the design of a companding nonuniform optimal scalar quantizer for speech coding. The quantizer is designed using two neural networks to perform the nonlinear transformation. These neural networks are used in the front and back ends of a uniform quantizer. Two approaches are presented in this paper namely adaptive critic designs and particle swarm optimization, aiming to maximize the signal-to-noise ratio. The comparison of these optimal quantizer designs over a bit-rate range of 3-6 is presented. The perceptual quality of the coding is evaluated by the International Telecommunication Union's Perceptual Evaluation of Speech Quality standard
机译:本文提出了一种用于语音编码的压扩非均匀最优标量量化器的设计。使用两个神经网络设计量化器以执行非线性变换。这些神经网络用于统一量化器的前端和后端。本文提出了两种方法,即自适应评论家设计和粒子群优化,旨在最大化信噪比。给出了这些最佳量化器设计在3-6的比特率范围内的比较。编码的感知质量由国际电信联盟的语音质量感知评估标准评估

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