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首页> 外文期刊>IEEE Journal on Selected Areas in Communications >Residual vector quantization using a multilayer competitive neural network
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Residual vector quantization using a multilayer competitive neural network

机译:使用多层竞争神经网络的残差矢量量化

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摘要

This paper presents a new technique for designing a jointly optimized residual vector quantizer (RVQ). In conventional stage-by-stage design procedure, each stage codebook is optimized for that particular stage distortion and does not consider the distortion from the subsequent stages. However, the overall performance can be improved if each stage codebook is optimized by minimizing the distortion from the subsequent stage quantizers as well as the distortion from the previous stage quantizers. This can only be achieved when stage codebooks are jointly designed for each other. In this paper, the proposed codebook design procedure is based on a multilayer competitive neural network where each layer of this network represents one stage of the RVQ. The weight connecting these layers form the corresponding stage codebooks of the RVQ. The joint design problem of the RVQ's codebooks (weights of the multilayer competitive neural network) is formulated as a nonlinearly constrained optimization task which is based on a Lagrangian error function. This Lagrangian error function includes all the constraints that are imposed by the joint optimization of the codebooks. The proposed procedure seeks a locally optimal solution by iteratively solving the equations for this Lagrangian error function. Simulation results show an improvement in the performance of an RVQ when designed using the proposed joint optimization technique as compared to the stage-by-stage design, where both generalized Lloyd algorithm (GLA) and the Kohonen learning algorithm (KLA) were used to design each stage codebook independently, as well as the conventional joint-optimization technique.
机译:本文提出了一种设计联合优化残差矢量量化器(RVQ)的新技术。在常规的逐级设计过程中,每个级码本针对该特定级失真进行了优化,并且不考虑后续级的失真。但是,如果通过最小化来自后级量化器的失真以及来自前级量化器的失真来优化每个级码本,则可以改善总体性能。仅当阶段代码簿是为彼此共同设计时才可以实现的。在本文中,拟议的密码本设计程序基于多层竞争神经网络,其中该网络的每一层代表RVQ的一个阶段。连接这些层的权重形成RVQ的相应阶段代码簿。 RVQ代码簿的联合设计问题(多层竞争神经网络的权重)被公式化为基于拉格朗日误差函数的非线性约束优化任务。该拉格朗日误差函数包括由码本的联合优化施加的所有约束。所提出的过程通过迭代求解该拉格朗日误差函数的方程来寻求局部最优解。仿真结果表明,与使用通用Lloyd算法(GLA)和Kohonen学习算法(KLA)进行设计的逐步设计相比,使用建议的联合优化技术进行设计时,RVQ的性能有所提高。每个阶段的代码簿都是独立的,以及传统的联合优化技术。

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