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Predictive residual vector quantization [image coding]

机译:预测残差矢量量化[图像编码]

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This paper presents a new vector quantization technique called predictive residual vector quantization (PRVQ). It combines the concepts of predictive vector quantization (PVQ) and residual vector quantization (RVQ) to implement a high performance VQ scheme with low search complexity. The proposed PRVQ consists of a vector predictor, designed by a multilayer perceptron, and an RVQ that is designed by a multilayer competitive neural network. A major task in our proposed PRVQ design is the joint optimization of the vector predictor and the RVQ codebooks. In order to achieve this, a new design based on the neural network learning algorithm is introduced. This technique is basically a nonlinear constrained optimization where each constituent component of the PRVQ scheme is optimized by minimizing an appropriate stage error function with a constraint on the overall error. This technique makes use of a Lagrangian formulation and iteratively solves a Lagrangian error function to obtain a locally optimal solution. This approach is then compared to a jointly designed and a closed-loop design approach. In the jointly designed approach, the predictor and quantizers are jointly optimized by minimizing only the overall error. In the closed-loop design, however, a predictor is first implemented; then the stage quantizers are optimized for this predictor in a stage-by-stage fashion. Simulation results show that the proposed PRVQ scheme outperforms the equivalent RVQ (operating at the same bit rate) and the unconstrained VQ by 2 and 1.7 dB, respectively. Furthermore, the proposed PRVQ outperforms the PVQ in the rate-distortion sense with significantly lower codebook search complexity.
机译:本文提出了一种新的矢量量化技术,称为预测残差矢量量化(PRVQ)。它结合了预测矢量量化(PVQ)和残差矢量量化(RVQ)的概念,以实现具有低搜索复杂度的高性能VQ方案。提出的PRVQ包括由多层感知器设计的矢量预测器和由多层竞争神经网络设计的RVQ。我们提出的PRVQ设计中的主要任务是向量预测变量和RVQ码本的联合优化。为此,介绍了一种基于神经网络学习算法的新设计。该技术基本上是一种非线性约束优化,其中PRVQ方案的每个组成部分都通过最小化适当的阶段误差函数并限制总体误差来进行优化。该技术利用拉格朗日公式,并迭代求解拉格朗日误差函数以获得局部最优解。然后将该方法与联合设计和闭环设计方法进行比较。在联合设计的方法中,通过仅使总误差最小化来对预测器和量化器进行联合优化。但是,在闭环设计中,首先要实现预测器。然后以逐级方式为此预测器优化级量化器。仿真结果表明,所提出的PRVQ方案分别比等效RVQ(以相同的比特率运行)和无约束的VQ分别高2和1.7 dB。此外,在速率失真的意义上,提出的PRVQ优于PVQ,并且码本搜索的复杂度大大降低。

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