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Rate-constrained modular predictive residual vector quantization

机译:速率受限的模块化预测残差矢量量化

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This paper investigates a novel modular image coding paradigm using residual vector quantization (RVQ) with memory that incorporates a modular neural network vector predictor in the feedback loop. A modular neural network predictor consists of several expert networks, where each expert network is optimized for predicting a particular class of data, and an integrating unit that mixes the outputs of the expert networks in order to form the final output of the prediction system. The vector quantizer also has a modular structure. The proposed modular predictive RVQ (MPRVQ) is designed by imposing a constraint on the output rate of the system. Experimental results show that the modular PRVQ outperforms simple PRVQ by as much as 1 dB at low bit rates. Furthermore, for the same PSNR, the modular PRVQ reduces the bit rate by more than a half when compared to the JPEG algorithm.
机译:本文研究了一种使用残差矢量量化(RVQ)和存储器的新型模块化图像编码范例,该模型在反馈回路中合并了模块化神经网络矢量预测变量。模块化神经网络预测器由几个专家网络组成,其中每个专家网络都经过优化以用于预测特定类别的数据;集成单元将专家网络的输出进行混合,以形成预测系统的最终输出。矢量量化器也具有模块化结构。通过对系统的输出速率施加约束来设计建议的模块化预测RVQ(MPRVQ)。实验结果表明,在低比特率下,模块化PRVQ优于简单PRVQ 1 dB。此外,对于相同的PSNR,与JPEG算法相比,模块化PRVQ将比特率降低了一半以上。

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