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A cellular neural network for clustering-based adaptive quantization in subband video compression

机译:子带视频压缩中基于聚类的自适应量化的细胞神经网络

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This paper presents a novel cellular connectionist model for the implementation of a clustering-based adaptive quantization in video coding applications. The adaptive quantization has been designed for a wavelet-based video coding system with a desired scene adaptive and signal adaptive quantization. Since the adaptive quantization is accomplished through a maximum a posteriori probability (MAP) estimation-based clustering process, its massive computation of neighborhood constraints makes it difficult for a software-based real-time implementation of video coding applications. The proposed cellular connectionist model aims at designing an architecture for the real-time implementation of the clustering-based adaptive quantization. With a cellular neural network architecture mapping onto the image domain, the powerful Gibbs spatial constraints are realized through interactions among neurons connected with their neighbors. In addition, the computation of coefficient distribution is designed as an external input to each component of a neuron or processing element (PE). We prove that the proposed cellular neural network does converge to the desired steady state with the proposed, update scheme. This model also provides a general architecture for image processing tasks with Gibbs spatial constraint-based computations.
机译:本文提出了一种新型的蜂窝连接器模型,用于在视频编码应用中实现基于聚类的自适应量化。自适应量化已经被设计用于具有期望的场景自适应和信号自适应量化的基于小波的视频编码系统。由于自适应量化是通过基于最大后验概率(MAP)估计的聚类过程完成的,因此邻域约束的大量计算使视频编码应用程序的基于软件的实时实现变得困难。所提出的蜂窝连接器模型旨在设计用于实时实现基于聚类的自适应量化的体系结构。利用映射到图像域的细胞神经网络体系结构,强大的吉布斯空间约束是通过与其邻居连接的神经元之间的相互作用实现的。另外,系数分布的计算被设计为神经元或处理元件(PE)的每个组件的外部输入。我们证明了所提出的细胞神经网络确实可以通过所提出的更新方案收敛到所需的稳态。该模型还提供了基于Gibbs基于空间约束的计算的图像处理任务的通用体系结构。

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