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Rate-distortion optimization for compressive video sampling

机译:压缩视频采样率失真优化

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The recently introduced compressed sensing (CS) framework enables low complexity video acquisition via sub-Nyquist rate sampling. In practice, the resulting CS samples are quantized and indexed by finitely many bits (bit-depth) for transmission. In applications where the bit-budget for video transmission is constrained, rate-distortion optimization (RDO) is essential for quality video reconstruction. In this work, we develop a double-level RDO scheme for compressive video sampling, where frame-level RDO is performed by adaptively allocating the fixed bit-budget per frame to each video block based on block-sparsity, and block-level RDO is performed by modelling the block reconstruction peak-signal-to-noise ratio (PSNR) as a quadratic function of quantization bit-depth. The optimal bit-depth and the number of CS samples are then obtained by setting the first derivative of the function to zero. In the experimental studies the model parameters are initialized with a small set of training data, which are then updated with local information in the model testing stage. Simulation results presented herein show that the proposed double-level RDO significantly enhances the reconstruction quality for a bit-budget constrained CS video transmission system.
机译:最近推出的压缩感测(CS)框架可通过亚奈奎斯特速率采样实现低复杂度的视频采集。实际上,通过有限的许多比特(比特深度)对所得的CS样本进行量化和索引,以进行传输。在视频传输的比特预算受限的应用中,速率失真优化(RDO)对于高质量的视频重建至关重要。在这项工作中,我们开发了一种用于压缩视频采样的双层RDO方案,其中帧级RDO通过基于块稀疏性将每个帧的固定比特预算自适应地分配给每个视频块来执行,而块级RDO为通过将块重构峰信噪比(PSNR)建模为量化位深度的二次函数,可以实现这些功能。然后,通过将函数的一阶导数设置为零,可以获得最佳的位深度和CS样本数。在实验研究中,使用少量训练数据初始化模型参数,然后在模型测试阶段使用局部信息更新模型参数。本文给出的仿真结果表明,所提出的双层RDO可以显着提高比特预算受限CS视频传输系统的重建质量。

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