首页> 外文期刊>International journal of mobile computing and multimedia communications >Residual Reconstruction Algorithm Based on Half-Pixel Multi-Hypothesis Prediction for Distributed Compressive Video Sensing
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Residual Reconstruction Algorithm Based on Half-Pixel Multi-Hypothesis Prediction for Distributed Compressive Video Sensing

机译:基于半像素多假设预测的残差重构算法在分布式压缩视频感知中的应用

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摘要

Compressed sensing (CS) provides a method to sample and reconstruct sparse signals far below the Nyquist sampling rate, which has great potential in image/video acquisition and processing. In order to fully exploit the spatial and temporal characteristics of video frame and the coherence between successive frames, we propose a half-pixel interpolation based residual reconstruction method for distributed compressive video sensing (DCVS). At the decoding end, half-pixel interpolation and bi-directional motion estimation helps refine the side information for joint decoding of the non-key-frames. We apply a multi-hypothesis based on residual reconstruction algorithms to reconstruct the non-key-frames. Performance analysis and simulation experiments show that the quality of side information generated by the proposed algorithm is increased by about 1.5dB, with video reconstruction quality increased 0.3~2dB in PSNR, when compared with prior works on DCVS.
机译:压缩感测(CS)提供了一种采样和重构稀疏信号的方法,该信号远低于奈奎斯特采样率,在图像/视频采集和处理方面具有巨大潜力。为了充分利用视频帧的时空特性以及连续帧之间的相干性,我们提出了一种基于半像素插值的残差重构方法,用于分布式压缩视频传感(DCVS)。在解码端,半像素插值和双向运动估计有助于完善辅助信息,以对非关键帧进行联合解码。我们应用基于残差重构算法的多重假设来重构非关键帧。性能分析和仿真实验表明,与现有的DCVS相比,该算法产生的边信息质量提高了约1.5dB,视频重建质量的PSNR提高了0.3〜2dB。

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