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Joint Temporal-spatial Domain for Adaptive Block Compressed Sensing Video Reconstruction Algorithm

机译:联合时空域自适应块压缩感知视频重构算法

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摘要

An adaptive block-based compressive sensing (BCS) video reconstruction algorithm based on temporal-spatial domain characteristics is proposed. Firstly, assigned weight function is introduced, and the adaptive sampling scheme of joint wavelet coefficients and variance are developed. On the basic, the global measurement matrix is constructed by assigned weight matrix to realize global reconstruction. Secondly, combined with the block-based multi-hypothesis (MH) model and the minimum total variation (TV) model, the predictive-residual reconstruction model of joint temporal-spatial domain characteristics is constructed, and the prediction frame of the current frame is obtained by iteration. Thirdly, the residuals are calculated by global reconstruction and combined with the predictive frames of the current frame to reconstruct a new frame, To validate the effectiveness of proposed video reconstruction algorithm, the results are compared with other BCS algorithms which proposed from the aspects of video reconstruction in recent years. The experiment results show that the proposed algorithm can effectively improve the quality of video reconstruction and further reduce the computational complexity compared with other algorithms.
机译:提出了一种基于时空域特征的自适应基于块的压缩感知视频重建算法。首先介绍了赋权函数,提出了联合小波系数和方差的自适应采样方案。在此基础上,通过分配权重矩阵构造全局度量矩阵,以实现全局重构。其次,结合基于块的多重假设(MH)模型和最小总变异(TV)模型,构建时空联合区域特征的预测-残差重构模型,将当前帧的预测帧作为通过迭代获得。第三,通过全局重建计算残差,并与当前帧的预测帧相结合以重建新帧。为了验证所提出的视频重建算法的有效性,将结果与从视频方面提出的其他BCS算法进行了比较。最近几年的重建。实验结果表明,与其他算法相比,该算法可以有效提高视频重建的质量,并进一步降低计算复杂度。

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