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首页> 外文期刊>Journal of visual communication & image representation >Video compressed sensing reconstruction based on structural group sparsity and successive approximation estimation model
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Video compressed sensing reconstruction based on structural group sparsity and successive approximation estimation model

机译:基于结构群稀疏性和连续近似估计模型的视频压缩传感重建

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The existing video compressed sensing (CS) algorithms for inconsistent sampling ignore the joint correlations of video signals in space and time, and their reconstruction quality and speed need further improvement. To balance reconstruction quality with computational complexity, we introduce a structural group sparsity model for use in the initial reconstruction phase and propose a weight-based group sparse optimization algorithm acting in joint domains. Then, a coarse-to-fine optical flow estimation model with successive approximation is introduced for use in the interframe prediction stage to recover non-key frames through alternating optical flow estimation and residual sparse reconstruction. Experimental results show that, compared with the existing algorithms, the proposed algorithm achieves a peak signal-to-noise ratio gain of 1-3 dB and a multi-scale structural similarity gain of 0.01-0.03 at a low time complexity, and the reconstructed frames not only have good edge contours but also retain textural details. (C) 2019 Elsevier Inc. All rights reserved.
机译:用于不一致采样的现有视频压缩感测(CS)算法忽略了空间和时间中视频信号的关节相关性,并且它们的重建质量和速度需要进一步改进。为了平衡计算复杂性的重建质量,我们引入了用于初始重建阶段的结构群稀疏模型,并提出了一种在联合域中作用的重量基稀疏优化算法。然后,引入具有连续近似的粗致细光学流量估计模型,用于在帧间预测阶段中使用,以通过交替的光学流量估计和残余稀疏重建来恢复非关键帧。实验结果表明,与现有算法相比,所提出的算法在低时间复杂度下实现了1-3 dB的峰值信噪比增益,多尺度结构相似性增益,重构框架不仅具有良好的边缘轮廓,还留住了纹理细节。 (c)2019 Elsevier Inc.保留所有权利。

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