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An optimal learning parameter for running Gaussian-based referenced compressive sensing

机译:用于运行基于高斯的参考压缩感测的最佳学习参数

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One of the approaches to exploit temporal redundancy in compressive sensing reconstruction of spatio-temporal signals is the Running Gaussian-based Referenced Compressive Sensing. It uses the weighted-average of all prior reconstructed instances as a reference to reconstruct the next instance with high accuracy. The performance of this approach depends on the weight called learning parameter. This work studies the relationship between the learning parameter and the reconstruction accuracy. We show that the small value of the learning parameter is more suitable for natural signals with dynamic sparse supports. We also propose a dynamic optimal learning parameter that provides good reconstruction accuracy for all signals. Out experimental results show that the proposed optimal learning parameter outperforms all fixed values of learning parameter in natural video sequences reconstruction.
机译:在时空信号的压缩感测重建中利用时间冗余的方法之一是基于高斯运行的参考压缩感测。它使用所有先前重建实例的加权平均值作为参考,以高精度重建下一个实例。这种方法的性能取决于称为学习参数的权重。这项工作研究了学习参数和重建精度之间的关系。我们表明,学习参数的较小值更适合具有动态稀疏支持的自然信号。我们还提出了一种动态最佳学习参数,该参数可为所有信号提供良好的重构精度。实验结果表明,在自然视频序列重构中,所提出的最优学习参数优于学习参数的所有固定值。

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