Multistage compressed-sensing reconstruction of multiview images

M. Trocan, Thomas Maugey, Eric W. Tramel, J. Fowler, B. Pesquet-Popescu
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引用次数: 19

Abstract

Compressed sensing is applied to multiview image sets and the high degree of correlation between views is exploited to enhance recovery performance over straightforward independent view recovery. This gain in performance is obtained by recovering the difference between a set of acquired measurements and the projection of a prediction of the signal they represent. The recovered difference is then added back to the prediction, and the prediction and recovery procedure is repeated in an iterated fashion for each of the views in the multiview image set. The recovered multiview image set is then used as an initialization to repeat the entire process again to form a multistage refinement. Experimental results reveal substantial performance gains from the multistage reconstruction.
多视角图像的多级压缩感知重构
将压缩感知应用于多视图图像集,利用视图之间的高度相关性来提高恢复性能,而不是直接的独立视图恢复。这种性能增益是通过恢复一组采集的测量值与它们所代表的信号的预测投影之间的差来获得的。然后将恢复的差异添加回预测中,并以迭代的方式对多视图图像集中的每个视图重复预测和恢复过程。然后将恢复的多视图图像集用作初始化,再次重复整个过程以形成多阶段细化。实验结果表明,多级重构可显著提高性能。
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