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Understanding Compressive Sensing and Sparse Representation-Based Super-Resolution

机译:了解基于压缩感知和稀疏表示的超分辨率

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Recently, compressive sensing (CS) has emerged as a powerful tool for solving a class of inverse/underdetermined problems in computer vision and image processing. In this paper, we investigate the application of CS paradigms on single image super-resolution (SR) problems that are considered to be the most challenging in this class. In light of recent promising results, we propose novel tools for analyzing sparse representation-based inverse problems using redundant dictionary basis. Further, we provide novel results establishing tighter correspondence between SR and CS. As such, we gain insights into questions concerning regularizing the solution to the underdetermined problem, such as follows. 1) Is sparsity prior alone sufficient? 2) What is a good dictionary? 3) What is the practical implication of noncompliance with theoretical CS hypothesis? Unlike in other underdetermined problems that assume random down-projections, the low-resolution image formation model employed in CS-based SR is a deterministic down-projection that may not necessarily satisfy some critical assumptions of CS. We further investigate the impact of such projections in concern to the above questions.
机译:最近,压缩感测(CS)成为解决计算机视觉和图像处理中一类逆向/不确定问题的强大工具。在本文中,我们研究了CS范式在单图像超分辨率(SR)问题上的应用,该问题被认为是此类中最具挑战性的。鉴于最近有希望的结果,我们提出了使用冗余字典基础来分析基于稀疏表示的逆问题的新颖工具。此外,我们提供了新颖的结果,建立了SR和CS之间更紧密的对应关系。这样,我们就可以对正则化问题解决方案的问题进行深入了解,如下所示。 1)仅凭稀疏性就足够了吗? 2)什么是好的字典? 3)不遵守理论CS假设的实际含义是什么?与假定随机向下投影的其他不确定问题不同,基于CS的SR中使用的低分辨率图像形成模型是确定性向下投影,可能不一定满足CS的某些关键假设。我们将进一步研究上述预测对上述问题的影响。

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