论文标题

多尺度的稀疏转换学习图像denoising

Multiscale Sparsifying Transform Learning for Image Denoising

论文作者

Abbasi, Ashkan, Monadjemi, Amirhassan, Fang, Leyuan, Rabbani, Hossein, Noormohammadi, Neda, Zhang, Yi

论文摘要

数据驱动的稀疏方法,例如合成词典学习(例如K-SVD)和稀疏的转换学习,已被证明在图像Deosis中有效。但是,它们本质上是单尺度,可以导致次优结果。我们提出了两种基于小波子带混合而开发的方法,以有效地结合单尺和多尺度方法的优点。我们表明,可以设计一种有效的多尺度方法,而无需降低细节子带,从而大大降低了运行时。所提出的方法最初是在稀疏转换学习denoising的框架内得出的,然后将它们推广到为众所周知的K-SVD和Saist图像Denoisising方法提出我们的多尺度扩展。我们彻底分析和评估研究方法,并将其与著名和最先进的方法进行比较。实验表明,我们的方法能够在性能和复杂性之间提供良好的权衡。

The data-driven sparse methods such as synthesis dictionary learning (e.g., K-SVD) and sparsifying transform learning have been proven effective in image denoising. However, they are intrinsically single-scale which can lead to suboptimal results. We propose two methods developed based on wavelet subbands mixing to efficiently combine the merits of both single and multiscale methods. We show that an efficient multiscale method can be devised without the need for denoising detail subbands which substantially reduces the runtime. The proposed methods are initially derived within the framework of sparsifying transform learning denoising, and then, they are generalized to propose our multiscale extensions for the well-known K-SVD and SAIST image denoising methods. We analyze and assess the studied methods thoroughly and compare them with the well-known and state-of-the-art methods. The experiments show that our methods are able to offer good trade-offs between performance and complexity.

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