Multiscale directional transforms based on cosine-sine modulated filter banks for sparse directional image representation

Yusuke Nomura, Ryutaro Ogawa, Seisuke Kyochi, Taizo Suzuki
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Abstract

This paper proposes multiscale directional transforms (MDTs) based on cosine-sine modulated filter banks (CSMFBs). Sparse image representation by directional transforms is necessary for image analysis and processing tasks and has been extensively studied. Conventionally, cosine-sine modulated filter banks (CSMFBs) have been proposed as one of separable directional transforms (SepDTs). Their computational cost is much lower than non-SepDTs, and they can work better than other SepDTs, e.g., dual-tree complex wavelet transforms (DTCWTs) in image processing applications. One drawback of CSMFBs is a lack of multiscale directional selectivity, i.e., it cannot provide multiple scale directional atoms as in the DTCWT frame, and thus flexible image representation cannot be achieved. In this work, we show a design method of multiscale CSMFBs by extending modulated lapped transforms, which are a subclass of CSMFBs. We confirm its effectiveness in nonlinear approximation and image denoising as a practical application.
基于余弦-正弦调制滤波器组的多尺度方向变换稀疏定向图像表示
本文提出了基于余弦-正弦调制滤波器组的多尺度方向变换。方向变换的稀疏图像表示是图像分析和处理任务所必需的,已经得到了广泛的研究。传统上,余弦-正弦调制滤波器组(CSMFBs)被认为是可分离方向变换(sepdt)的一种。它们的计算成本比非sepdt低得多,并且在图像处理应用中可以比其他sepdt(例如双树复小波变换(DTCWTs))更好地工作。csmfb的一个缺点是缺乏多尺度定向选择性,即它不能像DTCWT帧那样提供多尺度定向原子,因此无法实现灵活的图像表示。本文提出了一种多尺度csmfb的设计方法,该方法是通过扩展csmfb的一个子类调制重叠变换来实现的。通过实际应用验证了该方法在非线性逼近和图像去噪方面的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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