首页> 外文期刊>Inverse Problems: An International Journal of Inverse Problems, Inverse Methods and Computerised Inversion of Data >FRIST-flipping and rotation invariant sparsifying transform learning and applications
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FRIST-flipping and rotation invariant sparsifying transform learning and applications

机译:Frist翻转和旋转不变性缩小变换学习和应用

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摘要

Features based on sparse representation, especially using the synthesis dictionary model, have been heavily exploited in signal processing and computer vision. However, synthesis dictionary learning typically involves NP-hard sparse coding and expensive learning steps. Recently, sparsifying transform learning received interest for its cheap computation and its optimal updates in the alternating algorithms. In this work, we develop a methodology for learning flipping and rotation invariant sparsifying transforms, dubbed FRIST, to better represent natural images that contain textures with various geometrical directions. The proposed alternating FRIST learning algorithm involves efficient optimal updates. We provide a convergence guarantee, and demonstrate the empirical convergence behavior of the proposed FRIST learning approach. Preliminary experiments show the promising performance of FRIST learning for sparse image representation, segmentation, denoising, robust inpainting, and compressed sensing-based magnetic resonance image reconstruction.
机译:基于稀疏表示的特征,特别是使用合成词典模型,在信号处理和计算机视觉中受到了重大利用。然而,综合词典学习通常涉及NP-HARD稀疏编码和昂贵的学习步骤。最近,对其廉价计算的稀疏性学习获得了兴趣及其在交替算法中的最佳更新。在这项工作中,我们开发了一种用于学习翻转和旋转不变的稀疏变换的方法,以更好地代表包含具有各种几何方向的纹理的自然图像。所提出的交替的FRIST学习算法涉及有效的最佳更新。我们提供了融合保障,并展示了拟议的法式学习方法的实证融合行为。初步实验表明,稀疏图像表示,分割,去噪,鲁棒染色和压缩的感应磁共振图像重建的纯粹学习的有希望的性能。

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