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Designing of overcomplete dictionaries based on DCT and DWT

机译:基于DCT和DWT的超完备词典设计

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Sparse representation is very active area in computer vision and image analysis. It has many applications in de-noising, stereo vision, image painting, image restoration, image de-blurring and many. For sparse modeling, there is need to design an appropriate dictionary. However, there are many dictionaries used for sparse modeling and were reported in literature. In this paper, we implemented the fixed dictionaries and adaptive dictionaries i.e., Method of Optimal Direction (MOD) and KSVD. Both adaptive are used for training the noisy images and computing the error and recovered the number of atoms using adaptive or small patches of images. The result showed that our proposed dictionaries performed much better for atom recovery in noisy patches of the images. The dictionary based on discrete wavelet transform (DWT) basis function with KSVD produced accurate result as compared to all other dictionaries. However, for fast convergence of RMSE value to minimum, DWT with KSVD and MOD dictionaries showed higher convergence rate as compared to discrete cosine transform (DCT) with KSVD and MOD. The computation complexity increased little using the DWT dictionary as compared to DCT dictionary.
机译:稀疏表示是计算机视觉和图像分析中非常活跃的领域。它在去噪,立体视觉,图像绘画,图像恢复,图像去模糊等方面有许多应用。对于稀疏建模,需要设计适当的字典。但是,有许多字典用于稀疏建模,并且在文献中已有报道。在本文中,我们实现了固定词典和自适应词典,即最优方向方法(MOD)和KSVD。两种自适应算法都用于训练噪声图像并计算误差,并使用自适应或小的图像补丁恢复原子数。结果表明,我们提出的词典在图像噪声斑块中的原子恢复性能要好得多。与所有其他字典相比,基于离散小波变换(DWT)基函数和KSVD的字典产生了准确的结果。但是,为了将RMSE值快速收敛到最小值,与具有KSVD和MOD的离散余弦变换(DCT)相比,具有KSVD和MOD字典的DWT表现出更高的收敛速度。与DCT字典相比,使用DWT字典的计算复杂性几乎没有增加。

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