IEEE Trans Cybern. 2014 Mar;44(3):366-77. doi: 10.1109/TCYB.2013.2256347. Epub 2013 May 2.
Dictionaries are crucial in sparse coding-based algorithm for image superresolution. Sparse coding is a typical unsupervised learning method to study the relationship between the patches of high-and low-resolution images. However, most of the sparse coding methods for image superresolution fail to simultaneously consider the geometrical structure of the dictionary and the corresponding coefficients, which may result in noticeable superresolution reconstruction artifacts. In other words, when a low-resolution image and its corresponding high-resolution image are represented in their feature spaces, the two sets of dictionaries and the obtained coefficients have intrinsic links, which has not yet been well studied. Motivated by the development on nonlocal self-similarity and manifold learning, a novel sparse coding method is reported to preserve the geometrical structure of the dictionary and the sparse coefficients of the data. Moreover, the proposed method can preserve the incoherence of dictionary entries and provide the sparse coefficients and learned dictionary from a new perspective, which have both reconstruction and discrimination properties to enhance the learning performance. Furthermore, to utilize the model of the proposed method more effectively for single-image superresolution, this paper also proposes a novel dictionary-pair learning method, which is named as two-stage dictionary training. Extensive experiments are carried out on a large set of images comparing with other popular algorithms for the same purpose, and the results clearly demonstrate the effectiveness of the proposed sparse representation model and the corresponding dictionary learning algorithm.
字典在基于稀疏编码的图像超分辨率算法中至关重要。稀疏编码是一种典型的无监督学习方法,用于研究高分辨率和低分辨率图像的补丁之间的关系。然而,大多数用于图像超分辨率的稀疏编码方法未能同时考虑字典和相应系数的几何结构,这可能导致明显的超分辨率重建伪影。换句话说,当低分辨率图像及其对应的高分辨率图像在其特征空间中表示时,两组字典和获得的系数具有内在联系,但尚未得到很好的研究。受非局部自相似性和流形学习发展的启发,本文提出了一种新的稀疏编码方法,以保持字典的几何结构和数据的稀疏系数。此外,所提出的方法可以保持字典项的不相关性,并从新的角度提供稀疏系数和学习到的字典,它们都具有重建和判别特性,以增强学习性能。此外,为了更有效地利用所提出方法的模型进行单图像超分辨率,本文还提出了一种新的字典对学习方法,称为两阶段字典训练。在与其他用于相同目的的流行算法进行的大量图像上进行了广泛的实验,结果清楚地表明了所提出的稀疏表示模型和相应的字典学习算法的有效性。