Beta Process Joint Dictionary Learning for Coupled Feature Spaces with Application to Single Image Super-Resolution

Li He, H. Qi, R. Zaretzki
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引用次数: 173

Abstract

This paper addresses the problem of learning over-complete dictionaries for the coupled feature spaces, where the learned dictionaries also reflect the relationship between the two spaces. A Bayesian method using a beta process prior is applied to learn the over-complete dictionaries. Compared to previous couple feature spaces dictionary learning algorithms, our algorithm not only provides dictionaries that customized to each feature space, but also adds more consistent and accurate mapping between the two feature spaces. This is due to the unique property of the beta process model that the sparse representation can be decomposed to values and dictionary atom indicators. The proposed algorithm is able to learn sparse representations that correspond to the same dictionary atoms with the same sparsity but different values in coupled feature spaces, thus bringing consistent and accurate mapping between coupled feature spaces. Another advantage of the proposed method is that the number of dictionary atoms and their relative importance may be inferred non-parametrically. We compare the proposed approach to several state-of-the-art dictionary learning methods by applying this method to single image super-resolution. The experimental results show that dictionaries learned by our method produces the best super-resolution results compared to other state-of-the-art methods.
耦合特征空间的Beta过程联合字典学习及其在单幅超分辨率图像中的应用
本文解决了耦合特征空间的过完备字典学习问题,其中学习到的字典也反映了两个空间之间的关系。采用贝叶斯先验方法学习过完备字典。与之前的两个特征空间字典学习算法相比,我们的算法不仅提供了针对每个特征空间的定制字典,而且在两个特征空间之间增加了更加一致和准确的映射。这是由于beta过程模型的独特属性,即稀疏表示可以分解为值和字典原子指示符。该算法能够学习到在耦合特征空间中具有相同稀疏度但值不同的相同字典原子对应的稀疏表示,从而实现耦合特征空间之间一致、准确的映射。该方法的另一个优点是字典原子的数量和它们的相对重要性可以非参数地推断出来。我们通过将该方法应用于单个图像超分辨率,将所提出的方法与几种最先进的字典学习方法进行比较。实验结果表明,与其他最先进的方法相比,我们的方法学习的字典产生了最好的超分辨率结果。
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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