This paper addresses the color image completion problem in accordance with low-rank quatenrion matrix optimization that is characterized by sparse regularization in a transformed domain. This research was inspired by an appreciation of the fact that different signal types, including audio formats and images, possess structures that are inherently sparse in respect of their respective bases. Since color images can be processed as a whole in the quaternion domain, we depicted the sparsity of the color image in the quaternion discrete cosine transform (QDCT) domain. In addition, the representation of a low-rank structure that is intrinsic to the color image is a vital issue in the quaternion matrix completion problem. To achieve a more superior low-rank approximation, the quatenrion-based truncated nuclear norm (QTNN) is employed in the proposed model. Moreover, this model is facilitated by a competent alternating direction method of multipliers (ADMM) based on the algorithm. Extensive experimental results demonstrate that the proposed method can yield vastly superior completion performance in comparison with the state-of-the-art low-rank matrix/quaternion matrix approximation methods tested on color image recovery.
翻译:本文根据在变换域中以稀疏的正规化为特征的低等级结构优化处理彩色图像完成问题。 本论文的灵感来自对不同信号类型(包括音频格式和图像)拥有各自基数固有的稀疏结构这一事实的理解。 由于彩色图像可以在四环域内整体处理, 我们描绘了四环离子线变形( QDCT) 域内彩色图像的广度。 此外, 彩色图像所固有的低级别结构的表示是四环矩阵补全问题中的一个至关重要的问题。 要实现更高级的低级近距离, 在拟议模型中采用了基于四环线的四环核标准( QTNNN) 。 此外, 以算法为基础的适量交替的乘数法( ADMMM) 有利于这一模型。 广泛的实验结果显示, 与对彩色图像恢复进行测试的州级低端矩阵/ 近距离矩阵相比,拟议方法的完成性极优。