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Vector Sparse Representation of Color Image Using Quaternion Matrix Analysis

机译:四元数矩阵分析的彩色图像矢量稀疏表示

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Traditional sparse image models treat color image pixel as a scalar, which represents color channels separately or concatenate color channels as a monochrome image. In this paper, we propose a vector sparse representation model for color images using quaternion matrix analysis. As a new tool for color image representation, its potential applications in several image-processing tasks are presented, including color image reconstruction, denoising, inpainting, and super-resolution. The proposed model represents the color image as a quaternion matrix, where a quaternion-based dictionary learning algorithm is presented using the K-quaternion singular value decomposition (QSVD) (generalized K-means clustering for QSVD) method. It conducts the sparse basis selection in quaternion space, which uniformly transforms the channel images to an orthogonal color space. In this new color space, it is significant that the inherent color structures can be completely preserved during vector reconstruction. Moreover, the proposed sparse model is more efficient comparing with the current sparse models for image restoration tasks due to lower redundancy between the atoms of different color channels. The experimental results demonstrate that the proposed sparse image model avoids the hue bias issue successfully and shows its potential as a general and powerful tool in color image analysis and processing domain.
机译:传统的稀疏图像模型将彩色图像像素视为标量,将彩色通道单独表示或将彩色通道连接为单色图像。在本文中,我们提出了一种使用四元数矩阵分析的彩色图像矢量稀疏表示模型。作为一种用于彩色图像表示的新工具,它在多种图像处理任务中的潜在应用得到了展示,包括彩色图像重建,去噪,修复和超分辨率。提出的模型将彩色图像表示为四元数矩阵,其中使用K四元数奇异值分解(QSVD)(针对QSVD的广义K均值聚类)方法提出了基于四元数的字典学习算法。它在四元数空间中进行稀疏基选择,从而将通道图像均匀地转换为正交颜色空间。在这种新的色彩空间中,很重要的一点是,在向量重建过程中可以完全保留固有的色彩结构。此外,由于不同颜色通道的原子之间的冗余度较低,因此与当前用于图像恢复任务的稀疏模型相比,所提出的稀疏模型效率更高。实验结果表明,所提出的稀疏图像模型成功地避免了色相偏差问题,并显示了其作为彩色图像分析和处理领域中通用而强大的工具的潜力。

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