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Single color image super-resolution using quaternion-based sparse representation

机译:使用基于四元数的稀疏表示的单色图像超分辨率

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In current color image super-resolution methods, superresolution based on sparse representation achieves state-of-the-art performance. However, the exploited sparse representation models deal with the color images as independent channel planes. Consequently, these approaches process the color pixels as scalar quantity, lacking of accuracy in describing inter-relationship among color channels. In this paper, we propose a quaternion-based online dictionary learning method and solve color image super-resolution by employing a quaternion-based sparse representation model. This sparse representation model implements color image superresolution in a kind of vectorial reconstruction, effectively accounting for both luminance and chrominance geometry in images. The proposed color image super-resolution method can better describe the inter-channel changes. In the case that changing lighting conditions affect color more than the luminance perception, it can obtain superior performance comparing to the methods based on monochromatic sparse models with 1dB improvement.
机译:在当前的彩色图像超分辨率方法中,基于稀疏表示的超分辨率可实现最新的性能。但是,利用的稀疏表示模型将彩色图像作为独立的通道平面处理。因此,这些方法将彩色像素作为标量处理,缺乏描述彩色通道之间的相互关系的准确性。本文提出了一种基于四元数的在线词典学习方法,并采用基于四元数的稀疏表示模型来解决彩色图像的超分辨率问题。该稀疏表示模型以一种矢量重建的方式实现了彩色图像的超分辨率,有效地考虑了图像中的亮度和色度几何形状。所提出的彩色图像超分辨率方法可以更好地描述通道间的变化。与基于单色稀疏模型的方法相比,不断变化的照明条件对颜色的影响大于对亮度的感知,与获得1dB改进的方法相比,它可以获得更好的性能。

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