首页> 外文会议>Image Processing (ICIP 2009), 2009 >Improvement on learning-based super-resolution by adopting residual information and patch reliability
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Improvement on learning-based super-resolution by adopting residual information and patch reliability

机译:通过采用残差信息和补丁可靠性来改进基于学习的超分辨率

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Learning-based super-resolution algorithms synthesize high-resolution details by using training data. However, since an input image does not belong to a training image set, there is a limitation in recovering its high-frequency details. In our approach, we build and utilize residual training data to complement missing details. We first estimate a pair of mid- and high-frequency images of each training image by using ordinary training data. We then build residual training data by obtaining the residual mid-and high-frequency images that denote the difference between the estimation and original. Thereby, we can synthesize high-resolution details better by using both ordinary and residual training data sets. In addition, in order to use training data more efficiently, we adaptively select low-resolution patches in an input image. Experimental results demonstrate that the proposed method can synthesize higher-resolution images compared to the existing algorithms.
机译:基于学习的超分辨率算法通过使用训练数据来合成高分辨率细节。但是,由于输入图像不属于训练图像集,因此在恢复其高频细节方面存在限制。在我们的方法中,我们建立并利用残差训练数据来补充缺失的细节。我们首先使用普通训练数据估计每个训练图像的一对中高频图像。然后,我们通过获取表示估计值与原始值之间的差异的残留中高频图像来建立残留训练数据。因此,我们可以通过使用常规训练数据集和残差训练数据集更好地合成高分辨率细节。另外,为了更有效地使用训练数据,我们在输入图像中自适应地选择了低分辨率斑块。实验结果表明,与现有算法相比,该方法可以合成更高分辨率的图像。

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