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Blind super-resolution image reconstruction based on novel blur type identification

机译:基于新型模糊型识别的盲超分辨率图像重建

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Blind super-resolution image reconstruction is to obtain a high-resolution image from a sequence of low-resolution images which are degraded by unknown blur, noise, and down sample. Conventional super-resolution image reconstruction algorithms assumed that the blur type is known, thus automatic blur identification is of important significance in blind superresolution image reconstruction. This paper proposed a novel blur type identification algorithm for blind image superresolution. The proposed blur type identification method uses a dictionary learning to identify three blur kernels. It includes the logarithmic normalized feature matrix, the structural similarity index, and the best structural similarity between observed images and dictionary images. Furthermore, we applied the proposed blur type identification method to blind image super-resolution. The experimental result shows that the identification accuracy of proposed method can achieve 98% above. More importantly, the proposed blur type identification-based algorithm for blind image super-resolution can enhance the performance of reconstruction quality according to visual quality and evaluation index.
机译:盲超分辨率图像重建是从一系列低分辨率图像中获得高分辨率图像,该低分辨率图像由未知的模糊,噪声和下降样本劣化。传统的超分辨率图像重建算法假设模糊型是已知的,因此在盲超级别图像重建中自动模糊识别是重要意义。本文提出了一种新型模糊型盲图像超标度识别算法。所提出的模糊型识别方法使用字典学习来识别三个模糊内核。它包括对数归一化特征矩阵,结构相似性指数和观察图像和字典图像之间的最佳结构相似性。此外,我们将提议的模糊型识别方法应用于盲图像超分辨率。实验结果表明,所提出的方法的鉴定精度可以达到上述98±%。更重要的是,基于模糊型盲图像超分辨率的基于模糊型识别算法可以根据视觉质量和评估指标提高重建质量的性能。

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