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首页> 外文期刊>Pattern Analysis and Machine Intelligence, IEEE Transactions on >Efficient Learning of Image Super-Resolution and Compression Artifact Removal with Semi-Local Gaussian Processes
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Efficient Learning of Image Super-Resolution and Compression Artifact Removal with Semi-Local Gaussian Processes

机译:通过半局部高斯过程高效学习图像超分辨率和压缩伪像

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Improving the quality of degraded images is a key problem in image processing, but the breadth of the problem leads to domain-specific approaches for tasks such as super-resolution and compression artifact removal. Recent approaches have shown that a general approach is possible by learning application-specific models from examples; however, learning models sophisticated enough to generate high-quality images is computationally expensive, and so specific per-application or per-dataset models are impractical. To solve this problem, we present an efficient approximation scheme to large-scale Gaussian processes. This allows efficient learning of task-specific image enhancements from example images without reducing quality. As such, our algorithm can be easily customized to specific applications and datasets, and we show the efficiency and effectiveness of our approach across five domains: single-image super-resolution for scene, human face, and text images, and artifact removal in JPEG- and JPEG 2000-encoded images.
机译:改善降级图像的质量是图像处理中的关键问题,但是问题的广度导致针对特定领域的方法(例如超分辨率和压缩伪像去除)进行处理。最近的方法表明,通过从示例中学习特定于应用程序的模型,可以采用通用方法。但是,学习足够复杂以生成高质量图像的模型的计算量很大,因此特定于每个应用程序或每个数据集的模型不切实际。为了解决这个问题,我们提出了一种对大规模高斯过程的有效逼近方案。这允许从示例图像中有效学习任务特定的图像增强,而不会降低质量。因此,我们的算法可以轻松地针对特定的应用程序和数据集进行定制,并且我们展示了我们的方法在五个领域中的效率和有效性:场景,人脸和文本图像的单图像超分辨率,以及JPEG中的伪影去除-和JPEG 2000编码的图像。

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