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Fast and high quality super-resolution combined learning-based with TV regularization method

机译:基于电视正则化方法的快速高质量超分辨率组合学习

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Super-resolution image reconstruction is an important technology in many image processing areas such as image sensing, medical imaging, satellite imaging, and television signal conversion. It is also a key word of a recent consumer HDTV set that utilizes the CELL processor. Among various super-resolution methods, the learning-based method is one of the most promising solutions. The problem of the learning-based method is its enormous computational time for image searching from the large database of training images. We have proposed a new Total Variation (TV) regularization super-resolution method that utilizes a learning-based super-resolution method. We have obtained excellent results in image quality improvement. However, our proposed method needs long computational time because of the learning-based method. In this paper, we examine two methods that reduce the computational time of the learning-based method. The resulting algorithms reduce complexity significantly while maintaining comparable image quality. This enables the adoption of learning-based super-resolution to the motion pictures such as HDTV and internet movies.
机译:超分辨率图像重建是许多图像处理领域的一项重要技术,例如图像传感,医学成像,卫星成像和电视信号转换。这也是最近使用CELL处理器的消费类高清电视的关键词。在各种超分辨率方法中,基于学习的方法是最有前途的解决方案之一。基于学习的方法的问题是从庞大的训练图像数据库中搜索图像所需的大量计算时间。我们提出了一种新的总变化(TV)正则化超分辨率方法,该方法利用了基于学习的超分辨率方法。我们在改善图像质量方面取得了优异的成绩。然而,由于基于学习的方法,我们提出的方法需要较长的计算时间。在本文中,我们研究了两种减少基于学习的方法的计算时间的方法。所产生的算法在保持可比图像质量的同时,显着降低了复杂度。这样就可以将基于学习的超分辨率应用于高清电视和互联网电影等电影。

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