Spatially adaptive block-based super-resolution.

IEEE Transactions on Image Processing(2012)

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摘要
Super-resolution technology provides an effective way to increase image resolution by incorporating additional information from successive input images or training samples. Various super-resolution algorithms have been proposed based on different assumptions, and their relative performances can differ in regions of different characteristics within a single image. Based on this observation, an adaptive algorithm is proposed in this paper to integrate a higher level image classification task and a lower level super-resolution process, in which we incorporate reconstruction-based super-resolution algorithms, single-image enhancement, and image/video classification into a single comprehensive framework. The target high-resolution image plane is divided into adaptive-sized blocks, and different suitable super-resolution algorithms are automatically selected for the blocks. Then, a deblocking process is applied to reduce block edge artifacts. A new benchmark is also utilized to measure the performance of super-resolution algorithms. Experimental results with real-life videos indicate encouraging improvements with our method.
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关键词
super-resolution algorithm,spatially adaptive block-based super-resolution,reconstruction-based super-resolution algorithm,higher level image classification,target high-resolution image plane,different suitable super-resolution algorithm,image resolution,successive input image,lower level super-resolution process,single image,various super-resolution algorithm,super resolution,spatial resolution,indexation,algorithm design and analysis,indexes,image classification,image reconstruction,algorithm design,edge detection
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