Interactive super-resolution through neighbor embedding

COMPUTER VISION - ACCV 2009, PT III(2009)

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摘要
Learning based super-resolution can recover high resolution image with high quality However, building an interactive learning based super-resolution system for general images is extremely challenging In this paper, we proposed a novel GPU-based Interactive Super-Resolution system through Neighbor Embedding (ISRNE) Random projection tree (RPtree) with manifold sampling is employed to reduce the number of redundant image patches and balance the node size of the tree Significant performance improvement is achieved through the incorporation of a refined GPU-based brute force kNN search with a matrix-multiplication-like technique We demonstrate 200-300 times speedup of our proposed ISRNE system with experiments in both small size and large size images.
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关键词
proposed isrne system,large size image,interactive super-resolution,general image,super-resolution system,random projection tree,small size,high resolution image,node size,high quality,neighbor embedding,interactive super-resolution system,super resolution,matrix multiplication
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