Title :
Example-based super-resolution
Author :
Freeman, William T. ; Jones, Thouis R. ; Pasztor, Egon C.
Author_Institution :
Artificial Intelligence Lab., MIT, Cambridge, MA, USA
Abstract :
We call methods for achieving high-resolution enlargements of pixel-based images super-resolution algorithms. Many applications in graphics or image processing could benefit from such resolution independence, including image-based rendering (IBR), texture mapping, enlarging consumer photographs, and converting NTSC video content to high-definition television. We built on another training-based super-resolution algorithm and developed a faster and simpler algorithm for one-pass super-resolution. Our algorithm requires only a nearest-neighbor search in the training set for a vector derived from each patch of local image data. This one-pass super-resolution algorithm is a step toward achieving resolution independence in image-based representations. We don´t expect perfect resolution independence-even the polygon representation doesn´t have that-but increasing the resolution independence of pixel-based representations is an important task for IBR
Keywords :
image representation; image resolution; image texture; interpolation; learning by example; rendering (computer graphics); NTSC video content conversion; example-based super-resolution; graphics; high frequency details; high-definition television; high-resolution enlargements; image based rendering; image processing; image-based representations; nearest-neighbor search; pixel-based images; texture mapping; training-based super-resolution algorithm; zoomed images; Graphics; HDTV; High definition video; Image converters; Image processing; Image resolution; Nearest neighbor searches; Pixel; Rendering (computer graphics); TV;
Journal_Title :
Computer Graphics and Applications, IEEE