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Mathematics in Imaging Science

日期: 2009-09-15
From the beginning of sciences, visual observations have played major roles. 
With the rapid progress in video and computer technology, computers have 
become powerful enough to process image data. As a result, image processing 
techniques are now applied to virtually all natural sciences and technical 
disciplines.  
 
Mathematical analysis makes image processing algorithms predictable, 
accurate and, in some cases, optimal. New mathematical methods often result 
in novel approaches that can solve previously intractable problems or that 
are much faster or more accurate than previous approaches.   The speed up 
that can be gained by fast algorithm is considerable.  Fast algorithms make 
many image processing techniques applicable and reduce the hardware cost 
considerably.
 
Wavelet methods are a relatively new mathematical tool that allows us to 
quickly manipulate images, for example, high-resolution image 
reconstructions in some applications, or image compressions in other 
applications.  The wavelet algorithms decompose and arrange an image data 
into strata reflecting their relative importance. This allows a rapid access 
to good coarse resolution of the image while retaining the flexibility for 
increasingly fine representations. It leads to algorithms that give sparse 
and accurate representations of image and medical image for efficient 
computation, analysis, storage, restorations and communication.  In this 
talk, I will illustrate how the wavelet theory is developed and applied to 
various applications in image processing.  Several examples will be given.