GSOC 2013 Proposal

siddharth kherada siddharthkherada27 at gmail.com
Tue Apr 9 08:10:45 EDT 2013


Thanks for the feedback. 

a) I want to point out that the domain transform filter is better than 
bilateral filter and can be used in various applications in which bilateral 
filter is used.

b) Image denoising using non-local means method. Is this already 
implemented?

http://inf.ufrgs.br/~eslgastal/AdaptiveManifolds/Gastal_Oliveira_SIGGRAPH2012_Adaptive_Manifolds.pdf

c) Some Image Debluring techniques: 
           
               1) Deblur image using blind deconvolution 
               2) Deblur image using Lucy-Richardson method
               3) Deblur image using regularized filter
               4) Deblur image using Wiener filter

What is your opinion about the above techniques?

Best Regards,
Siddharth

On Tuesday, 9 April 2013 17:01:15 UTC+5:30, Stefan van der Walt wrote:
>
> Hi Siddharth 
>
> On Tue, Apr 9, 2013 at 11:32 AM, siddharth kherada 
> <siddharth... at gmail.com <javascript:>> wrote: 
> > I am currently pursuing MS by Research in the field of image processing 
> at 
> > IIIT- Hyderabad, India. I am interested in working for Scikit-image this 
> > summer in a GSoC project. 
>
> Thanks for getting in touch.  Both these algorithms are cute, and 
> we'll consider PRs for them if they come in, but I don't think they 
> are major underlying parts of the library we'd want to spend a GSoC 
> on.  If you are interested in this sort of thing, image deconvolution 
> may be more relevant.  For GSoC, we'd like to implement algorithms 
> that will be useful across a wide array of disciplines, if possible. 
>
> Also, we require that students who would like to participate in GSoC 
> first make other contributions to the project, so be sure to look at 
> the list of tickets and try to fix some of them, at a minimum. 
>
> Regards 
> Stéfan 
>
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