[Insight-users] Curvature Flow - problem

Rodrigo Trujillo Rodrigo Trujillo" <rodrigo.trujillo at cenpra.gov.br
Thu, 5 Feb 2004 16:11:39 -0200


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----- Original Message ----- 
From: "Rodrigo Trujillo" <rodrigo.trujillo at cenpra.gov.br>
To: "Luis Ibanez" <luis.ibanez at kitware.com>
Cc: "ITK Users" <insight-users at itk.org>
Sent: Thursday, February 05, 2004 4:05 PM
Subject: Re: [Insight-users] Curvature Flow - problem


> Hi Luis,
>
> I made what you  wrote, but the results had continued wrong.
> I applied the filter without TimeStep, and later with a lot
> of values. Everytime 3D image were wrong.
>
> I am sending the 3D image without and with the filter.
> I'm working with ITK 1.4.
>
> Thanks,
>
> Rodrigo Trujillo
>
>
>
> ----- Original Message ----- 
> From: "Luis Ibanez" <luis.ibanez at kitware.com>
> To: "Rodrigo Trujillo" <rodrigo.trujillo at cenpra.gov.br>
> Cc: "ITK Users" <insight-users at itk.org>
> Sent: Tuesday, February 03, 2004 4:05 PM
> Subject: Re: [Insight-users] Curvature Flow - problem
>
>
> >
> > Hi Rodrigo,
> >
> > This filter has been improved in order
> > to compute an appropriate time-step
> > internally. You no longer need to
> > specify a time step value. (Assuming
> > you are using ITK 1.4 or 1.6).
> >
> > If nevertheless, you decide to play with
> > this parameter, you may want to start
> > using time steps values as low as 0.005
> > for 3D images. Then progressively experiment
> > raising this value as much as you can withouth
> > triggering the numerical instabilities.
> >
> > The tradeoff is between the size of the
> > time step and the number of iterations
> > that you have to apply in order to
> > reach a certain degreee of smoothing.
> >
> >
> >
> > Regards,
> >
> >
> >     Luis
> >
> >
> >
> > ------------------------
> > Rodrigo Trujillo wrote:
> >
> > > Hi,
> > >
> > > I´m working with MRI  and testing some filters. When i was testing
> > > Curvature Flow with 2D image
> > > the filter seems to be correct, but when I make the volume, the volume
> > > is wrong.
> > >
> > > The problem is the same when value of TimeStep is set wrong, but I
used
> > > the values from "ITK
> > > Software Guide" ( SetTimeStep(0.0625) for 3D images) and others (0.25
,
> > > 0.125 , 0.3125...).
> > >
> > > Which the correct value? What is the problem?
> > >
> > >
> > > Thanks,
> > >
> > > Rodrigo Trujillo
> >
> >
> >
> >
>

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