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| Spatial aliasing and scale invariance | |
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The fitting goals (3) and (4) have
about double the usual number of fitting equations.
Scale-invariance introduces extra equations.
If the range of scale-invariance is wide, there will be more equations.
Now we begin to see the big picture.
- Refining a model mesh improves accuracy.
- Refining a model mesh makes empty bins.
- Empty bins spoil analysis.
- If there are not too many empty bins we can find a PEF.
- With a PEF we can fill the empty bins.
- To get the PEF and to fill bins we need enough equations.
- Scale-invariance introduces more equations.
An example of these concepts is shown in Figure 2.
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mshole
Figure 2.
Overcoming aliasing with multiscale fitting.
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Additionally, when we have a PEF,
often we still cannot find missing data
because conjugate-direction iterations do not converge fast enough
(to fill large holes).
Multiscale convolutions should converge quicker
because they are like mesh-refinement, which is quick.
An example of these concepts is shown in Figure 3.
msiter
Figure 3.
Large holes are filled faster with
multiscale operators.
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| Spatial aliasing and scale invariance | |
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Next: Coding the multiscale filter
Up: MULTISCALE, SELF-SIMILAR FITTING
Previous: Examples of scale-invariant filtering
2013-07-26