Fit curve, eliminating the outliers
5 visualizzazioni (ultimi 30 giorni)
Mostra commenti meno recenti
I am trying to implement a segmentation algorithm on a digital image. One of my code finds the edge pixels from the portion of the object. I want to fit a curve to these set of edge points. I thought of using non-linear curve fitting for the same. But the set of coordinates thus found are having many outliers, which are not true edge pixels. How do I eliminate these points and fit the curve for the remaining true edge points only?
The above figure is a scatter plot of the pixels. As can be seen, above 210 on x-axis, there is a lot of noise, or non-edge pixels. How do I fit a curve for only the 0 to 210 portion? This range may vary from image to image, and hence can't be hard coded.
Any suggestions, and inputs are welcome.
Thank you
0 Commenti
Risposte (1)
Image Analyst
il 14 Dic 2017
Modificato: Image Analyst
il 14 Dic 2017
How did you actually get these (x,y) locations from the edges in the image? Did you use the edge() function? Or something else?
Do you want an analytical equation for a curve? If so, what is the model? Quadratic, exponential decay? Something else? Or do you want a smoothed numerical array, like maybe just smooth it a bit with smooth() or sgolayfilt() or something?
Have you tried to use movstd() to identify when the "curve" starts to go crazy? If you can't, then post your data in a .mat file and I'll do it. Post 2 or 3 data sets so I can see how well it works with different images.
Vedere anche
Categorie
Scopri di più su Get Started with Curve Fitting Toolbox in Help Center e File Exchange
Prodotti
Community Treasure Hunt
Find the treasures in MATLAB Central and discover how the community can help you!
Start Hunting!