how i extract the nose region in this image?
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I did the segmentation (thresholding) by the fcm algorithm, I have this photo which contains the labels and I need to extract the nasal cavity

And another question: how do I convert a matrix into a 2-D image? What command can I use?
Respuestas (3)
Image Analyst
el 4 de Dic. de 2014
This does not look like a classified/labeled image because you have gradations of color. Anyway, if it were a labeled image, and say the nasal cavity were class #3, you'd use ismember() on the labeled image to extract just that class
nasalCavities = ismember(labeledImage, 3); % Extract label value 3 from the image.
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Image Analyst
el 5 de Dic. de 2014
ensg's "Answers" moved here:
another question how can i get a labeled image? i need the code thank you
i have got this image and i need a labeled image

Image Analyst
el 5 de Dic. de 2014
I'm not sure what regions you want, but can you get it from thresholding? I have a interactive thresholding application in my File Exchange along with an image segmentation tutorial that shows you how to label regions. http://www.mathworks.com/matlabcentral/fileexchange/?term=authorid%3A31862
ensg
el 5 de Dic. de 2014
Image Analyst
el 5 de Dic. de 2014
There's virtually no contrast so the boundaries are ill-defined. If you can't get it by thresholding then I don't know how you could. You may just have to search VisionBib for articles that segment out whatever organ that is.
Image Analyst
el 5 de Dic. de 2014
ensg's "Answer" moved here since it appears to be a "Comment" to me rather than a brand new separate "Answer" that answers her original question posted way up at the top:
i know what is the organ that i want to extract but i need a code to get the second image that i show in the pdf because this pdf is an example
Image Analyst
el 5 de Dic. de 2014
That's why I referred you to papers where people published articles on how to do that. I have no idea what organ it is and it looks a lot more complicated than simple thresholding can handle so you'll need a more sophisticated algorithm than I can develop for you in the 5 minutes I allow for free demos. I mean to be robust to all images for similar organs in all kinds of patients, it will have to be a very sophisticated algorithm that people work on for months or years, like something a Ph.D. student would do. It's not something I could do in a few minutes this morning for you. If it were simple thresholding, I could, but not this. Sorry - I hope you understand.
ensg
el 5 de Dic. de 2014
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ensg
el 5 de Dic. de 2014
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