How many ways are generally used for image segmentation using only Image processing?
    2 visualizaciones (últimos 30 días)
  
       Mostrar comentarios más antiguos
    
    K M Ibrahim Khalilullah
 el 24 de Jun. de 2019
  
    
    
    
    
    Comentada: K M Ibrahim Khalilullah
 el 25 de Jun. de 2019
            I want to segment an image using image processing (without using machine learning). How many ways are used for segmentation? genrally I used color based segmentation using thresholding.
Is there any other ways?
2 comentarios
  Akira Agata
    
      
 el 24 de Jun. de 2019
				Please take a look at "Image Segmentation" section of the Documentation. There should be a lot of hint !
Respuestas (1)
  KALYAN ACHARJYA
      
      
 el 24 de Jun. de 2019
        
      Editada: KALYAN ACHARJYA
      
      
 el 24 de Jun. de 2019
  
      Yes, the approach of image segmentation depends on type of input image and complexity associated with the ROI and back ground objects. In disctinct RGB image, you can use color based segmentation. 
For other you can create a mask and apply the mask on input image, approaches are thresholding (multiple ways, global, local), distance transform, very popular Otshu's methd (Thresholding), watershed, edge detection etc and  followed by morphological operation (if required)
Some cases you get the very good results, if you apply contrast enahancement (Histogram Equalization)  before apply the segmnetaion method, there after only proceed to subsequents work. 
Highly Recomended: Please refer Gonalez Book of Image Segmnetaion Chapter to get the foundation. 
Hope it Helps!
3 comentarios
  KALYAN ACHARJYA
      
      
 el 24 de Jun. de 2019
				
      Editada: KALYAN ACHARJYA
      
      
 el 24 de Jun. de 2019
  
			I have mentioned Gonzalez Book (specifically-Not Others), this book is synonyms of Introduction to Digital Image Processing. It gives the soilid foundation, which would be great help for real applications.
How many ways are used for segmentation?
There are no specific numbers, the fundametal approaches, I have already mentioned. 
Ver también
Community Treasure Hunt
Find the treasures in MATLAB Central and discover how the community can help you!
Start Hunting!


