Set union of Datastores with TransformedDatastores
    6 visualizaciones (últimos 30 días)
  
       Mostrar comentarios más antiguos
    
    Matt J
      
      
 el 26 de Jul. de 2019
  
    
    
    
    
    Editada: Carlos Ramirez
 el 8 de Sept. de 2020
            Given an imageDatastore and some transformation of it, e.g.,
imds1 = imageDatastore({'street1.jpg','peppers.png'});
imds2 = transform(imds1,@(x) imwarp(x,tform));
I would like to form the set union of these data stores in some way so that trainNetwork processes the series of images from both imds1 and imds2 as a single combined set (and similarly with the response data). Is this possible in some way?
I am aware that this functionality is somewhat captured by augmentedImageDatastore, but the operation I describe would open up  a variety of data augmentation schemes not currently avaialble.
I am also aware of this thread, 
but this does not cover what I am pursuing here, because the images in a TransformedDatastore are  not physically stored anywhere (nor would I want them to be).
0 comentarios
Respuesta aceptada
  Jeremy Hughes
    
 el 26 de Jul. de 2019
        
      Editada: Jeremy Hughes
    
 el 26 de Jul. de 2019
  
      Horizontal (i.e. associated reads)
-----------
cds = combine(imds,otherds);
Vertical (i.e. joining two sets of files into one datastore)
-----------
imds = imageDatastore({'folder1/*.jpg','folder2/*.png'});
Or leave off the extensions
imds = imageDatastore({'folder1/','folder2/'});
7 comentarios
  Carlos Ramirez
 el 8 de Sept. de 2020
				
      Editada: Carlos Ramirez
 el 8 de Sept. de 2020
  
			Hi, did you ever manage to solve this ?. I don't really understand what's the purpose of the function combine(idms,idms2) (with idms2 being a transformed one) if later the read function returns two images at the same time. How useful is that for training a CNN using trainNetwork ?. Similat to the original question, I do not want to physically store the augmented images created by the transform function. Any help ?
Más respuestas (0)
Ver también
Categorías
				Más información sobre Get Started with Deep Learning Toolbox en Help Center y File Exchange.
			
	Community Treasure Hunt
Find the treasures in MATLAB Central and discover how the community can help you!
Start Hunting!


