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How can I perform a PCA analysis over 3D data?

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Jaime  de la Mota
Jaime de la Mota el 16 de Jul. de 2018
Comentada: Sanchay Mukherjee el 31 de En. de 2022
Hello everyone. I have a 100*50*20 matrix which contains measurements over an area of space. 100 is the number of latitudes, 50 is the number of longitudes and 20 is the number of times each measurement has been performed. I want to perform PCA over this data, but I would like to obtain eigensurfaces instead of eigenvectors, the regular PCA works just fine over a belt of constant latitude or longitude with all the 20 times; however, if I try to use it over the 3D matrix, I get an error. My next attempt has been to use reshape to merge latitude and longitude in a vector. The obtained coeff matrix obtained has a size of 20*20, not something I can plot over a map.
Can anyone please tell me if I can plot the eigensurfaces to see a 2D image for each time? Thanks.

Respuesta aceptada

Image Analyst
Image Analyst el 16 de Jul. de 2018
See my attached 3-D PCA demo. My 3-D array is an RGB image.
  6 comentarios
Image Analyst
Image Analyst el 13 de Nov. de 2018
I have not worked in the compression field. The existing tried and true methods built into other functions are fine with me and I have no desire or need to improve upon those. They meet my needs so I don't need to research better ones.
Sanchay Mukherjee
Sanchay Mukherjee el 31 de En. de 2022
I am trying to do a similar thing. I have a matrix of 200*500*3, where 200*500 is the data for corresponding 3 features (like a 3D plot). I want to find out the relative importance of the 3 features. Do you have any suggestions how should I proceed?
Thanks

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