Differences

This shows you the differences between two versions of the page.

Link to this comparison view

Both sides previous revision Previous revision
Next revision
Previous revision
eyes:logics:pca [2017/06/06 17:11]
nfische [Usage]
eyes:logics:pca [2017/06/12 16:50] (current)
nfische [Example]
Line 4: Line 4:
  
 ===== Usage ===== ===== Usage =====
-The PCA is a prerequisite for data complexity reduction in order to perform a subsequent [[eyes:​logics:​Classification]]alternatively it can also be performed within the classification logic. The PCA yields eigenimages (volumes in the 3D case) which represent the heterogeneity or covariance within the data. Pre-computing the PCA before classification allows to inspect the resulting eigenimages and to decide how many eigenimages should be used for image classification. In general, the first eigenimages will correspond to actual variations in structure and/or angular orientation,​ whereas later eigenimages will rather represent variations in the noise. ​    +The PCA((Hall, P. et al. (2000). Merging and splitting eigenspace models. ​ IEEE Transactions on Pattern Analysis and Machine Intelligence,​ 22(9), 1042-49.)) ​is a prerequisite for data complexity reduction in order to perform a subsequent [[eyes:​logics:​Classification]]alternativelyit can also be directly ​performed within the classification logic. The PCA yields eigenimages (volumes in the 3D case) which represent the heterogeneity or covariance within the data. Pre-computing the PCA before classification allows to inspect the resulting eigenimages and to decide how many eigenimages should be used for image classification. In general, the first eigenimages will correspond to actual variations in structure and/or angular orientation,​ whereas later eigenimages will rather represent variations in the noise. ​Using an external mask (e.g. a circle) as additional input allows to suppress background noise. Using external eigenimages from a previous PCA as input allows to combine eigenimages from different groups of data. The latter may be useful when working on data with orientation bias.  ​ 
-===== Example ==== +
-FIXME+
  
 ===== Process ===== ===== Process =====
Line 27: Line 26:
 |< 100% 30% >| |< 100% 30% >|
 ^ New/Changed Header Values ^ Description ^ ^ New/Changed Header Values ^ Description ^
-headerValue1 ​what does it say? how is it changed? | +eigenValue ​Eigenvalue of the corresponding eigenimage (or volume in 3D case) |
-| headerValue2 | what does it say? how is it changed? | +
-| headerValue3 | what does it say? how is it changed? | +
-| headerValue4 | what does it say? how is it changed? ​|+