STRATEGIES FOR MULTIVARIATE IMAGE REGRESSION

被引:28
|
作者
ESBENSEN, KH
GELADI, PL
GRAHN, HF
机构
[1] NORSK HYDRO AS,E&P RES CTR,N-5028 BERGEN,NORWAY
[2] UMEA UNIV,CHEMOMETR RES GRP,S-90187 UMEA,SWEDEN
[3] CTR PEAT RES,S-90005 UMEA,SWEDEN
[4] ASTRA ARCUS AB,S-15185 SODERTALJE,SWEDEN
关键词
D O I
10.1016/0169-7439(92)80118-N
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
We present multivariate image regression (MIR) as a set of typically problem-dependent strategies for image decomposition guided by the nature of the Y variable and/or training data set delineation in the (X, Y) image domains. Regression techniques common in chemometrics may be applied also to the image regimen (in this paper we treat mainly two-dimensional images). We present applications of both IMPCR and IMPLS-DISCRIM in an effort to delineate the various possibilities for image regression. IMPCR builds directly on our earlier bilinear multivariate image analysis projection approach, while IMPLS-DISCRIM is trained on scene space binary classification masking with subsequent off-screen partial least squares analysis; the results are back-projected as images in the original scene space. Regression may either be carried out for modelling purposes and/or for subsequent prediction purposes. In the image domain this duality is accompanied by several optional training data set delineations in the scene space and/or in the spectral domain. We try to cover as complete a survey as possible of typical, representative regression problem types. We illustrate some of these MIR strategies with an MR-imaging example as well as a simple didactic MIR calibration from analytical chemistry.
引用
收藏
页码:357 / 374
页数:18
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