Generalized principal component analysis (GPCA)
Johns Hopkins University · University of Illinois Urbana-Champaign · +1 more institution
Abstract
This paper presents an algebro-geometric solution to the problem of segmenting an unknown number of subspaces of unknown and varying dimensions from sample data points. We represent the subspaces with a set of homogeneous polynomials whose degree is the number of subspaces and whose derivatives at a data point give normal vectors to the subspace passing through the point. When the number of subspaces is known, we show that these polynomials can be estimated linearly from data; hence, subspace segmentation is reduced to classifying one point per subspace. We select these points optimally from the data set by minimizing certain distance function, thus dealing automatically with moderate noise in the data. A…
Citation impact
- FWCI
- 22.73
- Percentile
- 100%
- References
- 40
Authors
3Topics & keywords
- Linear subspace
- Mathematics
- Subspace topology
- Affine transformation
- Data point
- Pattern recognition (psychology)
- Principal component analysis
- Artificial intelligence