Title :
Candid covariance-free incremental principal component analysis
Author :
Weng, Juyang ; Zhang, Yilu ; Hwang, Wey-Shiuan
Author_Institution :
Dept. of Comput. Sci. & Eng., Michigan State Univ., USA
Abstract :
Appearance-based image analysis techniques require fast computation of principal components of high-dimensional image vectors. We introduce a fast incremental principal component analysis (IPCA) algorithm, called candid covariance-free IPCA (CCIPCA), used to compute the principal components of a sequence of samples incrementally without estimating the covariance matrix (so covariance-free). The new method is motivated by the concept of statistical efficiency (the estimate has the smallest variance given the observed data). To do this, it keeps the scale of observations and computes the mean of observations incrementally, which is an efficient estimate for some well known distributions (e.g., Gaussian), although the highest possible efficiency is not guaranteed in our case because of unknown sample distribution. The method is for real-time applications and, thus, it does not allow iterations. It converges very fast for high-dimensional image vectors. Some links between IPCA and the development of the cerebral cortex are also discussed.
Keywords :
Gaussian distribution; covariance matrices; eigenvalues and eigenfunctions; image processing; principal component analysis; real-time systems; Gaussian distribution; appearance-based image analysis techniques; candid covariance-free IPCA; candid covariance-free incremental principal component analysis; cerebral cortex; covariance matrix; eigenvector; high-dimensional image vectors; image analysis; mean of observations; real-time applications; statistical efficiency; Biology computing; Covariance matrix; Distributed computing; Filters; Humans; Image converters; Image sequence analysis; Image storage; Pixel; Principal component analysis;
Journal_Title :
Pattern Analysis and Machine Intelligence, IEEE Transactions on
DOI :
10.1109/TPAMI.2003.1217609