Independent Component Analysis (ICA) is a popular approach for face recognition. However, face recognition is often a small
sample size problem, which will weaken the recognition performance of ICA classifier. In this paper, a novel method is proposed
to enhance ICA classifier for the small sample size problem. First, we use the random resampling method to generate some random
independent subspaces, and a classifier is constructed in each subspace. Then a voting strategy is adopted to integrate these
classifiers for discrimination. Experimental results on public available face database show that the proposed method can obvious
improve the performance of ICA classifier.