We present an unsupervised technique for visual learning which is based on density estimation in high-dimensional spaces using an eigenspace decomposition. Two types of density estimates are derived for modeling the training data: a multivariate Gaussian (for a unimodal distributions) and a multivariate Mixture-of-Gaussians model (for multimodal distributions). These probability densities are then used to formulate a maximum-likelihood estimation framework for visual search and target detection for automatic object recognition. This learning technique is tested in experiments with modeling and subsequent detection of human faces and non-rigid objects such as hands.
Index Terms:
object recognition; unsupervised learning; maximum likelihood estimation; probabilistic visual learning; object detection; unsupervised visual learning; density estimation; high-dimensional spaces; eigenspace decomposition; training data; multivariate Gaussian; probability densities; maximum-likelihood estimation; visual search; target detection; automatic object recognition; human faces; nonrigid objects
Citation:
B. Moghaddam, A. Pentland, "Probabilistic visual learning for object detection," iccv, pp.786, Fifth International Conference on Computer Vision (ICCV'95), 1995