Title :
Unsupervised statistical neural networks for model-based object recognition
Author :
Kumar, Vinay P. ; Manolakos, Elias S.
Author_Institution :
Center for Biol. & Comput. Learning, MIT, Cambridge, MA, USA
fDate :
11/1/1997 12:00:00 AM
Abstract :
Statistical neural networks executing soft-decision algorithms have been shown to be very effective in many classification problems. A neural network architecture is developed here that can perform unsupervised joint segmentation and labeling of objects in images. We propose the semi-parametric hierarchical mixture density (HMD) model as a tool for capturing the diversity of real world images and pose the object recognition problem as a maximum likelihood (ML) estimation of the HMD parameters. We apply the expectation-maximization (EM) algorithm for this purpose and utilize ideas and techniques from statistical physics to cast the problem as the minimization of a free energy function. We then proceed to regularize the solution thus obtained by adding smoothing terms to the objective function. The resulting recursive scheme for estimating the posterior probabilities of an object´s presence in an image corresponds to an unsupervised feedback neural network architecture. We present here the results of experiments involving recognition of traffic signs in natural scenes using this technique
Keywords :
feedforward neural nets; free energy; image classification; image segmentation; maximum likelihood estimation; minimisation; neural net architecture; object recognition; recursive estimation; smoothing methods; statistical analysis; unsupervised learning; HMD model; classification; expectation-maximization algorithm; free energy function; labeling; maximum likelihood estimation; model-based object recognition; natural scene; neural network architecture; objective function; posterior probabilities; real world images; recursive estimation; segmentation; semi-parametric hierarchical mixture density model; smoothing terms; soft-decision algorithms; traffic signs; unsupervised feedback neural network architecture; unsupervised statistical neural networks; Image segmentation; Labeling; Maximum likelihood estimation; Minimization methods; Neural networks; Object recognition; Physics; Probability; Recursive estimation; Smoothing methods;
Journal_Title :
Signal Processing, IEEE Transactions on