Title :
Classification of invariant image representations using a neural network
Author :
Khotanzad, Alireza ; Lu, Jiin-Her
Author_Institution :
Image Process. & Anal. Lab., Southern Methodist Univ., Dallas, TX, USA
fDate :
6/1/1990 12:00:00 AM
Abstract :
A neural network (NN) based approach for classification of images represented by translation-, scale-, and rotation-invariant features is presented. The utilized network is a multilayer perceptron (MLP) classifier with one hidden layer. Back-propagation learning is used for its training. Two types of features are used: moment invariants derived from geometrical moments of the image, and features based on Zernlike moments, which are the mapping of the image onto a set of complex orthogonal polynomials. The performance of the MLP is compared to the Bayes, nearest-neighbor, and minimum-mean-distance statistical classifiers. Through extensive experimentation with noiseless as well as noisy binary images of all English characters (26 classes), the following conclusions are reached: (1) the MLP outperforms the other three classifiers, especially when noise is present; (2) the nearest-neighbor classifier performs about the same as the NN for the noiseless case; (3) the NN can do well even with a very small number of training samples; (4) the NN has a good degree of fault tolerance; and (5) the Zernlike-moment-based features possess strong class separability power and are more powerful than moment invariants
Keywords :
learning systems; neural nets; pattern recognition; picture processing; Zernlike-moment-based features; backpropagation learning; class separability power; complex orthogonal polynomials; fault tolerance; geometrical moments; invariant image representations; moment invariants; multilayer perceptron classifier; neural network; rotation-invariant features; scale invariant features; single hidden layer; training; translation invariant features; Biology computing; Fault tolerance; Image analysis; Image processing; Image recognition; Laboratories; Layout; Neural networks; Pattern recognition; Robotics and automation;
Journal_Title :
Acoustics, Speech and Signal Processing, IEEE Transactions on