Author_Institution :
Dept. of Comput. Sci., George Washington Univ., DC, USA
Abstract :
ALISA (adaptive learning image and signal analysis) is an adaptive learning image and signal classification engine based on the collective learning systems theory. Using supervised training, the ALISA engine builds a set of multidimensional feature histograms that estimate the joint probability density function of the feature space for each trained class. Six general-purpose features, one with a precision of 60 bins and the rest with 20 bins, were used to build a dynamically allocated sparse data structure instead of a complete static structure for each class. During the training of the new dynamically allocated ALISA with 6 different classes (sky, water, skin, rose, evergreen, and grass), a total about 12,000,000 counts were accumulated during training, generating fewer than 150,000 unique feature vectors. The results demonstrate the classification of several test images for each of the 6 trained classes. Much work remains to be done to optimize the new dynamically allocated ALISA classifier, but the initial results are encouraging
Keywords :
data structures; feature extraction; image classification; image texture; learning (artificial intelligence); probability; adaptive learning; collective learning systems; data structure; feature extraction; histograms; image classification; probability density function; state transition matrix; texture module; Data structures; Engines; Histograms; Learning systems; Multidimensional systems; Pattern classification; Probability density function; Signal analysis; Skin; Testing;