Image Fusion Using Autoassociative-Heteroassociative Neural Networks - Claudia V Kropas-Hughes - Books - Biblioscholar - 9781288414925 - December 7, 2012
In case cover and title do not match, the title is correct

Image Fusion Using Autoassociative-Heteroassociative Neural Networks

Price
HK$ 487
excl. VAT

Ordered from remote warehouse

Expected to be ready for shipping Jul 22 - Aug 3
Get notified about new Claudia V Kropas-Hughes releases
Add to your iMusic wish list

Not rated yet

Publisher Marketing: Images are easily recognized, classified, and segmented -- in short, analyzed -- by humans. The human brain/nervous system -- the biological "computer" -- performs rapid and accurate image processing. In the current research the concepts of the biological neural system provide the impetus for developing a computational means of fusing image data. Accomplishing this automatic image processing requires features be extracted from each image data set, and the information content fused. Biologically inspired computational models are examined for extracting features by transformations such as Fourier, Gabor, and wavelets, and for processing and fusing the information from multiple images through evaluation of autoassociative neural networks (AANNs). Features are obtainable through the use of human-visual-system models, however, AANNs are limited in accomplishing the desired data fusion. In-depth analysis of these networks demonstrate their functionality as data filters requiring careful feature selection to provide the desired image processing. Some features, when using perceptual space concepts, require AANNs to have the ability to process complex-valued inputs instead of only real-valued data. Human-visual-system concepts provide an alternative error function metric for training the networks based on the human standard of similarity instead of absolute numerical value.

Media Books     Paperback Book   (Book with soft cover and glued back)
Released December 7, 2012
ISBN13 9781288414925
Publishers Biblioscholar
Pages 148
Dimensions 189 × 246 × 8 mm   ·   276 g