1 February 1998 Novel image fusion methodology using fuzzy set theory
Abdolhossein Nejatali, Ioan R. Ciric
Author Affiliations +
An image fusion procedure based on fuzzy set theory that can be used to classify different image components and also to preserve and even emphasize the internal contrast is presented. Membership functions are utilized to quantitatively define the relationships between different image classes, as well as the systematic and stochastic measurement errors, in terms of pixel values. For each modality, a possibility measure is applied to determine the degree to which each pixel belongs to various image classes. These possibility measures are sent to an image fusion center, where the image components are classified and their internal contrast restored and augmented. The methodology is practically applicable even in severely noisy environments. Results generated by the proposed method illustrate its capabilities in classifying and preserving internal image details.
Abdolhossein Nejatali and Ioan R. Ciric "Novel image fusion methodology using fuzzy set theory," Optical Engineering 37(2), (1 February 1998). https://doi.org/10.1117/1.601634
Published: 1 February 1998
Lens.org Logo
CITATIONS
Cited by 24 scholarly publications.
Advertisement
Advertisement
RIGHTS & PERMISSIONS
Get copyright permission  Get copyright permission on Copyright Marketplace
KEYWORDS
Image fusion

Resistance

Tissues

FDA class I medical device development

Imaging systems

Image processing

Data fusion

Back to Top