Open Access
Subscription Access
Open Access
Subscription Access
Texture Analysis and Segmentation Using Dominant Component Analysis
Subscribe/Renew Journal
Texture analysis in computer vision aims at the problems of feature extraction, segmentation and classification, synthesis, and inferring shape from texture. The main objective of this project is to analyze the texture and segment it using textur models. The three stages in this project are texture analysis, edg detection and segmentation. In the first stage, to extract feature, w propose a Regularized Demodulation Algorithm which provides more robust texture features. Second stage is edge detection that facilitates the estimation of posterior probabilities for the edge and texture classes. Third is segmentation that is based on DCA features which uses curve evolution implemented with level set methods With DCA a low-dimensional, yet rich texture feature vector that proves to be useful for texture segmentation.
Keywords
AM-FM Models, Cue Combination, Curve Evolution, Demodulation, Generative Models, Image Segmentation, Texture Analysis.
User
Subscription
Login to verify subscription
Font Size
Information
Abstract Views: 218
PDF Views: 2