Texture Analysis and Segmentation using Dominant Component Analysis
Abstract
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
Full Text:
PDFReferences
S. Belongie, C. Carson, H. Greenspan, and J. Malik, “Color- and
Texture-Based Image Segmentation Using EM and Its Application to
Content-Based Image Retrieval,” Proc. Sixth Int‟l Conf.Computer
Vision, 1998.
A.C. Bovik, M. Clark, and W. Geisler, “Multichannel Texture Analysis
Using Localized Spatial Filters,” IEEE Trans. Pattern Analysis and
Machine Intelligence, vol. 12, no. 1, pp. 55-73, Jan. 1990.
A.C. Bovik, N. Gopal, T. Emmoth, and A. Restrepo, “Localized
Measurement of Emergent Image Frequencies by Gabor Wavelets,”
IEEE Trans. Information Theory, vol. 38, pp. 691-712, 1992.
A.C. Bovik, P. Maragos, and T.F.Quatieri, “AM-FM Energy Detection
and Separation in Noise Using Multiband Energy Operators,” IEEE
Trans. Signal Processing, vol. 41, pp. 3245-3265, 1993.
T. Brox and J. Weickert, “A TV Flow Based Local Scale Measure for
Texture Discrimination,” Proc. Eighth European Conf. Computer
Vision, 2004.
V. Caselles, R. Kimmel, and G. Sapiro, “Geodesic Active Contours,”
Int‟l. J. Computer Vision, vol. 22, no. 1, pp. 61-79, 1997.
T. Chan and L. Vese, “Active Contours without Edges,” IEEE Trans.
Image Processing, vol. 10, no. 2, pp. 266-277, 2001.
G.C. Cross and A.K. Jain, “Markov Random Field Texture Models,”
IEEE Trans. Pattern Analysis and Machine Intelligence,vol. 5, no. 1, pp.
-39, Jan. 1983.
Guoying LIU∗ , Wenying GE, Changqing ZHANG, Aimin WANG,
“Unsupervised Texture Segmentation Using Finite Combined Variation
Pattern in Wavelet Domain”, Journal of Information & Computational
Science 8: 16 (2011) 3893– 3900.
J. Daugman, “Uncertainty Relation for Resolution in Space, Spatial
Frequency, and Orientation Optimized by Two-Dimensional Visual
Cortical Filters,” J. Optical Soc. of America (A), vol. 2, no. 7, pp. 160-
, 1985.
D. Dimitriadis and P. Maragos, “Robust Energy DemodulationBased on
Continuous Models with Application to SpeechRecognition,” Proc.
Eighth European Conf. Speech Comm. andTechnology, 2003.
G. Evangelopoulos, I. Kokkinos, and P. Maragos, “Advances in
Variational Image Segmentation Using AM-FM Models: Regularized
Demodulation and Probabilistic Cue Integration,” Proc. Third Int‟l
Workshop Variational and Level Set Methods, pp. 121-136, 2005.
J.P. Havlicek, D.S. Harding, and A.C. Bovik, “The Multi- Component
AM-FM Image Representation,” IEEE Trans. Image Processing, vol. 5,
no. 6, pp. 1094-1100, 1996.
A.K. Jain and F. Farrokhnia, “Unsupervised Texture Segmentation
Using Gabor Filters,” Pattern Recognition, vol. 24, no. 12, pp. 1167-
, 1991. [23] B. Julesz, “Textons.
I. Kokkinos, G. Evangelopoulos, and P. Maragos, “Modulation-Feature
Based Textured Image Segmentation Using Curve Evolution,” Proc.
Int‟l Conf. Image Processing, 2004.
J.Malik and P. Perona, “Preatentive texture discrimination with early
vision mechanisms,” JOSA A, vol. 7(5), pp. 923–932, 1990.
P. Maragos, J.F. Kaiser, and T.F. Quatieri, “Energy Separation in Signal
Modulations with Application to Speech Analysis,” IEEE Trans. Signal
Processing, vol. 41, no. 10, pp. 3024-3051, Oct. 1993.
Vibha S. Vyas and Priti Rege, “Automated Texture Analysis with Gabor
filter”, GVIP Journal, Volume 6, Issue 1, July 2006
Z. N. Zray, J. Havlicek, S. Acton, and M. Pattichis, “Active contour
segmentation guided by am-fm dominant component analysis,” in Proc.
ICIP, 2001.
M. Rousson, T. Brox, and R. Deriche, “Active Unsupervised Texture
Segmentation on a Diffusion Based Space,” Proc. IEEE Conf. Computer
Vision and Pattern Recognition, 2003.
J.P. Havlicek, D.S. Harding, and A.C. Bovik, “Multidimensional Quasi-
Eigenfunction Approximations and Multicomponent AM FM Models,”
IEEE Trans. Image Processing, vol. 9, no. 2, pp. 227- 242, 2000.
Refbacks
- There are currently no refbacks.
This work is licensed under a Creative Commons Attribution 3.0 License.