Browse > Article
http://dx.doi.org/10.7780/kjrs.2005.21.3.243

Texture Image Fusion on Wavelet Scheme with Space Borne High Resolution Imagery: An Experimental Study  

Yoo, Hee-Young (Dept. of Geoscience Education, Seoul National University)
Lee , Ki-Won (Dept. of Information System Engineering, Hansung University)
Publication Information
Korean Journal of Remote Sensing / v.21, no.3, 2005 , pp. 243-252 More about this Journal
Abstract
Wavelet transform and its inverse processing provide the effective framework for data fusion. The purpose of this study is to investigate applicability of wavelet transform using texture images for the urban remote sensing application. We tried several experiments regarding image fusion by wavelet transform and texture imaging using high resolution images such as IKONOS and KOMPSAT EOC. As for texture images, we used homogeneity and ASM (Angular Second Moment) images according that these two types of texture images reveal detailed information of complex features of urban environment well. To find out the useful combination scheme for further applications, we performed DWT(Discrete Wavelet Transform) and IDWT(Inverse Discrete Wavelet Transform) using texture images and original images, with adding edge information on the fused images to display texture-wavelet information within edge boundaries. The edge images were obtained by the LoG (Laplacian of Gaussian) processing of original image. As the qualitative result by the visual interpretation of these experiments, the resultant image by each fusion scheme will be utilized to extract unique details of surface characterization on urban features around edge boundaries.
Keywords
High-resolution imagery; Image Fusion; Texture; Wavelet Transformation;
Citations & Related Records
연도 인용수 순위
  • Reference
1 Antonini, M. Barlaud, P. Mathieu, and I. Daubechies, 1992. Image coding using wavelet transform, IEEE Trans. Image Process, 1(2): 205-220   DOI   ScienceOn
2 Huang P. W. and S. K. Dai, 2004. Texture segmentation using wavelet transform, Information Processing and Management, 40: 81-96   DOI   ScienceOn
3 Mallat, S. G., 1989. A theory of multi-resolution signal decomposition: The wavelet representation, IEEE Trans. Patt. Anal. Machine Intell., 11(7): 674-693   DOI   ScienceOn
4 Avery T. E. and G. L. Berlin, 1992. Fundamentals of Remote Sensing and Airphoto Interpretation, Macmillan, Newyork, USA
5 Lee, K., S.-H. Jeon, and B.-D. Kwon. 2005, Texture Analysis of High Resolution Imagery by GLCM/GLDV Parameters, Korean Jour. of Remote Sensing, 21(2): 1-13
6 Pajares, G. and J. M. de la Cruz, 2004. A wavelet-based image fusion tutorial, Pattern Recognition, Article in Press
7 Carr, J. R., 2004. Computational considerations in digital image fusion via wavelets, Computers & Geoscience, Article in Press, Short Note
8 Myint, S. W., 2003. The Use of Wavelets for Feature Extraction of Cities in Satellite Images, Remotely Sensed Cities (Victor Mesev, editor), Taylors, Frances
9 Arivazhagan, S. and L. Ganesan, 2003. Texture segmentaion using wavelet transform, Pattern Recognition Letters, 24: 3197-3203   DOI   ScienceOn