1887
2nd Australasian Exploration Geoscience Conference: Data to Discovery
  • ISSN: 2202-0586
  • E-ISSN:

Abstract

Summary

The massive availability of remote sensing data and advances in data analytics have improved the capacity for mapping land cover and subsurface.

Specifically, in case of multi-sensor remote sensing images, the independent analysis of each image ignores the valuable complementary information available in other images. To address this problem, a framework of multisensor image analysis using fuzzy collaborative clustering is proposed. The proposed framework avoids the independent analysis of each image but combines the information available in one image with the complementary information given by the all other images for improved image understanding and segmentation. Specifically, the clustering of pixels in each image is collaborated with the clustering results of other images to refine its results. The proposed framework can simultaneously process different heterogeneous images from various sensors. The proposed framework was evaluated and validated through an experiment in which two multi-sensor images, i.e. Landsat-5 TM and ENVISAT ASAR were used over the Beijing urban area and compared with the standard fuzzy c-means clustering. Experimental results show that the proposed framework outperforms the independent image segmentation analysis in detecting the urban growth of Beijing. This framework serves as a useful tool for various earth science applications.

Loading

Article metrics loading...

/content/journals/10.1080/22020586.2019.12073030
2019-12-01
2026-01-13
Loading full text...

Full text loading...

References

  1. Bhagat, V. S., 2012, Use of remote sensing techniques for robust digital detection of land: A review: Recent Patents on Space Technology, 2, 123-144.
  2. Du, P., Liu, S., Gamba, P., Tan, K., and Xia, J., 2012, Fusion of difference images for change detection over urban areas: IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing, 5, 1076-1086.
  3. Lu, D., Mausel, P., Brondízio, E., and Moran, E., 2004, Change detection techniques: International Journal of Remote Sensing, 25, 2365-2401.
  4. Pedrycz, W., 2002, Collaborative fuzzy clustering: Pattern Recognition Letters, 23, 1675-1686.
  5. Pedrycz, W., and Rai, P., 2008, Collaborative clustering with the use of Fuzzy C-Means and its quantification: Fuzzy Sets and Systems, 159, 2399-2427.
  6. Pohl, C., and Genderen, J. L. V., 1998, Review article Multisensor image fusion in remote sensing: Concepts, methods and applications: International Journal of Remote Sensing, 19, 823-854.
  7. Saibi, H., Bersi, M., Mia, M. B., Saadi, N. M., Saleh Al Bloushi, K. M., and Avakian, R. W., 2018, Applications of Remote Sensing in Geosciences - Recent Advances and Applications in Remote Sensing: Intech Open.
  8. Singh, A., 1989, Review Article Digital change detection techniques using remotely-sensed data: International Journal of Remote Sensing, 10, 989-1003.
/content/journals/10.1080/22020586.2019.12073030
Loading
This is a required field
Please enter a valid email address
Approval was a Success
Invalid data
An Error Occurred
Approval was partially successful, following selected items could not be processed due to error