Satellite Image Registration and Image Fusion by using Principle Component Analysis

  • Authors

    • Gandla Maharnisha
    • Gandla Roopesh Kumar
    • R Arunraj
    2018-04-17
    https://doi.org/10.14419/ijet.v7i2.19.15063
  • Image Enhancement, Image Registration, Image Fusion, PCA, Remote sensing
  • This aims to fused image registration and image fusion used to spatial resolution images by principle component analysis method. Digital image processing requires either the full image or a part of image. It will be processed from the user’s point of view like the radius of object. Wavelet technique will improve the spatial resolution to produce spectral degradation in output image. To overcome the spectral degradation, PCA fusion method can be used. PCA uses curve which represent edges and extraction of the detailed information from the image.PAN and MS images are used by individual acquired low frequency approximate component and high frequency detail components in this PCA. To evaluate the image fusion accuracy, Peak Signal to Noise Ratio and Root Mean Square Error are used. The advantages of using digital image processing are preservation of original data accuracy, flexibility and repeatability.

     

  • References

    1. [1] Cle Pohl,JL Van Genderen, “Multisensor image fusion in remote sensing:concepts,methods and applications,â€International journal of remote sensing,Vol. 19,no.5,pp.823-854,1998.

      [2] Maria Gonzalez-Audicana,Jose Luis Saleta,â€Fusion of multispectral and panchromatic images using improved IHS and PCA mergers based on wavelet decomposition,â€IEEE transactions on Geoscience and Remote sensing,Vol.42,no.6,pp.1291-1299,2004.

      [3] Shuyuan Yang,Min Wang,Lincheng Jiao,â€Fusion of multispectral and panchromatic images based on support value transform and adaptive PCA,â€Information Fusion,Vol.13,no.3,pp.177-184,2012.

      [4] Deepak kumar Sahu,MP Parshal,â€Different image fusion techniques,â€International journal of modern Engineering Research,Vol 2,no.5,pp 4289-4301,2012.

      [5] Te-Ming Tu,Ping Sheng Huang,Chung-Line Hung,Chien-Ping Chang,â€A fast intensity-hue-saturation fusion techniquewith spectral adjustment for IKONOS imagery,â€IEEE Geoscience and Remote sensing,Vol 1,no.4,pp 309-312,2004.

      [6] Jorgenunez,Xavier Otazu,Ocatavi Fors,â€Multiresolution-based image Fusion with additive wavelet decomposition,â€IEEE Transactions on Geoscience and Remote sensing,â€Vol.37,no.3,pp.1204-1211,1999.

      [7] Bruno Aiazzi,Luciano Alparone,â€Context-driven fusion of high spatial and spectral resolution images IEEE Transactions on Geoscience and based on oversampled multiresolution analysis,’’ Remote sensing,â€Vol.40,no.10,pp.2300-2312,2002.

      [8] Myungjin Choi,â€A new intensity-hue-saturation fusion approach to image fusion with a tradeoff parameter,â€IEEE Transactions on Geoscience and Remote sensing,â€Vol.44,no.6,pp.1672-1682,2006.

      [9] P.Geetha, B.Chitradevi,“De-noising Using Adaptive Weighted Median Filter with Synthetic Aperture Radar Images,â€vol. 2, issue. 3, pp.413-420,201

  • Downloads

  • How to Cite

    Maharnisha, G., Roopesh Kumar, G., & Arunraj, R. (2018). Satellite Image Registration and Image Fusion by using Principle Component Analysis. International Journal of Engineering & Technology, 7(2.19), 106-110. https://doi.org/10.14419/ijet.v7i2.19.15063