Open Access Open Access  Restricted Access Subscription or Fee Access

Fusion of Multi-focus and Multi-exposure Colour Images Using Curvelet Transform Technique

S. Batmavady, V. Nidhin, Pulagam Chenchu Madhav, K. Dijindas

Abstract


Image fusion refers to the process of combining the relevant information from two or more images into a single highly informative image. The resulting fused image contains the salient information present in each of the input images. In this paper, an algorithm for fusing color images based on curvelet transform technique is being implemented. The other fusion techniques such as wavelet transform, Brovey, IHS, PCA have much less spatial information. This disadvantage is overcome by employing curvelet transform in the proposed work. In the literature discussed so far, only the monochrome image fusion using curvelet transform is considered. In this paper, colour images are fused using curvelet transform and the fused image preserves the vital colour information of the original images. In curvelet transform, the fused images have the same spectral resolution as the multispectral images and the same spatial resolution as the panchromatic image with minimum artifacts. It exhibit very high directional sensitivity, is highly anisotropic, represents edges better than wavelets, handles curve discontinuities well and is well suited for multi-scale edge enhancement. The different images such as multi-focused image, multi-exposure are fused into a new image to improve the information content. In the present fusion algorithm, the input registered colour images are fused using the curvelet transform. The fusion results are evaluated and compared according to four measures of performance - the Entropy (H), Root Mean Square Error (RMSE), Peak Signal to Noise Ratio (PSNR) and Correlation Coefficient (CC). These results are compared quantitatively with the wavelet transform technique.

Keywords


Curvelet Transform, Image Fusion, Ridgelet, Wavelet Transform

Full Text:

PDF

References


T.S. Anand, K. Narasimhan, “Performance Evaluation of Image Fusion Using the Multi-Wavelet and Curvelet Transforms”, IEEE - International Conference on Advances in Engineering, Science and Management (ICAESM-20 12), pp: 121-129 March 30,31,2012.

Starck, J. L., Candes, E. J., and Donoho, D.L.,“The curvelet transform for image denoising”, IEEE Trans. ImageProcessing., pp. 131-141,November 11,2002.

YongHong Zhang,”Digital Image hiding using curvelet transform”, IEEE IntenationalConference on Computer Science and Automation Engineering (CSAE), pp: 488-490, June 10-12,2011.

Y F Gu, Y Liu, C Y Wang and Y Zhang, “Curvelet-Based Image Fusion Algorithm for EffectiveAnomaly Detection in Hyperspectral Imagery”, Journal of Physics: International Symposium on Instrumentation Science and Technology Conference Series 48, pp : 324–328,2006.

Rafael C. Gonzalez and Richard E. Woods, “Digital Image Processing”, Pearson Education 2002

www.curvelet.org

F.E.Ali and etal,”Curvelet fusion of MR and CT images”, Progress in electromagnetic research, vo,”l.3,pp.215-224, 2008

M.I.Smith, J.P.Heather,” Fusion technolgy review of image in 2005,” Proceedings of the SPIE, vol.5782, pp. 29-45, 2005

Yong Yang,”Multimodal medical image fusion through a new DWT based technique”, 4th International Conference on Bioinformatics and Biomedical Engineering”, pp.1-4, 2010

Chandrakanth and etal. , “ Fusion of high resolution satellite SAR and optical images”, International workshop on multi-platform/ multi-sensor remote sensing and mapping, pp.1-6, Jan 2011

Luo and etal.,” Hybrid discriminative visual object tracking with confidence fusion for robotics applications”, International conference on intelligent robots and systems, pp. 2965-2970,2011

Choi, M.R.Y. Kim and M.G.Kim,” The curvelet transform for image fusion”, International society for photogrammetry and remote sensing, ISPRS 2004, vol.35 pp.59-64, Istanbul, 2004.

Niunez, J.X.Otazu,O.Fars and etal.,”Multirresolution-based image fusion with additive wavelet decomposition," IEEE transaction on GeoSci. Remote Sensing, vol.37, no.3, pp.1204-1211, May 1999

Udomhunsakul and P. Wongsita,” Feature extraction in medical MRI images,” Proceedings of the 2006 IEEE international conference on networking, sensing and control, 270-274, 2006

Wang A.H.J.Sun and Y.Y.Guan, “ The application of wavelet transform to multi-modality medical image fusion,” Proceedings of IEEE International conference on networking, sensing and control,(ICNSC), pp. 270-274, 2006.


Refbacks

  • There are currently no refbacks.


Creative Commons License
This work is licensed under a Creative Commons Attribution 3.0 License.