Back close

Slantlet filter-bank-based satellite image enhancement using gamma-corrected knee transformation

Publication Type : Journal Article

Publisher : Taylor & Francis

Source : International Journal of Electronics (Taylor & Francis), vol. 105, no. 10, pp. 1695-1715, 2018. [Impact Factor: 1.3]

Url : https://www.tandfonline.com/doi/full/10.1080/00207217.2018.1477199

Campus : Coimbatore

School : School of Engineering

Department : Electronics and Communication

Year : 2018

Abstract : In this paper, an efficient and relatively fast approach for satellite image enhancement is proposed. This technique is based on auto-knee transfer function with suitable gamma correction using slantlet transform for two-scale decomposed image. Dark or low contrast, big-data (or large sized) multispectral images can be easily enhanced by proper tuning for the value of gamma-parameter using slantlet transform. Here, sub-band decomposition is achieved by employing single-level slantlet filter-bank, which is just equivalent to second-level sub-band decomposition using discrete wavelet transform) that has been employed initially. For this purpose, main information of the image is concentrated to lowest sub-band, over which gamma correction is applied after computing the knee transfer function adaptively for low quality input image. In addition to this two-scale decomposition-based enhancement, here, gamma-corrected energy redistributed slantlet transform-based textural enhancement framework is also suggested. The experimentation comprised of relative performance evaluation and comparison on the same scale; clearly reflects the outperformance of proposed methodology over various well-known pre-existing state-of-the-art techniques both quantitatively and qualitatively.

Cite this Research Publication : H. Singh, A. Kumar, L. K. Balyan and G. K. Singh, "Slantlet filter-bank-based satellite image enhancement using gamma-corrected knee transformation,"International Journal of Electronics (Taylor & Francis), vol. 105, no. 10, pp. 1695-1715, 2018. [Impact Factor: 1.3]

Admissions Apply Now