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New structural similarity measure for image comparison

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posted on 2024-11-14, 09:17 authored by Prashan PremaratnePrashan Premaratne, Malin Premaratne
Subjective quality measures based on Human Visual System for images do not agree well with well-known metrics such as Mean Squared Error and Peak Signal to Noise Ratio. Recently, Structural Similarity Measure (SSIM) has received acclaim due to its ability to produce results on a par with Human Visual System. However, experimental results indicate that noise and blur seriously degrade the performance of the SSIM metric. Furthermore, despite SSIM's popularity, it does not provide adequate insight into how it handles 'structural similarity' of images. We propose a structural similarity measure based on approximation level of a given Discrete Wavelet Decomposition that evaluates moment invariants to capture the structural similarity with superior results over SSIM.

History

Citation

P. Premaratne & M. Premaratne, "New structural similarity measure for image comparison," in Emerging Intelligent Computing Technology and Applications, P. Gupta, D. Huang, P. Premaratne & X. Zhang, Ed. Berlin: Springer Berlin Heidelberg, 2012, pp.292-297.

Parent title

Communications in Computer and Information Science

Volume

304 CCIS

Pagination

292-297

Language

English

RIS ID

64138

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