Open Access
Subscription Access
Open Access
Subscription Access
An Ameliorated Detection Statistics for Adaptive Mask Median Filtration of Heavily Noised Digital Images
Subscribe/Renew Journal
Noise reduction is an important area of research in image processing applications. The performance of the digital image noise filtering method primarily depends upon the accuracy of noise detection scheme. This paper presents an effective detector based, adaptive mask, median filtration of heavily noised digital images affected with fixed value (or salt and pepper) impulse noise. The proposed filter presents a novel approach; an ameliorated Rank Ordered Absolute Deviation (ROAD) statistics to judge whether the input pixel is noised or noise free. If a pixel is detected as corrupted, it is subjected to adaptive mask median filtration; otherwise, it is kept unchanged. Extensive experimental results and comparative performance evaluations demonstrate that the proposed filter outperforms the existing decision type, median based filters with powerful noise detectors in terms of objective performance measures and visual retrieviation accuracy.
Keywords
Rank Ordered Absolute Deviation (ROAD), Adaptive Mask, Noise Detector, Edge Preservation, Visual Retrieviation Accuracy.
Subscription
Login to verify subscription
User
Font Size
Information
Abstract Views: 275
PDF Views: 3