Publication | Closed Access
A new algorithm for image noise reduction using mathematical morphology
200
Citations
25
References
1995
Year
Jpeg CompressionEngineeringMic AlgorithmNoise ReductionDeblurringImage AnalysisMathematical MorphologyPattern RecognitionNoiseComputational ImagingEdge DetectionMachine VisionMedical ImagingMorphological OpeningsSpatial FilteringMedical Image ComputingImage EnhancementSignal ProcessingComputer VisionImage Denoising
Morphological openings and closings are useful for the smoothing of gray-scale images. However, their use for image noise reduction is limited by their tendency to remove important, thin features from an image along with the noise. The paper presents a description and analysis of a new morphological image cleaning algorithm (MIC) that preserves thin features while removing noise. MIC is useful for gray-scale images corrupted by dense, low-amplitude, random, or patterned noise. Such noise is typical of scanned or still-video images. MIC differs from previous morphological noise filters in that it manipulates residual images-the differences between the original image and morphologically smoothed versions. It calculates residuals on a number of different scales via a morphological size distribution. It discards regions in the various residuals that it judges to contain noise. MIC creates a cleaned image by recombining the processed residual images with a smoothed version. The paper describes the MIC algorithm in detail, discusses the effects of parametric variations, presents the results of a noise analysis and shows a number of examples of its use, including the removal of scanner noise. It also demonstrates that MIC significantly improves the JPEG compression of a gray-scale image.
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