Morphological openings and closings are useful for the smoothing of gr
ay-scale images. However, their use for image noise reduction is limit
ed by their tendency to remove important, thin features from an image
along with the noise. This paper is a description and analysis of a ne
w morphological image cleaning algorithm (MIG) that preserves thin fea
tures while removing noise, MIC is useful for gray-scale images corrup
ted by dense, low-amplitude, random, or patterned noise. Such noise is
typical of scanned or still-video images, MIC differs from previous m
orphological noise filters in that it manipulates residual images-the
differences between the original image and morphologically smoothed ve
rsions. It calculates residuals on a number of different scales via a
morphological size distribution. It discards regions in the various re
siduals that it judges to contain noise. MIC creates a cleaned image b
y recombining the processed residual images with a smoothed version. T
his paper describes the MIC algorithm in detail, discusses the effects
of parametric variations, presents the results of a noise analysis an
d shows a number of examples of its use, including the removal of scan
ner noise. The paper also demonstrates that MIC significantly improves
the JPEG compression of a gray-scale image.