Title :
A parametrized family of nonlinear image smoothing filters
Author :
Rey, Claudio ; Ward, Rabab Kreidieh
Author_Institution :
Dept. of Electr. Eng., British Columbia Univ., Vancouver, BC, Canada
fDate :
9/1/1989 12:00:00 AM
Abstract :
A parameterized family of nonlinear image smoothers is developed which provides a range of tradeoffs between noise smoothing and edge retention. The presentation unifies many approaches to the problem of image smoothing where the estimate of the gray level of a pixel is taken as a nonlinear data-dependent weighted sum of the gray levels of the pixel´s neighborhood. Local confidence measures are defined, and it is shown how filters based on the sample median, the absolute gradient, and the sample variance incorporate these confidence measures in their nonlinear weights. The notion of localized sample variance is then introduced and shown to constitute a more appropriate confidence measure. Using the localized sample variances, a family of filters termed LVn is derived. Smaller values of n provide better noise removal, whereas higher values of n provide better edge preservation. Experiments indicate that the LV 2 member of the family is very efficient for noise removal, while the extreme member LV∞ is nearly perfect for edge retention. A good tradeoff is achieved using n=4, 5, or 6. These values give the most aesthetically appealing results and yield lower RMS error than those of other filters discussed
Keywords :
filtering and prediction theory; picture processing; edge retention; gray level; noise smoothing; nonlinear image smoothing filters; nonlinear weights; parametrized family; Adaptive filters; Channel capacity; Clouds; Entropy; Least squares approximation; Signal processing algorithms; Signal to noise ratio; Smoothing methods; Spatial resolution; Target tracking;
Journal_Title :
Acoustics, Speech and Signal Processing, IEEE Transactions on