Title :
A general framework for quadratic Volterra filters for edge enhancement
Author :
Thurnhofer, Stefan ; Mitra, Sanjit K.
Author_Institution :
Lucent Technol., Bell Labs., Allentown, PA, USA
fDate :
6/1/1996 12:00:00 AM
Abstract :
An inherent problem in most image enhancement schemes is the amplification of noise, which, due to Weber´s law, is mostly visible in the darker portions of an image. Using a special class of quadratic Volterra filters, we can adapt the enhancement process in a computationally efficient way to the local image brightness because these filters are approximately equivalent to the product of a local mean estimator and a highpass filter. We analyze and derive this subclass of quadratic Volterra filters by investigating the 1-D case first, and then we generalize the results to two dimensions. An important property of these filters is that they map sinusoidal inputs to constant outputs, which allows us to develop a new filter characterization that is more intuitive for our application than the 4-D frequency response. This description finally leads to a novel least-squares design methodology. Image enhancement results using our Volterra filters are superior to those obtained with standard linear filters, which we demonstrate both quantitatively and qualitatively
Keywords :
brightness; computational complexity; edge detection; high-pass filters; image enhancement; least squares approximations; noise; nonlinear filters; two-dimensional digital filters; 1D case; constant output; edge enhancement; filter characterization; highpass filter; least-squares design; local image brightness; local mean estimator; noise; quadratic Volterra filters; sinusoidal inputs; two dimensional case; Brightness; Design methodology; Frequency response; Humans; Image enhancement; Information filtering; Information filters; Kernel; Laplace equations; Nonlinear filters;
Journal_Title :
Image Processing, IEEE Transactions on