Author_Institution :
Dept. of Electr. & Comput. Eng., Delaware Univ., Newark, DE
Abstract :
Quadratic Volterra filters are effective in image sharpening applications. The linear combination of polynomial terms, however, yields poor performance in noisy environments. Weighted median (WM) filters, in contrast, are well known for their outlier suppression and detail preservation properties. The WM sample selection methodology is naturally extended to the quadratic sample case, yielding a filter structure referred to as quadratic weighted median (QWM) that exploits the higher order statistics of the observed samples while simultaneously being robust to outliers arising in the higher order statistics of environment noise. Through statistical analysis of higher order samples, it is shown that, although the parent Gaussian distribution is light tailed, the higher order terms exhibit heavy-tailed distributions. The optimal combination of terms contributing to a quadratic system, i.e., cross and square, is approached from a maximum likelihood perspective which yields the WM processing of these terms. The proposed QWM filter structure is analyzed through determination of the output variance and breakdown probability. The studies show that the QWM exhibits lower variance and breakdown probability indicating the robustness of the proposed structure. The performance of the QWM filter is tested on constant regions, edges and real images, and compared to its weighted-sum dual, the quadratic Volterra filter. The simulation results show that the proposed method simultaneously suppresses the noise and enhances image details. Compared with the quadratic Volterra sharpener, the QWM filter exhibits superior qualitative and quantitative performance in noisy image sharpening
Keywords :
Gaussian distribution; higher order statistics; image denoising; image enhancement; maximum likelihood estimation; median filters; polynomials; Gaussian distribution; WM sample selection methodology; breakdown probability; detail preservation properties; edge enhancement; environment noise; heavy-tailed distributions; higher order statistics; image enhancement; image sharpening applications; linear polynomial combination; maximum likelihood perspective; noise suppression; noisy images; outlier suppression; output variance; quadratic Volterra filters; quadratic sample; quadratic weighted median filters; statistical analysis; weighted-sum dual; Analysis of variance; Electric breakdown; Filters; Gaussian distribution; Higher order statistics; Noise robustness; Polynomials; Statistical analysis; Testing; Working environment noise; Asymptotic tail mass; Volterra filtering; maximum likelihood estimation; robust image sharpening; unsharp masking; weighted median (WM) filtering;