Aysal Tuncer Can, Barner Kenneth E
Electrical and Computer Engineering Department, University of Delaware, Newark, DE 19716, USA.
IEEE Trans Image Process. 2006 Nov;15(11):3294-310. doi: 10.1109/tip.2006.882010.
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.
二次Volterra滤波器在图像锐化应用中很有效。然而,多项式项的线性组合在噪声环境中性能较差。相比之下,加权中值(WM)滤波器以其异常值抑制和细节保留特性而闻名。WM样本选择方法自然地扩展到二次样本情况,产生了一种称为二次加权中值(QWM)的滤波器结构,该结构利用观测样本的高阶统计量,同时对环境噪声高阶统计量中出现的异常值具有鲁棒性。通过对高阶样本的统计分析表明,虽然母体高斯分布是轻尾的,但高阶项呈现重尾分布。从最大似然角度探讨了构成二次系统的项(即交叉项和平方项)的最优组合,从而得到这些项的WM处理。通过确定输出方差和崩溃概率对所提出的QWM滤波器结构进行了分析。研究表明,QWM具有较低的方差和崩溃概率,表明了所提出结构的鲁棒性。在恒定区域、边缘和真实图像上测试了QWM滤波器的性能,并与其加权和对偶滤波器二次Volterra滤波器进行了比较。仿真结果表明,该方法在抑制噪声的同时增强了图像细节。与二次Volterra锐化器相比,QWM滤波器在噪声图像锐化方面具有优异的定性和定量性能。