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A general weighted median filter structure admitting negative weights

机译:允许负权重的一般加权中值滤波器结构

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Weighted median smoothers, which were introduced by Edgemore in the context of least absolute regression over 100 years ago, have received considerable attention in signal processing during the past two decades. Although weighted median smoothers offer advantages over traditional linear finite impulse response (FIR) filters, it is shown in this paper that they lack the flexibility to adequately address a number of signal processing problems. In fact, weighted median smoothers are analogous to normalized FIR linear filters constrained to have only positive weights. It is also shown that much like the mean is generalized to the rich class of linear FIR filters, the median can be generalized to a richer class of filters admitting positive and negative weights. The generalization follows naturally and is surprisingly simple. In order to analyze and design this class of filters, a new threshold decomposition theory admitting real-valued input signals is developed. The new threshold decomposition framework is then used to develop fast adaptive algorithms to optimally design the real-valued filter coefficients. The new weighted median filter formulation leads to significantly more powerful estimators capable of effectively addressing a number of fundamental problems in signal processing that could not adequately be addressed by prior weighted median smoother structures.
机译:加权中值平滑器是Edgemore在100年前进行的最小绝对回归的背景下提出的,在过去的二十年中,它已在信号处理中引起了广泛的关注。尽管加权中值平滑器比传统的线性有限脉冲响应(FIR)滤波器具有优势,但本文显示它们缺乏足够的灵活性来充分解决许多信号处理问题。实际上,加权中值平滑器类似于仅具有正权重的归一化FIR线性滤波器。还表明,与将平均值推广到线性FIR滤波器的丰富类一样,中位数可以推广到允许正负加权的更丰富的滤波器类中。概括自然而然,非常简单。为了分析和设计此类滤波器,开发了一种新的阈值分解理论,该理论允许使用实值输入信号。然后,使用新的阈值分解框架开发快速自适应算法,以优化设计实值滤波器系数。新的加权中值滤波器公式可带来更强大的估计器,能够有效解决信号处理中的许多基本问题,而现有加权中值平滑结构无法充分解决这些问题。

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