Optimal Histogram Filter

A. V. Ausiannikau, V. M. Kozel
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Abstract

The article discusses a technique for constructing an optimal histogram filter and its modifications, taking into account a priori information about the expected probability distribution density. The main idea of constructing a histogram filter is to apply a special transformation that displays the profile of a section of any distribution law into a constant level of characteristic numbers equivalent to it. This transformation allows to determine the coefficients of the histogram filter. An estimate of the value of the number of data of a particular interval of the histogram is formed by the characteristic function of the filter containing real data and equivalent to the characteristic number. The convergence of the estimates obtained by the histogram filter to the true values of the interval probabilities is shown. Modifications of the optimal histogram filter that require less computational costs for their implementation are considered. The upper bounds of the qualitative characteristics of filters are obtained. It has been established that the optimal histogram filter, regardless of the type of distribution law, provides three times the best quality of identification (recognition) in comparison with the standard histogram estimate. The efficiency of the histogram filter is confirmed by simulations. The histogram filter is an easy-to-implement tool that can be easily integrated into any open distribution law identification (recognition) algorithm.
最优直方图过滤器
本文讨论了一种构造最优直方图滤波器的技术及其修改,考虑了关于期望概率分布密度的先验信息。构造直方图过滤器的主要思想是应用一种特殊的变换,将任意分布规律的某一部分的轮廓显示为与之等价的常数级特征数。这个变换允许确定直方图过滤器的系数。直方图中某一特定区间的数据数的估计值由包含真实数据的滤波器的特征函数构成,并等价于特征数。直方图滤波器得到的估计收敛于区间概率的真值。考虑了对最优直方图滤波器的修改,以减少其实现所需的计算成本。得到了滤波器定性特性的上界。研究表明,无论哪种分布规律,最优直方图滤波器提供的识别(识别)质量是标准直方图估计的三倍。通过仿真验证了直方图滤波器的有效性。直方图滤波器是一种易于实现的工具,可以很容易地集成到任何开放分布规律识别(识别)算法中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
自引率
0.00%
发文量
87
审稿时长
8 weeks
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