We consider the problem of finding the subset of order statistics that contains the most information about a sample of random variables drawn independently from some known parametric distribution. We leverage information-theoretic quantities, such as entropy and mutual information, to quantify the level of informativeness and rigorously characterize the amount of information contained in any subset of the complete collection of order statistics. As an example, we show how these informativeness metrics can be evaluated for a sample of discrete Bernoulli and continuous Uniform random variables. Finally, we unveil how our most informative order statistics framework can be applied to image processing applications. Specifically, we investigate how the proposed measures can be used to choose the coefficients of the L-estimator filter to denoise an image corrupted by random noise. We show that both for discrete (e.g., salt-pepper noise) and continuous (e.g., mixed Gaussian noise) noise distributions, the proposed method is competitive with off-the-shelf filters, such as the median and the total variation filters, as well as with wavelet-based denoising methods.
翻译:我们考虑的是,如何找到包含与某些已知参数分布无关的随机变量抽样信息最多的序列统计子集的问题。我们利用信息理论量,例如英特罗比和相互信息,量化信息量,严格确定完整序列统计集中任何一个子集所含信息量。举例来说,我们展示了如何为不同贝努利和连续统一随机变量样本评估这些信息性度量。最后,我们公布了如何将我们最丰富的命令统计框架应用于图像处理应用。具体地说,我们调查了如何利用拟议措施选择L-估计过滤器的系数,以淡化被随机噪音破坏的图像。我们表明,对于离散(如盐-食类噪音)和连续(如混合高斯噪音)的噪音分布,拟议方法与现成过滤器(如中位和全面变异过滤器)以及以波盘为基础的脱色法具有竞争力。