Gaussian functions are commonly used in different fields, many real signals can be modeled into such form. Research aiming to obtain a precise fitting result for these functions is very meaningful. This manuscript intends to introduce a new algorithm used to estimate the full parameters of the Gaussian-shaped function. It is basically a weighting method, starting from Caruana's method, while the selection of weighting factors is from the statistics view and based on the estimation of the confidence level for the samples. Tests designed for comparison with current similar methods have been conducted. The simulation results indicate a good performance for this new method, mainly in precision and robustness.
翻译:高斯函数通常在不同领域使用,许多真实信号可以建模成这样的形式。旨在为这些功能取得准确的恰当结果的研究非常有意义。 本手稿打算引入一种新的算法,用于估计高斯形函数的全部参数。基本上是一种加权法,从卡鲁阿纳的方法开始,而加权系数的选择则从统计角度出发,基于对样品信任度的估计。已经进行了为与当前类似方法进行比较而设计的测试。模拟结果显示,这一新方法的性能良好,主要是精确性和稳健性。