The projection of sample measurements onto a reconstruction space represented by a basis on a regular grid is a powerful and simple approach to estimate a probability density function. In this paper, we focus on Riesz bases and propose a projection operator that, in contrast to previous works, guarantees the bona fide properties for the estimate, namely, non-negativity and total probability mass $1$. Our bona fide projection is defined as a convex problem. We propose solution techniques and evaluate them. Results suggest an improved performance, specifically in circumstances prone to rippling effects.
翻译:以常规电网为基础对重建空间进行抽样测量的预测,是估算概率密度函数的有力和简单的方法。在本文中,我们侧重于Riesz基地,并提议一个预测操作员,与以往的工程相比,该预测操作员保证了估计数的善意性质,即非负数和总概率1美元。我们的善意预测被定义为一个曲线问题。我们提出了解决方案技术并进行了评估。结果显示,特别是在易发生冲击效应的情况下,业绩有所改善。