For inverse problems one attempts to infer spatially variable functions from indirect measurements of a system. To practitioners of inverse problems, the concept of ``information'' is familiar when discussing key questions such as which parts of the function can be inferred accurately and which cannot. For example, it is generally understood that we can identify system parameters accurately only close to detectors, or along ray paths between sources and detectors, because we have ``the most information'' for these places. Although referenced in many publications, the ``information'' that is invoked in such contexts is not a well understood and clearly defined quantity. Herein, we present a definition of information density that is based on the variance of coefficients as derived from a Bayesian reformulation of the inverse problem. We then discuss three areas in which this information density can be useful in practical algorithms for the solution of inverse problems, and illustrate the usefulness in one of these areas -- how to choose the discretization mesh for the function to be reconstructed -- using numerical experiments.
翻译:对于反面问题,我们试图从系统间接测量中推断出空间变量功能。对于反向问题的实践者,在讨论关键问题时,“信息”的概念是熟悉的,例如,可以准确推断函数的哪些部分,哪些部分是无法准确推断的。例如,一般的理解是,我们可以准确地确定系统参数,而系统参数只能接近探测器,或者沿着源与探测器之间的射线路径,因为我们有这些地方的“大多数信息”。尽管在许多出版物中都提到了这些地方,但在这种情况下引用的“信息”并不是一个很好理解和明确界定的数量。在这里,我们提出了一个信息密度的定义,其依据是因巴耶斯重拟反面问题而产生的系数差异。然后我们讨论了信息密度在实际算法中可用于解决反面问题的三个领域,并用数字实验来说明这些领域之一的有用性 -- 如何选择要重建函数的离散集集。