Jhuang An-Ting, Fuentes Montserrat, Jones Jacob L, Esteves Giovanni, Fancher Chris M, Furman Marschall, Reich Brian J
Department of Statistics, North Carolina State University, Raleigh, NC 27695.
College of Humanities and Sciences, Virginia Commonwealth University, Richmond, VA 23284.
Technometrics. 2019;61(4):494-506. doi: 10.1080/00401706.2018.1546622. Epub 2019 Mar 22.
Motivated by the problem of detecting changes in two-dimensional X-ray diffraction data, we propose a Bayesian spatial model for sparse signal detection in image data. Our model places considerable mass near zero and has heavy tails to reflect the prior belief that the image signal is zero for most pixels and large for an important subset. We show that the spatial prior places mass on nearby locations simultaneously being zero, and also allows for nearby locations to simultaneously be large signals. The form of the prior also facilitates efficient computing for large images. We conduct a simulation study to evaluate the properties of the proposed prior and show that it outperforms other spatial models. We apply our method in the analysis of X-ray diffraction data from a two-dimensional area detector to detect changes in the pattern when the material is exposed to an electric field.
受二维X射线衍射数据变化检测问题的启发,我们提出了一种用于图像数据中稀疏信号检测的贝叶斯空间模型。我们的模型在接近零处赋予相当大的概率质量,并且具有重尾,以反映图像信号在大多数像素处为零而在重要子集中为大值的先验信念。我们表明,空间先验将概率质量同时置于附近位置为零的情况,并且还允许附近位置同时为大信号。先验的形式也便于对大图像进行高效计算。我们进行了一项模拟研究来评估所提出先验的性质,并表明它优于其他空间模型。我们将我们的方法应用于二维面积探测器的X射线衍射数据分析,以检测材料暴露于电场时图案的变化。