论文标题
使用插件方法将粒子梁显微照片
Denoising Particle Beam Micrographs with Plug-and-Play Methods
论文作者
论文摘要
在粒子束显微镜中,栅格扫描的聚焦颗粒与样品相互作用,以通过像素产生二次电子(SE)信号像素。由于获取时间和剂量的局限性,常规形成的显微照片是嘈杂的。最近的工作表明,适用于时间分辨测量范式的估计方法可以大大降低噪声,但是这些方法通过像素无需利用图像结构而应用像素。原始SE计数数据可以用复合泊松(Neyman型A型)可能性建模,这意味着数据方差依赖信号依赖性并且大于基础粒子样本相互作用的变化。这些统计特性使假设加性白色高斯噪声无效的方法。本文介绍了使用插件框架来利用图像结构的粒子光束显微照片的方法,同时适用于这种模式的异常数据可能性。准确性和计算复杂性各不相同的数据可能性的近似与总变异正则化,BM3D和DNCNN结合使用。假设可以使用SE计数,则为常规测量和时间分辨测量提供了方法。在代表氦离子显微镜和扫描电子显微镜的模拟中,可获得根均方误差(RMSE),结构相似性指数测量(SSIM)和定性外观的显着改善。 RMSE的平均减少是由2.24到4.11的因素。
In a particle beam microscope, a raster-scanned focused beam of particles interacts with a sample to generate a secondary electron (SE) signal pixel by pixel. Conventionally formed micrographs are noisy because of limitations on acquisition time and dose. Recent work has shown that estimation methods applicable to a time-resolved measurement paradigm can greatly reduce noise, but these methods apply pixel by pixel without exploiting image structure. Raw SE count data can be modeled with a compound Poisson (Neyman Type A) likelihood, which implies data variance that is signal-dependent and greater than the variation in the underlying particle-sample interaction. These statistical properties make methods that assume additive white Gaussian noise ineffective. This paper introduces methods for particle beam micrograph denoising that use the plug-and-play framework to exploit image structure while being applicable to the unusual data likelihoods of this modality. Approximations of the data likelihood that vary in accuracy and computational complexity are combined with denoising by total variation regularization, BM3D, and DnCNN. Methods are provided for both conventional and time-resolved measurements, assuming SE counts are available. In simulations representative of helium ion microscopy and scanning electron microscopy, significant improvements in root mean-squared error (RMSE), structural similarity index measure (SSIM), and qualitative appearance are obtained. Average reductions in RMSE are by factors ranging from 2.24 to 4.11.