Laboratory for Bio- and Nano-Instrumentation, École Polytechnique Fédérale de Lausanne, Batiment BM 3109 Station 17, 1015 Lausanne, Switzerland.
Beilstein J Nanotechnol. 2012;3:747-58. doi: 10.3762/bjnano.3.84. Epub 2012 Nov 13.
Modern high-speed atomic force microscopes generate significant quantities of data in a short amount of time. Each image in the sequence has to be processed quickly and accurately in order to obtain a true representation of the sample and its changes over time. This paper presents an automated, adaptive algorithm for the required processing of AFM images. The algorithm adaptively corrects for both common one-dimensional distortions as well as the most common two-dimensional distortions. This method uses an iterative thresholded processing algorithm for rapid and accurate separation of background and surface topography. This separation prevents artificial bias from topographic features and ensures the best possible coherence between the different images in a sequence. This method is equally applicable to all channels of AFM data, and can process images in seconds.
现代高速原子力显微镜在短时间内产生大量数据。为了获得样品及其随时间变化的真实表示,序列中的每个图像都必须快速准确地处理。本文提出了一种用于原子力显微镜图像所需处理的自动、自适应算法。该算法自适应地校正常见的一维变形以及最常见的二维变形。该方法使用迭代阈值处理算法快速准确地分离背景和表面形貌。这种分离防止了形貌特征的人为偏差,并确保了序列中不同图像之间的最佳一致性。该方法同样适用于原子力显微镜数据的所有通道,可以在几秒钟内处理图像。