Automated image segmentation-assisted flattening of atomic force microscopy images.
Yuliang WangTongda LuXiaolai LiHuimin WangPublished in: Beilstein journal of nanotechnology (2018)
Atomic force microscopy (AFM) images normally exhibit various artifacts. As a result, image flattening is required prior to image analysis. To obtain optimized flattening results, foreground features are generally manually excluded using rectangular masks in image flattening, which is time consuming and inaccurate. In this study, a two-step scheme was proposed to achieve optimized image flattening in an automated manner. In the first step, the convex and concave features in the foreground were automatically segmented with accurate boundary detection. The extracted foreground features were taken as exclusion masks. In the second step, data points in the background were fitted as polynomial curves/surfaces, which were then subtracted from raw images to get the flattened images. Moreover, sliding-window-based polynomial fitting was proposed to process images with complex background trends. The working principle of the two-step image flattening scheme were presented, followed by the investigation of the influence of a sliding-window size and polynomial fitting direction on the flattened images. Additionally, the role of image flattening on the morphological characterization and segmentation of AFM images were verified with the proposed method.
Keyphrases
- deep learning
- atomic force microscopy
- convolutional neural network
- artificial intelligence
- high speed
- machine learning
- single molecule
- big data
- magnetic resonance imaging
- magnetic resonance
- high resolution
- pseudomonas aeruginosa
- staphylococcus aureus
- electronic health record
- sensitive detection
- candida albicans
- high throughput