Automatic synchrotron tomographic alignment schemes based on genetic algorithms and human-in-the-loop software.
Zhen ZhangXiaoxue BiPengcheng LiChenglong ZhangYiming YangYu LiuGang ChenYu Hui DongGongfa LiuYi ZhangPublished in: Journal of synchrotron radiation (2023)
Tomography imaging methods at synchrotron light sources keep evolving, pushing multi-modal characterization capabilities at high spatial and temporal resolutions. To achieve this goal, small probe size and multi-dimensional scanning schemes are utilized more often in the beamlines, leading to rising complexities and challenges in the experimental setup process. To avoid spending a significant amount of human effort and beam time on aligning the X-ray probe, sample and detector for data acquisition, most attention has been drawn to realigning the systems at the data processing stages. However, post-processing cannot correct everything, and is not time efficient. Here we present automatic alignment schemes of the rotational axis and sample pre- and during the data acquisition process using a software approach which combines the advantages of genetic algorithms and human intelligence. Our approach shows excellent sub-pixel alignment efficiency for both tasks in a short time, and therefore holds great potential for application in the data acquisition systems of future scanning tomography experiments.
Keyphrases
- endothelial cells
- machine learning
- high resolution
- electronic health record
- electron microscopy
- deep learning
- big data
- induced pluripotent stem cells
- data analysis
- pluripotent stem cells
- genome wide
- magnetic resonance imaging
- quantum dots
- dna methylation
- mass spectrometry
- transcription factor
- living cells
- computed tomography
- climate change
- drinking water