Ultrafast Focus Detection for Automated Microscopy


연구 분야: Safety



학회: International Conference on Computational Science


초록

Technological advancements in modern scientific instruments, such as scanning electron microscopes (SEMs), have significantly increased data acquisition rates and image resolutions enabling new questions to be explored; however, the resulting data volumes and velocities, combined with automated experiments, are quickly overwhelming scientists as there remain crucial steps that require human intervention, for example reviewing image focus. We present a fast out-of-focus detection algorithm for electron microscopy images collected serially and demonstrate that it can be used to provide near-real-time quality control for neuroscience workflows. Our technique, Multi-scale Histologic Feature Detection, adapts classical computer vision techniques and is based on detecting various fine-grained histologic features. We exploit the inherent parallelism in the technique to employ GPU primitives in order to accelerate characterization. We show that our method can detect out-of-focus conditions within just 20 ms. To make these capabilities generally available, we deploy our feature detector as an on-demand service and show that it can be used to determine the degree of focus in approximately 230 ms, enabling near-real-time use.


Author Profile
Maksim Levental

University of Chicago Chicago IL USA

Israel
Author Profile
Ryan Chard

Argonne National Lab Lemont IL USA

Israel
Author Profile
Kyle Chard

University of Chicago Chicago IL USA

Israel

📄 논문 정보

발행 연도 2022년
인용수 0
출판 국가 Israel
사이트 Springer
좋아요 수 0

연관 논문 목록 (16건)