An autofocus algorithm considering wavelength changes for large scale microscopic hyperspectral pathological imaging system

Qing Zhang, Yan Wang, Qingli Li, Xiang Tao, Xiufeng Zhou, Yonghe Zhang, Gang Liu

Research output: Contribution to journalArticlepeer-review

12 Scopus citations

Abstract

Microscopic hyperspectral imaging technology has been widely used to acquire pathological information of tissue sections. Autofocus is one of the most important steps in microscopic hyperspectral imaging systems to capture large scale or even whole slide images of pathological slides with high quality and high speed. However, there are quite few autofocus algorithm put forward for the microscopic hyperspectral imaging system. Therefore, this article proposes a Laplace operator based autofocus algorithm for microscopic hyperspectral imaging system which takes the influence of wavelength changes into consideration. Through the proposed algorithm, the focal length for each wavelength can be adjusted automatically to ensure that each single band image can be autofocused precisely with adaptive image sharpness evaluation method. In addition, to increase the capture speed, the relationship of wavelength and focal length is derived and the focal offsets among different single band images are calculated for pre-focusing. We have employed the proposed method on our own datasets and the experimental results show that it can capture large-scale microscopic hyperspectral pathology images with high precise.

Original languageEnglish
Article numbere202100366
JournalJournal of Biophotonics
Volume15
Issue number5
DOIs
StatePublished - May 2022

Keywords

  • autofocus
  • large scale imaging
  • microscopic hyperspectral imaging
  • pathology

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