Patents by Inventor Kangning CUI

Kangning CUI has filed for patents to protect the following inventions. This listing includes patent applications that are pending as well as patents that have already been granted by the United States Patent and Trademark Office (USPTO).

  • Patent number: 12450925
    Abstract: In cell instance segmentation of an original cell image obtained by microscopy, the original cell image is rotated by a rotation angle to yield a rotated cell image. A first machine-learning model for cell instance segmentation processes the original and rotated cell images such that effectively, horizontal and oblique boxes are used in bounding cells of the original cell image for enhancing cell-segmentation accuracy. A set of predictions is generated for each cell instance identified from the original and rotated cell images, yielding a plurality of sets of predictions for all cell instances. The plurality of sets of predictions is processed to remove any set having predicted space not simply connected, any unwanted set classified by a second machine-learning model as a poor indicator according to a certain performance criterion, and any redundant set. The plurality of sets of predictions then produces a segmentation map for the original cell image.
    Type: Grant
    Filed: November 2, 2023
    Date of Patent: October 21, 2025
    Assignees: City University of Hong Kong, HONG KONG CENTRE FOR CEREBRO-CARDIOVASCULAR HEALTH ENGINEERING LIMITED
    Inventors: Fei Pan, Yutong Wu, Dong Sun, Hon-Fu Raymond Chan, Kangning Cui
  • Publication number: 20250148813
    Abstract: In cell instance segmentation of an original cell image obtained by microscopy, the original cell image is rotated by a rotation angle to yield a rotated cell image. A first machine-learning model for cell instance segmentation processes the original and rotated cell images such that effectively, horizontal and oblique boxes are used in bounding cells of the original cell image for enhancing cell-segmentation accuracy. A set of predictions is generated for each cell instance identified from the original and rotated cell images, yielding a plurality of sets of predictions for all cell instances. The plurality of sets of predictions is processed to remove any set having predicted space not simply connected, any unwanted set classified by a second machine-learning model as a poor indicator according to a certain performance criterion, and any redundant set. The plurality of sets of predictions then produces a segmentation map for the original cell image.
    Type: Application
    Filed: November 2, 2023
    Publication date: May 8, 2025
    Inventors: Fei PAN, Yutong WU, Dong SUN, Hon-Fu Raymond CHAN, Kangning CUI