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Cell-Center-Detection&Segmentation

Detecting the location and draw boundary of nuclei from tissue microscopic images (H&E stained). Model is based on U-net with contour enhancement in loss function. Overlap patch based strategy is used to 1) adapt to variant input image size (resize image may stretch features); 2) use random clip and rotation for data augmentation; 3) each region in output mask is determined by combining inference result from multiple patches. More details can be found in [1].

Dependencies

  • Tensorflow
  • OpenCV
  • Scikit-image
  • Numpy
  • Pandas
  • Matplotlib

More

  • detection and segmentation model
  • consider edge into loss function during training
  • morphology operation to calculate center and boundary
  • better color normalization method for preprocess
  • identify overlapping samples with local segmentation model
  • identify tissue types