Training a universal instance segmentation network for live cell images of various cell types and imaging modalities

07/28/2022
by   Tianqi Guo, et al.
11

We share our recent findings in an attempt to train a universal segmentation network for various cell types and imaging modalities. Our method was built on the generalized U-Net architecture, which allows the evaluation of each component individually. We modified the traditional binary training targets to include three classes for direct instance segmentation. Detailed experiments were performed regarding training schemes, training settings, network backbones, and individual modules on the segmentation performance. Our proposed training scheme draws minibatches in turn from each dataset, and the gradients are accumulated before an optimization step. We found that the key to training a universal network is all-time supervision on all datasets, and it is necessary to sample each dataset in an unbiased way. Our experiments also suggest that there might exist common features to define cell boundaries across cell types and imaging modalities, which could allow application of trained models to totally unseen datasets. A few training tricks can further boost the segmentation performance, including uneven class weights in the cross-entropy loss function, well-designed learning rate scheduler, larger image crops for contextual information, and additional loss terms for unbalanced classes. We also found that segmentation performance can benefit from group normalization layer and Atrous Spatial Pyramid Pooling module, thanks to their more reliable statistics estimation and improved semantic understanding, respectively. We participated in the 6th Cell Tracking Challenge (CTC) held at IEEE International Symposium on Biomedical Imaging (ISBI) 2021 using one of the developed variants. Our method was evaluated as the best runner up during the initial submission for the primary track, and also secured the 3rd place in an additional round of competition in preparation for the summary publication.

READ FULL TEXT

page 3

page 4

page 5

page 7

page 8

page 10

page 12

page 13

research
02/21/2018

Multiclass Weighted Loss for Instance Segmentation of Cluttered Cells

We propose a new multiclass weighted loss function for instance segmenta...
research
04/07/2021

Contour Proposal Networks for Biomedical Instance Segmentation

We present a conceptually simple framework for object instance segmentat...
research
06/02/2023

DaTaSeg: Taming a Universal Multi-Dataset Multi-Task Segmentation Model

Observing the close relationship among panoptic, semantic and instance s...
research
08/19/2019

IRNet: Instance Relation Network for Overlapping Cervical Cell Segmentation

Cell instance segmentation in Pap smear image remains challenging due to...
research
01/15/2020

Segmentation with Residual Attention U-Net and an Edge-Enhancement Approach Preserves Cell Shape Features

The ability to extrapolate gene expression dynamics in living single cel...
research
02/17/2016

Cell segmentation with random ferns and graph-cuts

The progress in imaging techniques have allowed the study of various asp...

Please sign up or login with your details

Forgot password? Click here to reset