RepSNet: A Nucleus Instance Segmentation model based on Boundary Regression and Structural Re-parameterization
Shengchun Xiong, Xiangru Li, Yunpeng Zhong, Wanfen Peng

TL;DR
RepSNet is a novel neural network for nucleus segmentation in histopathological images that combines boundary regression, a voting mechanism, and structural re-parameterization to improve accuracy and efficiency.
Contribution
It introduces a boundary voting mechanism and a re-parameterizable encoder-decoder structure for improved nucleus segmentation and computational efficiency.
Findings
Outperforms benchmark models in segmentation accuracy
Reduces model parameters and computational load
Effectively handles overlapping nuclei in images
Abstract
Pathological diagnosis is the gold standard for tumor diagnosis, and nucleus instance segmentation is a key step in digital pathology analysis and pathological diagnosis. However, the computational efficiency of the model and the treatment of overlapping targets are the major challenges in the studies of this problem. To this end, a neural network model RepSNet was designed based on a nucleus boundary regression and a structural re-parameterization scheme for segmenting and classifying the nuclei in H\&E-stained histopathological images. First, RepSNet estimates the boundary position information (BPI) of the parent nucleus for each pixel. The BPI estimation incorporates the local information of the pixel and the contextual information of the parent nucleus. Then, the nucleus boundary is estimated by aggregating the BPIs from a series of pixels using a proposed boundary voting mechanism…
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