SOTAVerified

An expert-driven data generation pipeline for histological images

2024-06-03Code Available0· sign in to hype

Roberto Basla, Loris Giulivi, Luca Magri, Giacomo Boracchi

Code Available — Be the first to reproduce this paper.

Reproduce

Code

Abstract

Deep Learning (DL) models have been successfully applied to many applications including biomedical cell segmentation and classification in histological images. These models require large amounts of annotated data which might not always be available, especially in the medical field where annotations are scarce and expensive. To overcome this limitation, we propose a novel pipeline for generating synthetic datasets for cell segmentation. Given only a handful of annotated images, our method generates a large dataset of images which can be used to effectively train DL instance segmentation models. Our solution is designed to generate cells of realistic shapes and placement by allowing experts to incorporate domain knowledge during the generation of the dataset.

Tasks

Reproductions