Multi-task deep learning for image segmentation using recursive approximation tasks
Rihuan Ke, Aur\'elie Bugeau, Nicolas Papadakis, Mark Kirkland, Peter, Schuetz, Carola-Bibiane Sch\"onlieb

TL;DR
This paper introduces a multi-task deep learning framework that leverages recursive approximation tasks and sparse annotations to achieve effective image segmentation with minimal pixel-level labels, reducing annotation costs.
Contribution
The work presents a novel recursive approximation approach within a multi-task learning framework that efficiently learns from partial and coarse labels for segmentation.
Findings
Effective segmentation with minimal precise labels
Recursive approximation improves boundary accuracy
Applicable to microscopy and ultrasound images
Abstract
Fully supervised deep neural networks for segmentation usually require a massive amount of pixel-level labels which are manually expensive to create. In this work, we develop a multi-task learning method to relax this constraint. We regard the segmentation problem as a sequence of approximation subproblems that are recursively defined and in increasing levels of approximation accuracy. The subproblems are handled by a framework that consists of 1) a segmentation task that learns from pixel-level ground truth segmentation masks of a small fraction of the images, 2) a recursive approximation task that conducts partial object regions learning and data-driven mask evolution starting from partial masks of each object instance, and 3) other problem oriented auxiliary tasks that are trained with sparse annotations and promote the learning of dedicated features. Most training images are only…
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