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Style Curriculum Learning for Robust Medical Image Segmentation

Authors :
Liu, Zhendong
Manh, Van
Yang, Xin
Huang, Xiaoqiong
Lekadir, Karim
Campello, Víctor
Ravikumar, Nishant
Frangi, Alejandro F
Ni, Dong
Publication Year :
2021

Abstract

The performance of deep segmentation models often degrades due to distribution shifts in image intensities between the training and test data sets. This is particularly pronounced in multi-centre studies involving data acquired using multi-vendor scanners, with variations in acquisition protocols. It is challenging to address this degradation because the shift is often not known \textit{a priori} and hence difficult to model. We propose a novel framework to ensure robust segmentation in the presence of such distribution shifts. Our contribution is three-fold. First, inspired by the spirit of curriculum learning, we design a novel style curriculum to train the segmentation models using an easy-to-hard mode. A style transfer model with style fusion is employed to generate the curriculum samples. Gradually focusing on complex and adversarial style samples can significantly boost the robustness of the models. Second, instead of subjectively defining the curriculum complexity, we adopt an automated gradient manipulation method to control the hard and adversarial sample generation process. Third, we propose the Local Gradient Sign strategy to aggregate the gradient locally and stabilise training during gradient manipulation. The proposed framework can generalise to unknown distribution without using any target data. Extensive experiments on the public M\&Ms Challenge dataset demonstrate that our proposed framework can generalise deep models well to unknown distributions and achieve significant improvements in segmentation accuracy.<br />Comment: Accepted by MICCAI-2021

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2108.00402
Document Type :
Working Paper