DDU-Net

A Domain Decomposition-Based CNN for High-Resolution Image Segmentation on Multiple GPUs

Journal Article (2025)
Author(s)

C. Verburg (TU Delft - Numerical Analysis)

A. Heinlein (TU Delft - Numerical Analysis)

Eric C. Cyr (Sandia National Laboratories, New Mexico)

Research Group
Numerical Analysis
DOI related publication
https://doi.org/10.1109/ACCESS.2025.3561033
More Info
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Publication Year
2025
Language
English
Research Group
Numerical Analysis
Volume number
13
Pages (from-to)
66967 - 66983
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Abstract

The segmentation of ultra-high resolution images poses challenges such as loss of spatial information or computational inefficiency. In this work, a novel approach that combines encoder-decoder architectures with domain decomposition strategies to address these challenges is proposed. Specifically, a domain decomposition-based U-Net (DDU-Net) architecture is introduced, which partitions input images into non-overlapping patches that can be processed independently on separate devices. A communication network is added to facilitate inter-patch information exchange to enhance the understanding of spatial context. Experimental validation is performed on a synthetic dataset that is designed to measure the effectiveness of the communication network. Then, the performance is tested on the DeepGlobe land cover classification dataset as a real-world benchmark data set. The results demonstrate that the approach, which includes inter-patch communication for images divided into 16 × 16 non-overlapping subimages, achieves a 2 - 3% higher intersection over union (IoU) score compared to the same network without inter-patch communication. The performance of the network which includes communication is equivalent to that of a baseline U-Net trained on the full image, showing that our model provides an effective solution for segmenting ultra-high-resolution images while preserving spatial context. The code is available at https://github.com/corne00/DDU-Net.