Efficient Multi-Organ Segmentation Using SpatialConfiguration-Net with Low GPU Memory Requirements

Franz Thaler, Christian Payer, Horst Bischof, Darko Stern

Publikation: KonferenzbeitragPaper

Abstract

Even though many semantic segmentation methods exist that are able to perform well on many medical datasets, often, they are not designed for direct use in clinical practice. The two main concerns are generalization to unseen data with a different visual appearance, e.g., images acquired using a different scanner, and efficiency in terms of computation time and required Graphics Processing Unit (GPU) memory. In this work, we employ a multi-organ segmentation model based on the SpatialConfiguration-Net (SCN), which integrates prior knowledge of the spatial configuration among the labelled organs to resolve spurious responses in the network outputs. Furthermore, we modified the architecture of the segmentation model to reduce its memory footprint as much as possible without drastically impacting the quality of the predictions. Lastly, we implemented a minimal inference script for which we optimized both, execution time and required GPU memory
Originalspracheenglisch
Seitenumfang8
PublikationsstatusVeröffentlicht - 2021
Veranstaltung24th International Conference on Medical Image Computing and Computer Assisted Intervention: MICCAI 2021 - Virtual, Strasbourg, Frankreich
Dauer: 27 Sept. 20211 Okt. 2021

Konferenz

Konferenz24th International Conference on Medical Image Computing and Computer Assisted Intervention
KurztitelMICCAI 2021
Land/GebietFrankreich
OrtStrasbourg
Zeitraum27/09/211/10/21

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