Spatiotemporal Attention for Realtime Segmentation of Corrupted Sequential Ultrasound Data

Laura Graf, Sven Mischkewitz, Lasse Hansen, Mattias P. Heinrich

Abstract

Image-guided diagnostics with AI assistance, e.g. compression-ultrasound for detecting deep vein thrombosis, requires stable, robust and real-time capable analysis algorithms that best support the user. When using anatomical segmentations for user guidance the spatiotemporal consistency is of great importance, but point-of-care modalities deliver signal which in many frames is hard to interpret. Since 2D+t models with 3D CNNs are not applicable for many mobile end devices,we propose a newspatiotemporal attention approach that re-uses deep backbone features from previous frames to learn and optimally fuse all available image information. Proof-of-concept experiments demonstrate an improvement of over 8% for the segmentation compared to simpler 2D+t models (using several frames as multi-channel input).
OriginalspracheEnglisch
TitelBildverarbeitung für die Medizin 2022 - BVM 2022
Seitenumfang6
Herausgeber (Verlag)Springer
Erscheinungsdatum01.02.2022
Seiten235-240
DOIs
PublikationsstatusVeröffentlicht - 01.02.2022
VeranstaltungGerman Workshop on Medical Image Computing 2022 - Heidelberg, Deutschland
Dauer: 26.06.202228.06.2022
https://www.bvm-workshop.org/wp-content/uploads/2022/06/23062022_FinalProgram_Compacted.pdf

Strategische Forschungsbereiche und Zentren

  • Zentren: Zentrum für Künstliche Intelligenz Lübeck (ZKIL)

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