Automatic Shadow Detection in 2D Ultrasound Images
Author(s) -
Qingjie Meng,
Christian F. Baumgartner,
Matthew Sinclair,
R. James Housden,
Martin Rajchl,
Alberto Gómez,
Benjamin Hou,
Nicolas Toussaint,
Veronika A. Zimmer,
Jeremy Tan,
Jacqueline Matthew,
Daniel Rueckert,
Julia A. Schnabel,
Bernhard Kainz
Publication year - 2018
Publication title -
lecture notes in computer science
Language(s) - English
Resource type - Book series
SCImago Journal Rank - 0.249
H-Index - 400
eISSN - 1611-3349
pISSN - 0302-9743
DOI - 10.1007/978-3-030-00807-9_7
Subject(s) - computer science , shadow (psychology) , artificial intelligence , computer vision , landmark , segmentation , acoustic shadow , similarity (geometry) , pixel , biometrics , pattern recognition (psychology) , image (mathematics) , ultrasound , acoustics , psychology , physics , psychotherapist
Automatically detecting acoustic shadows is of great importance for automatic 2D ultrasound analysis ranging from anatomy segmentation to landmark detection. However, variation in shape and similarity in intensity to other structures make shadow detection a very challenging task. In this paper, we propose an automatic shadow detection method to generate a pixel-wise, shadow-focused confidence map from weakly labelled, anatomically-focused images. Our method: (1) initializes potential shadow areas based on a classification task. (2) extends potential shadow areas using a GAN model. (3) adds intensity information to generate the final confidence map using a distance matrix. The proposed method accurately highlights the shadow areas in 2D ultrasound datasets comprising standard view planes as acquired during fetal screening. Moreover, the proposed method outperforms the state-of-the-art quantitatively and improves failure cases for automatic biometric measurement.
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