A dual adversarial calibration framework for automatic fetal brain biometry

Gao Y., Lee L., Droste R., Craik R., Beriwal S., Papageorghiou A., Noble A.

This paper presents a novel approach to automatic fetal brain biometry motivated by needs in low- and medium-income countries. Specifically, we leverage high-end (HE) ultrasound images to build a biometry solution for low-cost (LC) point-of-care ultrasound images. We propose a novel unsupervised domain adaptation approach to train deep models to be invariant to significant image distribution shift between the image types. Our proposed method, which employs a Dual Adversarial Calibration (DAC) framework, consists of adversarial pathways which enforce model invariance to; i) adversarial perturbations in the feature space derived from LC images, and ii) appearance domain discrepancy. Our Dual Adversarial Calibration method estimates transcerebellar diameter and head circumference on images from low-cost ultrasound devices with a mean absolute error (MAE) of 2.43mm and 1.65mm, compared with 7.28 mm and 5.65 mm respectively for SOTA.

DOI

10.1109/ICCVW54120.2021.00363

Type

Conference paper

Publisher

IEEE

Publication Date

2021-11-24T00:00:00+00:00

Pages

3239 - 3247

Total pages

8

Keywords

FFR

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