CVAug 14, 2020

Self-supervised Contrastive Video-Speech Representation Learning for Ultrasound

arXiv:2008.06607v144 citations
AI Analysis

This addresses the challenge of expensive manual annotations in medical imaging by enabling self-supervised learning for ultrasound analysis.

The paper tackled the problem of learning useful representations from unlabeled multi-modal ultrasound video and speech data, achieving strong performance on downstream tasks like standard plane detection and eye-gaze prediction.

In medical imaging, manual annotations can be expensive to acquire and sometimes infeasible to access, making conventional deep learning-based models difficult to scale. As a result, it would be beneficial if useful representations could be derived from raw data without the need for manual annotations. In this paper, we propose to address the problem of self-supervised representation learning with multi-modal ultrasound video-speech raw data. For this case, we assume that there is a high correlation between the ultrasound video and the corresponding narrative speech audio of the sonographer. In order to learn meaningful representations, the model needs to identify such correlation and at the same time understand the underlying anatomical features. We designed a framework to model the correspondence between video and audio without any kind of human annotations. Within this framework, we introduce cross-modal contrastive learning and an affinity-aware self-paced learning scheme to enhance correlation modelling. Experimental evaluations on multi-modal fetal ultrasound video and audio show that the proposed approach is able to learn strong representations and transfers well to downstream tasks of standard plane detection and eye-gaze prediction.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes