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Weakly Semi-Supervised Detection in Lung Ultrasound Videos

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arxiv 2308.04463 v1 pith:QS5V44HY submitted 2023-08-08 eess.IV

Weakly Semi-Supervised Detection in Lung Ultrasound Videos

classification eess.IV
keywords detectionmedicalsupervisionvideo-levelvideosannotationdataframework
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Frame-by-frame annotation of bounding boxes by clinical experts is often required to train fully supervised object detection models on medical video data. We propose a method for improving object detection in medical videos through weak supervision from video-level labels. More concretely, we aggregate individual detection predictions into video-level predictions and extend a teacher-student training strategy to provide additional supervision via a video-level loss. We also introduce improvements to the underlying teacher-student framework, including methods to improve the quality of pseudo-labels based on weak supervision and adaptive schemes to optimize knowledge transfer between the student and teacher networks. We apply this approach to the clinically important task of detecting lung consolidations (seen in respiratory infections such as COVID-19 pneumonia) in medical ultrasound videos. Experiments reveal that our framework improves detection accuracy and robustness compared to baseline semi-supervised models, and improves efficiency in data and annotation usage.

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