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UDF-GMA: Uncertainty Disentanglement and Fusion for General Movement Assessment

UDF-GMA: Uncertainty Disentanglement and Fusion for General Movement Assessment

来源:Arxiv_logoArxiv
英文摘要

General movement assessment (GMA) is a non-invasive tool for the early detection of brain dysfunction through the qualitative assessment of general movements, and the development of automated methods can broaden its application. However, mainstream pose-based automated GMA methods are prone to uncertainty due to limited high-quality data and noisy pose estimation, hindering clinical reliability without reliable uncertainty measures. In this work, we introduce UDF-GMA which explicitly models epistemic uncertainty in model parameters and aleatoric uncertainty from data noise for pose-based automated GMA. UDF-GMA effectively disentangles uncertainties by directly modelling aleatoric uncertainty and estimating epistemic uncertainty through Bayesian approximation. We further propose fusing these uncertainties with the embedded motion representation to enhance class separation. Extensive experiments on the Pmi-GMA benchmark dataset demonstrate the effectiveness and generalisability of the proposed approach in predicting poor repertoire.

Zeqi Luo、Ali Gooya、Edmond S. L. Ho

神经病学、精神病学医学研究方法基础医学临床医学计算技术、计算机技术

Zeqi Luo,Ali Gooya,Edmond S. L. Ho.UDF-GMA: Uncertainty Disentanglement and Fusion for General Movement Assessment[EB/OL].(2025-07-07)[2025-07-16].https://arxiv.org/abs/2507.04814.点此复制

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