Ricardo (2022-04-30 21:13):
#paper DOI: 10.1109/WACV51458.2022.00162. Uncertainty Learning towards Unsupervised Deformable Medical Image Registration. WACV(2022) 这篇文章没啥新意,感觉有点灌水。总而言之,在前列腺MRI图像中的配准工作,加入了分割标签作为形变场的约束,同时提出了一种基于laplace分布的模型不确定度估计的方法。嗯,没了。
Uncertainty Learning towards Unsupervised Deformable Medical Image Registration
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Abstract:
Uncertainty estimation in medical image registration enables surgeons to evaluate the operative risk based on the trustworthiness of the registered image data thus of paramount importance for practical clinical applications. Despite the recent promising results obtained with deep unsupervised learning-based registration methods, reasoning about uncertainty of unsupervised registration models remains largely unexplored. In this work, we propose a predictive module to learn the registration and uncertainty in correspondence simultaneously. Our framework introduces empirical randomness and registration error based uncertainty prediction. We systematically assess the performances on two MRI datasets with different ensemble paradigms. Experimental results highlight that our proposed framework significantly improves the registration accuracy and uncertainty compared with the baseline.
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