Investigate Uncertainty Estimation in Transfer Learning Based Active Learning for Medical Image Segmentation

This paper investigates uncertainty estimation for switch learning primarily based on active studying (TLAL) in clinical image segmentation. With the growing availability of medical imaging data, deep mastering fashions have become an effective device for such applications. But the need for manually...

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Bibliographic Details
Published in2024 3rd International Conference for Innovation in Technology (INOCON) pp. 1 - 7
Main Author Thakur, Gaurav
Format Conference Proceeding
LanguageEnglish
Published IEEE 01.03.2024
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Summary:This paper investigates uncertainty estimation for switch learning primarily based on active studying (TLAL) in clinical image segmentation. With the growing availability of medical imaging data, deep mastering fashions have become an effective device for such applications. But the need for manually annotated information for education on these fashions is a primary hassle. Active studying (AL) has been used to sample crucial records from an education set to improve version accuracy. For clinical photo segmentation obligations, a recurrent convolution neural network (RCNN) is used within the TLAL framework to iteratively sample and consist of extra categorized data to improve the mastering method. The main contribution of this paper is to cope with the complicated hassle of uncertainty estimation in clinical photograph segmentation for TLAL. Significantly, an uncertainty rating based on an aggregate of class opportunity and spatial entropy is proposed. The version can perceive the fabulous samples from the pool of unlabeled records. This method is evaluated on lung CT segmentation datasets, and results display that TLAL with uncertainty estimation scores outperforms techniques that rely entirely on elegance probabilities. Moreover, using a reinforcement mastering method, the proposed approach can be more significant than a 10% development in dice scores compared with classical AL baselines. This paper demonstrates the effectiveness of the proposed uncertainty estimation for medical photo segmentation in TLAL strategies.
DOI:10.1109/INOCON60754.2024.10511579