Cross-Dataset Generalization For Retinal Lesions Segmentation
- URL: http://arxiv.org/abs/2405.08329v1
- Date: Tue, 14 May 2024 05:52:01 GMT
- Title: Cross-Dataset Generalization For Retinal Lesions Segmentation
- Authors: Clément Playout, Farida Cheriet,
- Abstract summary: This study characterizes several known datasets and compares different techniques that have been proposed to enhance the generalisation performance of a model.
Our results provide insights into how to combine coarsely labelled data with a finely-grained dataset in order to improve the lesions segmentation.
- Score: 2.1160877779256126
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Identifying lesions in fundus images is an important milestone toward an automated and interpretable diagnosis of retinal diseases. To support research in this direction, multiple datasets have been released, proposing groundtruth maps for different lesions. However, important discrepancies exist between the annotations and raise the question of generalization across datasets. This study characterizes several known datasets and compares different techniques that have been proposed to enhance the generalisation performance of a model, such as stochastic weight averaging, model soups and ensembles. Our results provide insights into how to combine coarsely labelled data with a finely-grained dataset in order to improve the lesions segmentation.
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