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Communication Dans Un Congrès Année : 2023

Toward few pixel annotations for 3D segmentation of material from electron tomography

Cyril Li
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Christophe Ducottet
Maxime Moreaud

Résumé

Segmentation is a notorious tedious task, especially for 3D volume of material obtained via electron tomography. In this paper, we propose a new method for the segmentation of such data with only few partially labeled slices extracted from the volume. This method handles very restricted training data, and particularly less than a slice of the volume. Moreover, unlabeled data also contributes to the segmentation. To achieve this, a combination of self-supervised and contrastive learning methods are used on top of any 2D segmentation backbone. This method has been evaluated on three real electron tomography volumes.
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Dates et versions

ujm-04006630 , version 1 (27-02-2023)

Identifiants

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Cyril Li, Christophe Ducottet, Sylvain Desroziers, Maxime Moreaud. Toward few pixel annotations for 3D segmentation of material from electron tomography. International Conference on Computer Vision Theory and Applications, VISAPP 2023, Feb 2023, Lisbonne, Portugal. pp.124-131, ⟨10.5220/0011658500003417⟩. ⟨ujm-04006630⟩
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