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Communication Dans Un Congrès Année : 2021

New hierarchy-based segmentation layer: towards automatic marker proposal

Résumé

Image segmentation is an ill-posed problem by definition, as it is not always possible to automatically select which object appearing in an image is the object of interest. To deal with this issue, prior knowledge in the form of human-given markers can be included in the segmentation pipeline. Even though user interaction can drastically improve segmentation results, it is an expensive resource, and finding ways to reduce human effort on an interactive segmentation loop is of great interest. In this work, we propose a new segmentation layer to be used with deep neural networks, which allows us to create and train in an endto-end fashion a marker creation network. To train the network, we propose a loss function composed of: a segmentation loss using the proposed differentiable segmentation layer; and a set of regularization functions that enforce the desired characteristics on the produced markers. We showed that by using the proposed layer and loss function, we can train the network to automatically generate markers that recover a good segmentation and have desirable shape characteristics. This behavior is observed on the training dataset, as well as on four unseen datasets.
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Dates et versions

hal-03432848 , version 1 (17-11-2021)

Identifiants

  • HAL Id : hal-03432848 , version 1

Citer

Gabriel Barbosa da Fonseca, Romain Negrel, Benjamin Perret, Jean Cousty, Silvio Jamil Ferzoli Guimarães. New hierarchy-based segmentation layer: towards automatic marker proposal. SIBGRAPI – Conference on Graphics, Patterns and Images, Oct 2021, Gramado (virtual), Brazil. ⟨hal-03432848⟩
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