Semantic image segmentation based on spatial relationships and inexact graph matching
Citation:
Chopin, J., Fasquel, J. -B., Mouchère, H., Dahyot, R., and Bloch, I., "Semantic image segmentation based on spatial relationships and inexact graph matching," 2020 Tenth International Conference on Image Processing Theory, Tools and Applications (IPTA), Paris, France, 2020, pp. 1-6Download Item:
Abstract:
We propose a method for semantic image segmentation, combining a deep neural network and spatial relationships between image regions, encoded in a graph representation of the scene. Our proposal is based on inexact graph matching, formulated as a quadratic assignment problem applied to the output of the neural network. The proposed method is evaluated on a public dataset used for segmentation of images of faces, and compared to the U-Net deep neural network that is widely used for semantic segmentation. Preliminary results show that our approach is promising. In terms of Intersection-over-Union of region bounding boxes, the improvement is of 2.4% in average, compared to U-Net, and up to 24.4% for some regions. Further improvements are observed when reducing the size of the training dataset (up to 8.5% in average).
Author's Homepage:
http://people.tcd.ie/dahyotr
Author: Dahyot, Rozenn
Other Titles:
10th International Conference on Image Processing Theory, Tools and Applications, IPTA 2020Type of material:
Conference PaperCollections
Availability:
Full text availableDOI:
http://dx.doi.org/10.1109/IPTA50016.2020.9286611Metadata
Show full item recordThe following license files are associated with this item: