Vegetation generally appears scattered in drylands. Its structure, composition and spatial patterns are key controls of biotic interactions, water, and nutrient cycles. Applying segmentation methods to very high-resolution images for monitoring changes in vegetation cover can provide relevant information for dryland conservation ecology. For this reason, improving segmentation methods and understanding the effect of spatial resolution on segmentation results is key to improve dryland vegetation monitoring. We explored and analyzed the accuracy of Object-Based Image Analysis (OBIA) and Mask Region-based Convolutional Neural Networks (Mask R-CNN) and the fusion of both methods in the segmentation of scattered vegetation in a dryland ecosystem. As a case study, we mapped Ziziphus lotus, the dominant shrub of a habitat of conservation priority in one of the driest areas of Europe. Our results show for the first time that the fusion of the results from OBIA and Mask R-CNN increases the accuracy of the segmentation of scattered shrubs up to 25% compared to both methods separately. Hence, by fusing OBIA and Mask R-CNNs on very high-resolution images, the improved segmentation accuracy of vegetation mapping would lead to more precise and sensitive monitoring of changes in biodiversity and ecosystem services in drylands.

Guirado, E., Blanco Sacristan, J., Rodriguez-Caballero, E., Tabik, S., Alcaraz-Segura, D., Martinez-Valderrama, J., et al. (2021). Mask R-CNN and OBIA fusion improves the segmentation of scattered vegetation in very high-resolution optical sensors. SENSORS, 21(1), 1-17 [10.3390/s21010320].

Mask R-CNN and OBIA fusion improves the segmentation of scattered vegetation in very high-resolution optical sensors

Blanco Sacristan J.;
2021

Abstract

Vegetation generally appears scattered in drylands. Its structure, composition and spatial patterns are key controls of biotic interactions, water, and nutrient cycles. Applying segmentation methods to very high-resolution images for monitoring changes in vegetation cover can provide relevant information for dryland conservation ecology. For this reason, improving segmentation methods and understanding the effect of spatial resolution on segmentation results is key to improve dryland vegetation monitoring. We explored and analyzed the accuracy of Object-Based Image Analysis (OBIA) and Mask Region-based Convolutional Neural Networks (Mask R-CNN) and the fusion of both methods in the segmentation of scattered vegetation in a dryland ecosystem. As a case study, we mapped Ziziphus lotus, the dominant shrub of a habitat of conservation priority in one of the driest areas of Europe. Our results show for the first time that the fusion of the results from OBIA and Mask R-CNN increases the accuracy of the segmentation of scattered shrubs up to 25% compared to both methods separately. Hence, by fusing OBIA and Mask R-CNNs on very high-resolution images, the improved segmentation accuracy of vegetation mapping would lead to more precise and sensitive monitoring of changes in biodiversity and ecosystem services in drylands.
Articolo in rivista - Articolo scientifico
Deep-learning; Fusion; Mask R-CNN; Object-based; Optical sensors; Scattered vegetation; Very high-resolution;
English
2021
21
1
1
17
320
none
Guirado, E., Blanco Sacristan, J., Rodriguez-Caballero, E., Tabik, S., Alcaraz-Segura, D., Martinez-Valderrama, J., et al. (2021). Mask R-CNN and OBIA fusion improves the segmentation of scattered vegetation in very high-resolution optical sensors. SENSORS, 21(1), 1-17 [10.3390/s21010320].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/528870
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