omparing the Segment Anything Model with Region Growing Algorithms in the detection of irrigated croplands
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Abstract
The advance of remote sensing and geotechnologies has helped to solve agricultural-related problems, especially
those connected to management practices such as irrigation. Image segmentation techniques, for example, bring the
possibility of identifying areas and borders of irrigated croplands, a factor that can enhance area and yield estimates. In this
research area, a recent innovation is the Segment Anything Model (SAM) algorithm. Thus, this study aimed to compare
SAM with two well-known remote sensing image segmentation algorithms, Region Growing and Baatz-Schape, to delineate
irrigated agricultural lands in the Brazilian semiarid region. The findings indicate that SAM has the potential to generate
homogeneous segments when examining such lands. However, it requires refinements in order to distinguish fields with
varying crops.
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