
This tutorial presents the main segmentation tools available in TagLab and demonstrates how to begin working on a project by adding an orthographic image as a new map. It explains how to define image metadata such as acquisition date and pixel size, which are required for measurements and multi-temporal analysis. The video then introduces different annotation and segmentation approaches, including annotation points, AI-assisted segmentation tools (such as positive and negative click segmentation, watershed segmentation, and SAM-based segmentation), as well as manual freehand segmentation and region editing. These tools allow users to identify regions in the image, assign labels, and export the resulting annotations and statistics for further analysis.
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