Section 01
[Introduction] SAGAI: Core Introduction to the Generative AI-Based Intelligent Streetscape Assessment and Mapping System
SAGAI (Streetscape Analysis with Generative AI) is an open-source end-to-end workflow developed by Joan Perez and G. Fusco, published in the Geomatica journal. It integrates OpenStreetMap (OSM) street networks, Google Street View (GSV) images, and vision-language models (VLM) to achieve zero-shot, fully automated urban streetscape assessment and interactive mapping. Users only need to define an area and specify assessment criteria using natural language to generate a thematic map with scores, providing a flexible and efficient analysis tool for urban planning and other fields.