Author
Listed:
- Ghieth Alkhateeb
(Chair of Landscape Architecture, Estonian University of Life Sciences, Fr. R. Kreutzwaldi 1, 51006 Tartu, Estonia)
- Martti Veldi
(Chair of Landscape Architecture, Estonian University of Life Sciences, Fr. R. Kreutzwaldi 1, 51006 Tartu, Estonia)
- Joanna Tamar Storie
(Chair of Landscape Architecture, Estonian University of Life Sciences, Fr. R. Kreutzwaldi 1, 51006 Tartu, Estonia)
- Mart Külvik
(Chair of Landscape Architecture, Estonian University of Life Sciences, Fr. R. Kreutzwaldi 1, 51006 Tartu, Estonia
Chair of Environmental Protection and Landscape Management, Estonian University of Life Sciences, Fr. R. Kreutzwaldi 5, 51006 Tartu, Estonia)
Abstract
Landscape Character Assessments (LCAs) support planning decisions by offering structured descriptions of landscape character. However, producing these texts is often resource-intensive and shaped by subjective judgement. This study explores whether Generative Artificial Intelligence (GenAI), specifically ChatGPT, can support the drafting of LCA descriptions using a structured, prompt-based framework. Applied to Harku Municipality in Estonia, the method integrates spatial input, reference material, and standardised prompts to generate consistent descriptions of landscape character areas (LCAs) and facilitate scenario building. The results show that ChatGPT outputs align with core LCA components and maintain internal coherence, although variations in terminology and ecological specificity require expert review. A stakeholder role play using ChatGPT highlighted its potential for enhancing early-stage planning, education, and participatory dialogue. The limitations include the reliance on prompt quality, static inputs, and the absence of real-time community validation. Recommendations include piloting AI-assisted workflows in education and practice, adopting prompt protocols, and prioritising human oversight, both experts and stakeholders, to ensure contextual relevance and build trust. This research proposes a practical framework for embedding GenAI into planning processes while preserving the social and interpretive dimensions central to landscape governance.
Suggested Citation
Ghieth Alkhateeb & Martti Veldi & Joanna Tamar Storie & Mart Külvik, 2025.
"AI-Assisted Landscape Character Assessment: A Structured Framework for Text Generation, Scenario Building, and Stakeholder Engagement Using ChatGPT,"
Land, MDPI, vol. 14(9), pages 1-23, September.
Handle:
RePEc:gam:jlands:v:14:y:2025:i:9:p:1842-:d:1746171
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