Python toolbox for urban restorative quality assessment from street-view imagery (assigned to Jiale Guo)

The goal of this project is to develop a Python toolkit to assess urban visual restorative quality from street-level imagery. The toolbox will combine computer vision features with perception-based scores derived from Vision-Language Models, supporting machine learning analysis and interactive visualisation. A case study based on open street-view data will demonstrate the workflow.

Languages: Python
Suggested SW/Libraries: Jupyter Notebook, pandas, NumPy, scikit-learn, GeoPandas, matplotlib

Co-tutor: Prof. Lorenzo Gianquintieri

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