Published 2024 | Version 2.0.0
Conference paper Open

Deep Conditional Census-Constrained Clustering (DeepC4) for Large-scale Multi-task Spatial Disaggregation of Urban Morphology

  • 1. ROR icon University of Cambridge
  • 2. UKRI Centre for Doctoral Training (CDT) in the Application of Artificial Intelligence to the study of Environmental Risks (AI4ER)
  • 3. Cambridge University Centre for Risk in the Built Environment (CURBE)
  • 4. ROR icon Deutsches Zentrum für Luft- und Raumfahrt e. V. (DLR)
  • 5. ROR icon University of Bonn

Description

This Zenodo record contains the datasets of our research (Spatial Disaggregation of Rwandan Building Exposure and Vulnerability via Weakly Supervised Conditional Census-Constrained Clustering (C4) using Earth Observation Data) submiited for American Geophysical Union Annual Meeting 2024 to be held in Washington, D.C. on 9th-13th of December 2024. The GitHub repository of MATLAB & Python codes can be accessed here: github.com/riskaudit/DeepC4. If you have any inquiries or would like to access any related materials, please feel free to visit my website (joshuadimasaka.com) or our project website (riskaudit.github.io), follow our project's GitHub repository (github.com/riskaudit), or send an email to jtd33@cam.ac.uk.

History of Versions: 

  • 1.0.0 - Initial upload (C4)
  • 1.1.0 - Updated output_yMapsAndQGISStyles.zip (DeepC4)
    • Investigated several dimensional reduction algorithms.
    • Incorporated AutoEncoders (deep, flexible, and nonlinear capability) in achieving an efficient latent representation that is derived from multiple EO signals and informative for clustering of target urban morphology clustering classes.
  • 1.2.0 - Updated output_yMapsAndQGISStyles.zip (DeepC4) and Added output_PrecisionMapsAndQGISStyles.zip.
    • Significantly improved the constrained clustering algorithm (i.e., Minimum Cost Flow) by using the side information as initial point for clustering iteration.
    • Improved metrics with consideration of imbalance class labels.
    • Refined training set (to 20 sectors) that provides limited and weak supervision.
    • Revised mapping scheme between target labels and side information.
  • 2.0.0 - Corrected output_yMapsAndQGISStyles.zip (DeepC4)
    • Made a correction related to the number of dwellings considered.
    • Uploaded additional files (e.g., input preprocessed data, resulting trained model learning vs epoch, and other figures and flowcharts used for manuscript write-up).
    • Added AGU official poster.

Notes (English)

#AGU24 Presentation Details:

✅ NH23B - Advancing Building & Population Inventories to Support Equity & Inclusion
📍 Hall B-C (Poster Hall), Walter E. Washington Convention Center
🗓️ Tuesday, 10 Dec 2024
🕚 13:40 - 17:30 EST
🌐 https://agu.confex.com/agu/agu24/meetingapp.cgi/Paper/1610379  
#️⃣ Poster Number: NH23B-2291
🤝 iPoster: https://agu24.ipostersessions.com/Default.aspx?s=5F-F4-76-49-91-04-29-F9-F5-AD-B8-AC-5A-6E-54-66

Files

aguPoster.pdf

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Additional details

Funding

UKRI Centre for Doctoral Training in Application of Artificial Intelligence to the study of Environmental Risks (AI4ER) EP/S022961/1
UK Research and Innovation
Helmholtz Visiting Researcher Grant Helmholtz Information & Data Science Academy (HIDA)
Helmholtz Association of German Research Centres

Software

Repository URL
https://github.com/riskaudit/DeepC4
Programming language
MATLAB, Python
Development Status
Wip

Biodiversity

County
Rwanda