Hyunho Lee

Arizona State University. Tempe, AZ, USA

hlee_pic1.png

5515 Lattie F. Coor Hall

976 S. Forest Mall

Tempe, AZ 85281

I am currently studying at Arizona State University as a GIS Ph.D Student in Tempe, United States. I am a member of CICI (Cyber Infrastructure and Computational Intelligence) lab advised by Dr. Wenwen Li.

I am focusing on deep learning for geospatial data, particularly satellite imagery, with an emphasis on model interpretability. Additionally, I am interested in the applications of deep learning in water resources management. Currently, I am working on waterbody segmentation, including flood detection, using satellite data and deep learning models.

Previously, I received an M.S. degree in Computer Science from KAIST (Korea Advanced Institute of Science and Technology), where I was advised by Dr. Kwangyun Wohn.

News

Dec 24, 2025 📢 My first-author paper has been accepted in ISPRS Journal of Photogrammetry and Remote Sensing (impact factor: 12.2)!
Dec 16, 2025 🚀 I presented a poster titled “Multimodal Post‑Flood Water Extent Mapping With SAR and Incomplete Multispectral Data Using a Spatially Masked Adaptive Gated Network” at the 2025 AGU Fall Meeting in New Orleans, Louisiana.
Nov 03, 2025 🎉 I have passed my PhD proposal defense and become a PhD candidate!
Sep 24, 2025 🏅 Honored to be part of the Prithvi-Geospatial AI Foundation Model Team, recipients of the 2025 AGU Open Science Recognition Prize.
Apr 03, 2025 📢 Our new preprint “Geospatial Artificial Intelligence for Satellite-Based Flood Extent Mapping: Concepts, Advances, and Future Perspectives” is now available on arXiv!

Selected Publications

  1. journal article
    A Spatially Masked Adaptive Gated Network for multimodal post-flood water extent mapping using SAR and incomplete multispectral data
    Hyunho Lee and Wenwen Li
    ISPRS Journal of Photogrammetry and Remote Sensing, 2026
  2. journal article
    Improving interpretability of deep active learning for flood inundation mapping through class ambiguity indices using multi-spectral satellite imagery
    Hyunho Lee and Wenwen Li
    Remote Sensing of Environment, 2024