Agentic AI for Simulations Workflows
Vadim Elisseev, Robert Firth, et al.
SC 2025
We present and evaluate a weakly-supervised methodology to quantify the spatiotemporal distribution of urban forests based on remotely sensed data with close-to-zero human interaction. Successfully training machine learning models for semantic segmentation typically depends on the availability of high-quality labels. We evaluate the benefit of high-resolution, three-dimensional point cloud data (LiDAR) as source of noisy labels in order to train models for the localization of trees in orthophotos. As proof of concept we sense Hurricane Sandy's impact on urban forests in Coney Island, New York City (NYC) and reference it to less impacted urban space in Brooklyn, NYC.
Vadim Elisseev, Robert Firth, et al.
SC 2025
Chih-kai Ting, Karl Munson, et al.
AAAI 2023
Sahil Suneja, Yufan Zhuang, et al.
ACM TOSEM
Ziv Nevo, Orna Raz, et al.
ASE 2025