Isaac Corley

Isaac Corley

Director of AI/ML Research

Taylor Geospatial

isaac.a.corley@gmail.com

I'm Isaac — I build and ship geospatial AI from research through production. Currently Director of AI/ML Research at Taylor Geospatial, where I'm leading the team and building the models behind our earth observation research and creating open data products to elevate the geospatial market and community as a whole. Previously I built and shipped the RasterFlow platform at Wherobots for global-scale geospatial inference, and served as PI on the IARPA SMART program at BlackSky.

I maintain widely-used open-source projects — TorchGeo, SMP, and FTW — and publish country-scale and global-scale prediction maps as open data. I write a weekly blog with Caleb Robinson at geospatialml.com covering ML experiments for geospatial applications. Ph.D. in Electrical Engineering from UTSA.

News

Apr 2026

Released the FTW Global Dataset — agricultural field boundaries mapped worldwide for the first time

Fields of The World (FTW) released the first-ever global-scale open dataset of agricultural field boundaries, covering the entire globe using Sentinel-2 imagery. A major milestone for the geospatial open data community.

Apr 2026

Paper accepted to the CVPR Image Matching Workshop in Denver, CO

Our new paper, Are Pretrained Image Matchers Good Enough for SAR–Optical Satellite Registration?, was accepted and now has a landing page online.

Apr 2026

Released Terrabit, a binary earth embedding retrieval app

A fast earth embedding retrieval app that runs entirely in the browser with no backend.

Apr 2026

Guest lectured on Geospatial AI and Deep Learning with PyTorch at Clark University

Guest lecture for Lyndon Estes' class at Clark University, with slides linked below.

Feb 2026

CNG Blog: The Technical Debt of Earth Embedding Products

My blog post on the technical debt of earth embedding products published on the Cloud Native Geospatial (CNG) blog received strong community engagement — covering seven embedding products, interoperability gaps, and what needs to change.

Scroll for more

Projects

TorchGeo

TorchGeo

PyTorchGeospatialRemote Sensing

A PyTorch domain library, similar to torchvision, providing datasets, samplers, transforms, and pre-trained models specific to geospatial data.

Segmentation Models PyTorch

Segmentation Models PyTorch

PythonPyTorchSemantic Segmentation

A library containing a suite of PyTorch-based semantic segmentation decoders along with pretrained timm encoder support.

Fields of the World (FTW)

Fields of the World (FTW)

PythonPyTorchField Boundary Segmentation

A library for advancing machine learning models for instance segmentation of agricultural field boundaries in multispectral satellite imagery.

torchid

torchid

PythonPyTorchCUDA

GPU-accelerated intrinsic dimension estimators in PyTorch — a batched port of scikit-dimension with 12 estimators running end-to-end on CUDA tensors, achieving up to 2725× speedup over CPU baselines.

Selected Publications

CVPR Image Matching Workshop 2026

Are Pretrained Image Matchers Good Enough for SAR–Optical Satellite Registration?

Isaac Corley, Alex Stoken, Gabriele Berton

PRUE: A Practical Recipe for Field Boundary Segmentation at Scale

CVPR 2026

PRUE: A Practical Recipe for Field Boundary Segmentation at Scale

G. Muhawenayo, Caleb Robinson, S. Khanal, Z. Fang, Isaac Corley, A. Wollam, et al.

From Pixels to Patches: Pooling Strategies for Earth Embeddings

ICLR ML4RS 2026

From Pixels to Patches: Pooling Strategies for Earth Embeddings

Isaac Corley, Caleb Robinson, Inbal Becker-Reshef, Juan M. Lavista Ferres

Fields of The World: A Field Guide for Extracting Agricultural Field Boundaries

ICLR ML4RS 2026

Fields of The World: A Field Guide for Extracting Agricultural Field Boundaries

Isaac Corley, Hannah Kerner, Caleb Robinson, Jennifer Marcus

Earth Embeddings as Products: Taxonomy, Ecosystem, and Standardized Access

IGARSS 2026

Earth Embeddings as Products: Taxonomy, Ecosystem, and Standardized Access

Heng Fang, Adam J. Stewart, Isaac Corley, Xiao Xiang Zhu, Hossein Azizpour

HydroChronos: Forecasting Decades of Surface Water Change

ACM SIGSPATIAL 2025

🏆 Best Research Paper Candidate

HydroChronos: Forecasting Decades of Surface Water Change

Daniele Rege Cambrin, Eleonora Poeta, Eliana Pastor, Isaac Corley, Tania Cerquitelli, Elena Baralis, Paolo Garza

InspectVLM: Unified in Theory, Unreliable in Practice

ICCV VISION 2025

InspectVLM: Unified in Theory, Unreliable in Practice

Conor Wallace, Isaac Corley, Jonathan Lwowski

Landsat-Bench: Datasets and Benchmarks for Landsat Foundation Models

ICML TerraBytes 2025

Landsat-Bench: Datasets and Benchmarks for Landsat Foundation Models

Isaac Corley, Lakshay Sharma, Ruth Crasto

Aerial Infrared Health Monitoring of Solar Photovoltaic Farms at Scale

CVPR PBVS 2025

Aerial Infrared Health Monitoring of Solar Photovoltaic Farms at Scale

Isaac Corley, Conor Wallace, Sourav Agrawal, Burton Putrah, Jonathan Lwowski

FLAVARS: A Multimodal Foundational Language and Vision Alignment Model for Remote Sensing

WACV CV4EO 2024

FLAVARS: A Multimodal Foundational Language and Vision Alignment Model for Remote Sensing

Isaac Corley, Simone Fobi Nsutezo, Anthony Ortiz, Caleb Robinson, Rahul Dodhia, Juan M. Lavista Ferres, Peyman Najafirad

A Change Detection Reality Check

ICLR ML4RS 2024

A Change Detection Reality Check

Isaac Corley, Caleb Robinson, Anthony Ortiz

Barely-Visible Surface Crack Detection for Wind Turbine Sustainability

IROS 2024

🏆 Best Application Paper Runner-Up

Barely-Visible Surface Crack Detection for Wind Turbine Sustainability

Sourav Agrawal, Isaac Corley, Conor Wallace, Clovis Vaughn, Jonathan Lwowski

Depth Any Canopy: Leveraging Depth Foundation Models for Canopy Height Estimation

ECCV CV4E 2024

Depth Any Canopy: Leveraging Depth Foundation Models for Canopy Height Estimation

Daniele Rege Cambrin, Isaac Corley, Paolo Garza

ZRG: A Dataset for Multimodal 3D Residential Rooftop Understanding

WACV 2024

ZRG: A Dataset for Multimodal 3D Residential Rooftop Understanding

Isaac Corley, Jonathan Lwowski, Peyman Najafirad

Seeing the roads through the trees: A benchmark for modeling spatial dependencies with aerial imagery

IGARSS 2024

Seeing the roads through the trees: A benchmark for modeling spatial dependencies with aerial imagery

Caleb Robinson, Isaac Corley, Anthony Ortiz, Rahul Dodhia, Juan M. Lavista Ferres, Peyman Najafirad

Revisiting Pre-trained Remote Sensing Model Benchmarks: Resizing and Normalization Matters

CVPR PBVS 2024

Revisiting Pre-trained Remote Sensing Model Benchmarks: Resizing and Normalization Matters

Isaac Corley, Caleb Robinson, Rahul Dodhia, Juan M. Lavista Ferres, Peyman Najafirad

SSL4EO-L: Datasets and Foundation Models for Landsat Imagery

NeurIPS 2023

SSL4EO-L: Datasets and Foundation Models for Landsat Imagery

Adam J. Stewart, Nils Lehmann, Isaac A. Corley, Yi Wang, Yi-Chia Chang, Nassim Ait Ali Braham, Shradha Sehgal, Caleb Robinson, Arindam Banerjee

TorchGeo: Deep Learning with Geospatial Data

ACM SIGSPATIAL 2022

🏆 Best Paper Runner-Up

TorchGeo: Deep Learning with Geospatial Data

Adam J. Stewart, Caleb Robinson, Isaac A. Corley, Anthony Ortiz, Juan M. Lavista Ferres, Arindam Banerjee

Supervising Remote Sensing Change Detection Models with 3D Surface Semantics

ICIP 2022

Supervising Remote Sensing Change Detection Models with 3D Surface Semantics

Isaac Corley, Peyman Najafirad

Scroll for more

Talks & Podcasts

Apr 2026

UT Austin

Cloud Native GeoAI

Guest lecture at UT Austin on Cloud Native GeoAI, with slides and recording linked below.

Watch recording

Apr 2026

Clark University

Geospatial AI and Deep Learning with PyTorch

Guest lecture for Lyndon Estes' class at Clark University, with slides linked below.

Oct 2025

Spatial Stack Podcast

Beyond the Hype: Embeddings, Foundation Models, and the Future of Earth Observation

Joined Matt Forrest's Spatial Stack podcast with Chris Ren to discuss the current state of Geospatial Foundation Models and Embeddings.

Aug 2025

Satellite-Image-Deep-Learning Podcast

Chained Models for High-Res Aerial Solar Fault Detection

Joined Robin Cole's Satellite-Image-Deep-Learning podcast to discuss our CVPR PBVS paper: Aerial Infrared Health Monitoring of Solar Photovoltaic Farms at Scale.

Education

2020-2024
University of Texas at San Antonio

University of Texas at San Antonio

Ph.D. in Electrical Engineering

Advisor: Paul Rad

Thesis: Multimodal Learning for Mapping in Remote Sensing

2016-2018
University of Texas at San Antonio

University of Texas at San Antonio

M.S. in Electrical Engineering

Advisor: Yufei Huang

Thesis: Deep Learning for EEG Spatial Interpolation

2012—2016
Texas A&M University - Kingsville

Texas A&M University - Kingsville

B.S. in Electrical Engineering, Minor in Mathematics

Experience

2026 - Present
Taylor Geospatial

Director of AI/ML Research Taylor Geospatial

Building the AI/ML research team and shipping geospatial foundation models and earth observation pipelines from prototype through production.

2025 - 2026
Wherobots

Senior Machine Learning Engineer Wherobots

Built and scaled geospatial vision models powering the Wherobots spatial analytics platform. Shipped country-scale field boundary predictions and open-sourced prediction maps for 5 countries.

2021 - 2025
Zeitview (formerly DroneBase)

Senior Machine Learning Scientist Zeitview (formerly DroneBase)

Research, develop, train, and deployed computer vision, vision-language models (VLM), and 3D Reconstruction methods at scale for enhancing renewable energy inspections and analytics, including solar farms, wind turbines, commercial and residential rooftops, transmission and distribution stations, and telecom towers.

2024
Microsoft Research

Ph.D. Research Intern Microsoft Research

Advisor: Simone Fobi Nsutezo & Anthony Ortiz

Researched multimodal pretraining methods for large-scale geospatial vision-language datasets.

2021 - 2022
Spruce

Senior Machine Learning Engineer Spruce

Applied state-of-the-art Optical Character Recognition (OCR) and Text Summarization methods to parse real estate and financial documents.

2021 - 2022
BlackSky

Senior Machine Learning Engineer BlackSky

Served as PI on the IARPA SMART program. Built and deployed models powering the Spectra AI platform's satellite image analytics.

2019 - 2020
HouseCanary

Senior Data Scientist HouseCanary

Developed and deployed computer vision models for extracting insights and features from real estate property images for improving HouseCanary's Automated Valuation Model (AVM) and property recommender system utilized by real estate investors.

2018 - 2019
Booz Allen Hamilton

Senior Data Scientist Booz Allen Hamilton

Researched and developed prototypes for deep learning-based image steganography detection and removal as well as adversarial domain generation detection.

2016 - 2018
Southwest Research Institute (SwRI)

Research Engineer Southwest Research Institute (SwRI)

Advisor: Kenneth Holladay

Developed and deployed software updates to the A-10 Warthog aircraft as well as researched machine learning methods for detecting engine stalls and exploiting the MIL-STD-1553 communications bus.

2015
Oak Ridge National Laboratory (ORNL)

Research Intern Oak Ridge National Laboratory (ORNL)

Advisor: Paul Ewing

Recorded and annotated a dataset of seismic signals of human and vehicle activity and trained machine learning methods to detect this activity.

© 2026 Isaac Corley