This repository provides a dataset for training and evaluating tree detectors in urban environments with aerial imagery. The dataset includes:
The dataset covers eight cities and six climate zones in California across three years. The following table provides a summary. The three right-most columns give the number of annotated trees in each year.
City | Climate Zone | Number of Crops | 2016 | 2018 | 2020 |
---|---|---|---|---|---|
Bishop | Interior West | 10 | - | - | 682 |
Chico | Inland Valleys | 99 | - | 8,187 | 8,164 |
Claremont | Inland Empire | 92 | 4,858 | 4,880 | 4,678 |
Eureka | Northern California Coast | 21 | - | - | 2,134 |
Long Beach | Southern California Coast | 100 | 6,470 | 6,403 | 5,845 |
Palm Springs | Southwest Desert | 100 | 4,433 | 4,707 | 4,109 |
Riverside | Inland Empire | 90 | 5,015 | 4,400 | 4,087 |
Santa Monica | Southern California Coast | 92 | 5,824 | 5,830 | 5,841 |
The bands in the imagery are as follows:
Band | Description |
---|---|
0 | Red |
1 | Green |
2 | Blue |
3 | Near-IR |
images
directory as TIFF files.csv
directory containing tree locations in 2D pixel coordinates.json
directory containing geo-referenced tree locations. Coordinates are stored in the local UTM zone.The files train.txt
, val.txt
, and test.txt
specify the splits using all of the data. The files train_socal.txt
, val_socal.txt
, and test_socal.txt
specify the splits using the Southern California 2020 subset of the data (only 2020 data from Claremont, Long Beach, Palm Springs, Riverside, and Santa Monica).
NAIP on AWS was accessed on January 28, 2022 from https://registry.opendata.aws/naip.
If you use this data, please cite our paper:
J. Ventura, C. Pawlak, M. Honsberger, C. Gonsalves, J. Rice, N.L.R. Love, S. Han, V. Nguyen, K. Sugano, J. Doremus, G.A. Fricker, J. Yost, and M. Ritter (2024). Individual Tree Detection in Large-Scale Urban Environments using High-Resolution Multispectral Imagery. International Journal of Applied Earth Observation and Geoinformation, 130, 103848.
This project was funded by CAL FIRE (award number: 8GB18415) the US Forest Service (award number: 21-CS-11052021-201), and an incubation grant from the Data Science Strategic Research Initiative at California Polytechnic State University.
This work is licensed under a Creative Commons Attribution 4.0 International License.