is a deep learning training dataset and suite of field boundary segmentation models developed to support sustainable supply chain monitoring across South America. Built on the Fields of The World (FTW) baseline dataset and model architecture, Trazo extends FTW to the varied and challenging agricultural landscapes of South America.
Use case: These annotations can be used directly alongside the Fields of The World benchmark to train or fine-tune field boundary segmentation models. The dataset is formatted for drop-in compatibility with the FTW training pipeline (256×256 pixel chips, 3-class labeling: interior, boundary, background. 2-class and instance are also available).
Folders are grouped by ecoregion, sampling strategy, or the provenance of a project partner with 90% allocated to training and 10% to validation. The test set folders are allocated 100% to testing. The distinction matters: test set folders were truly randomly sampled, making them the most statistically rigorous option for model evaluation. Other folders (e.g., ecoregion, mundo agropecuario, active learning samples) were selected based on poor model performance, a query strategy, or partner availability — and are therefore better suited for training and validation than for unbiased testing. Though all folders can technically be used for any split.To reassign splits for your use case, regenerate the parquet files using the build_chips_parquet.py tooling.
This dataset was produced as part of a collaboration with World Resources Institute (WRI) and Arizona State University with support from the Land and Carbon Lab. This work was funded through a Walmart Foundation grant.

Training data includes nearly 2,000 sample chips across South America.
Data sources include:
909 samples from across 17 of South America’s ecoregions targeting areas of poor baseline model performance and agricultural practices unique to South America (represented as the orange polygons on the map above, from 2020-2024. Each field is labeled with its year).
~500 samples from Paraguay based on data from Mundo Agropecuario (the green polygons on the map above)
400 samples from Mato Grosso, sampled from challenging contexts based on output of the first Trazo model (the blue polygons on the map above)


A core goal of the Trazo dataset is the representation of a diversity of agricultural practices. This figure shows examples of field boundaries across South America ecoregions; the Chaco, Chiquitania, Araucaria, Amazon, Cerrado, Caatinga, and others.
All annotations are formatted for direct compatibility with the FTW training pipeline:
The dataset is intended to be used in conjunction with the FTW benchmark dataset by appending South America chips to an existing FTW training split. This dataset can be used as a standalone South America fine-tuning set.
Agricultural field boundaries are a key resource for building sustainable supply chains, as boundaries link agricultural commodities directly to their sites of production. When combined with earth observation data that tracks land-use change, this plot-level information makes it possible to assess whether production is linked to recent deforestation. These insights strengthen monitoring and risk assessment and support compliance with sustainability commitments and emerging regulations, including the European Union Deforestation Regulation.
This dataset was produced in collaboration with WRI and Arizona State University, with support from the Land and Carbon Lab. Funded through a Walmart Foundation grant.
