Datasets:
Dataset Card for PhenoBench
This is a FiftyOne dataset with 2,179 samples.
The images and original annotations are from PhenoBench, a large UAV image dataset for semantic image interpretation in the agricultural domain (sugar beet crops and weeds), introduced by Weyler et al. in PhenoBench — A Large Dataset and Benchmarks for Semantic Image Interpretation in the Agricultural Domain (IEEE TPAMI, 2024). This release packages a subset of PhenoBench as a FiftyOne dataset and adds object-detection predictions and embeddings produced by Voxel51.
What's in this dataset
- 2,179 samples (train: 1,407 / val: 386 / test: 386), each a 1024×1024 RGB UAV image of a sugar beet field
- Original PhenoBench annotations (from phenobench.org):
semantics— semantic segmentation: background, crop, weed, partial-crop, partial-weedplant_instances— per-plant instance segmentationleaf_instances— per-leaf instance segmentationplant_visibility,leaf_visibility— visibility heatmaps
- Voxel51-added detections and embeddings:
yolo11n,yolo11l— YOLO11 (nano and large) object detection predictions for plants, with per-detection true-positive / false-positive / false-negative matches against the ground-truth instance masks- Brain runs in
brain/: CLIP and DINOv2 embeddings + similarity indexes for sample-level and patch-level visual search
For the full original PhenoBench dataset (train/val/test = 1,407 / 772 / 693) and the canonical annotation specification, see phenobench.org.
License
CC BY-SA 4.0, inherited from the upstream PhenoBench release.
Installation
pip install -U fiftyone
Usage
import fiftyone as fo
from fiftyone.utils.huggingface import load_from_hub
# Load the dataset
dataset = load_from_hub("Voxel51/PhenoBench")
# Launch the FiftyOne App
session = fo.launch_app(dataset)
Citation
If you use this dataset, please cite the original PhenoBench paper:
@article{weyler2024phenobench,
title={PhenoBench: A Large Dataset and Benchmarks for Semantic Image Interpretation in the Agricultural Domain},
author={Weyler, Jan and Magistri, Federico and Marks, Elias and Chong, Yue Linn and Sodano, Matteo and Roggiolani, Gianmarco and Chebrolu, Nived and Stachniss, Cyrill and Behley, Jens},
journal={IEEE Transactions on Pattern Analysis and Machine Intelligence},
year={2024},
url={https://arxiv.org/abs/2306.04557}
}
Please refer to phenobench.org for the authoritative citation and licensing terms.
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