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--- |
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license: cc-by-nc-4.0 |
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task_categories: |
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- image-to-3d |
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--- |
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# AgriField3D: A Curated 3D Point Cloud Dataset of Field-Grown Plants From A Maize Diversity Panel |
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[Paper link](https://huggingface.co/papers/2503.07813) |
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## Overview |
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The use of artificial intelligence (AI) in three-dimensional (3D) agricultural research, especially for maize, |
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has been limited due to the lack of large-scale, diverse datasets. While 2D image datasets are widely available, |
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they fail to capture key structural details like leaf architecture, plant volume, and spatial arrangements—information |
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that 3D data can provide. To fill this gap, we present a carefully curated dataset of 3D point clouds representing fully |
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field-grown maize plants with diverse genetic backgrounds. This dataset is designed to be AI-ready, offering valuable |
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insights for advancing agricultural research. |
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Our dataset includes over 1,000 high-quality point clouds of maize plants, collected using a Terrestrial Laser Scanner. |
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These point clouds encompass various maize varieties, providing a comprehensive and diverse dataset. To enhance usability, |
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we applied graph-based segmentation to isolate individual leaves and stalks. Each leaf is consistently color-labeled based |
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on its position in the plant (e.g., all first leaves share the same color, all second leaves share another color, and so on). |
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Similarly, all stalks are assigned a unique, distinct color. |
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A rigorous quality control process was applied to manually correct any segmentation or leaf-ordering errors, ensuring |
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accurate segmentation and consistent labeling. This process facilitates precise leaf counting and structural analysis. |
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In addition, the dataset includes metadata describing point cloud quality, leaf count, and the presence of tassels and maize cobs. |
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To support a wide range of AI applications, we also provide code that allows users to sub-sample the point clouds, |
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creating versions with user-defined resolutions (e.g., 100k, 50k, 10k points) through uniform downsampling. |
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Every version of the dataset has been manually quality-checked to preserve plant topology and structure. |
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This dataset sets the stage for leveraging 3D data in advanced agricultural research, particularly for maize phenotyping and plant structure studies. |
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## Dataset Directory Structure |
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``` |
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AgriField3D/ |
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├── AgriField3d/ # Main Python package directory |
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│ ├── __init__.py # Initialize the Python package |
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│ ├── dataset.py # Python file to define dataset access functions |
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├── setup.py # Package setup configuration |
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├── README.md # Package description |
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├── requirements.txt # Dependencies |
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├── MANIFEST.in # Non-Python files to include in the package |
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├── Metadata.xlsx # Metadata for your dataset |
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├── PointCloudDownsampler.py # Python script for downsampling |
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└── datasets/ # Directory for zipped datasets |
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├── FielGrwon_ZeaMays_RawPCD_100k.zip |
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├── FielGrwon_ZeaMays_RawPCD_50k.zip |
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├── FielGrwon_ZeaMays_RawPCD_10k.zip |
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├── FielGrwon_ZeaMays_SegmentedPCD_100k.zip |
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├── FielGrwon_ZeaMays_SegmentedPCD_50k.zip |
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├── FielGrwon_ZeaMays_SegmentedPCD_10k.zip |
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├── FielGrwon_ZeaMays_Reconstructed_Surface_dat.zip |
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├── FielGrwon_ZeaMays_Reconstructed_Surface_stl.zip |
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``` |
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### Contents of the `.zip` Files |
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- **`FielGrwon_ZeaMays_RawPCD_100k.zip`**: |
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- Contains 1045 `.ply` files. Each file has 100K point cloud representing an entire maize plant. |
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- **`FielGrwon_ZeaMays_RawPCD_50k.zip`**: |
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- Contains 1045 `.ply` files. Each file has 50K point cloud representing an entire maize plant. |
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- **`FielGrwon_ZeaMays_RawPCD_10k.zip`**: |
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- Contains 1045 `.ply` files. Each file has 10K point cloud representing an entire maize plant. |
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- **`FielGrwon_ZeaMays_SegmentedPCD_100k.zip`**: |
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- Contains 520 `.ply` files. Each file represents a segmented maize plant by 100K point cloud focusing on specific plant parts. |
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- **`FielGrwon_ZeaMays_SegmentedPCD_50k.zip`**: |
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- Contains 520 `.ply` files. Each file represents a segmented maize plant by 50K point cloud focusing on specific plant parts. |
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- **`FielGrwon_ZeaMays_SegmentedPCD_10k.zip`**: |
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- Contains 520 `.ply` files. Each file represents a segmented maize plant by 10K point cloud focusing on specific plant parts. |
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- **`FielGrwon_ZeaMays_Reconstructed_Surface_stl.zip`**: |
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- Contains 520 `.ply` files. Each file represents the reconstructed surfaces of the maize plant leaves generated from a procedural model. |
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- **`FielGrwon_ZeaMays_Reconstructed_Surface_dat.zip`**: |
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- Contains 520 `.ply` files. Each file represents the reconstructed NURBS surface information including degree, knot vector, and control point values. |
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**License** |
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``` |
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CC-BY-NC-4.0 |
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``` |
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### How to Access |
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1. **Download the `.zip` files**: |
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- [FielGrwon_ZeaMays_RawPCD_100k.zip](https://huggingface.co/datasets/BGLab/AgriField3D/blob/main/datasets/FielGrwon_ZeaMays_RawPCD_100k.zip) |
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- [FielGrwon_ZeaMays_RawPCD_50k.zip](https://huggingface.co/datasets/BGLab/AgriField3D/blob/main/datasets/FielGrwon_ZeaMays_RawPCD_50k.zip) |
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- [FielGrwon_ZeaMays_RawPCD_10k.zip](https://huggingface.co/datasets/BGLab/AgriField3D/blob/main/datasets/FielGrwon_ZeaMays_RawPCD_10k.zip) |
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- [FielGrwon_ZeaMays_SegmentedPCD_100k.zip](https://huggingface.co/datasets/BGLab/AgriField3D/blob/main/datasets/FielGrwon_ZeaMays_SegmentedPCD_100k.zip) |
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- [FielGrwon_ZeaMays_SegmentedPCD_50k.zip](https://huggingface.co/datasets/BGLab/AgriField3D/blob/main/datasets/FielGrwon_ZeaMays_SegmentedPCD_50k.zip) |
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- [FielGrwon_ZeaMays_SegmentedPCD_10k.zip](https://huggingface.co/datasets/BGLab/AgriField3D/blob/main/datasets/FielGrwon_ZeaMays_SegmentedPCD_10k.zip) |
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2. **Extract the files**: |
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```bash |
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unzip FielGrwon_ZeaMays_RawPCD_100k.zip |
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unzip FielGrwon_ZeaMays_RawPCD_50k.zip |
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unzip FielGrwon_ZeaMays_RawPCD_10k.zip |
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unzip FielGrwon_ZeaMays_SegmentedPCD_100k.zip |
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unzip FielGrwon_ZeaMays_SegmentedPCD_50k.zip |
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unzip FielGrwon_ZeaMays_SegmentedPCD_10k.zip |
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``` |
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3. Use the extracted `.ply` files in tools like: |
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- MeshLab |
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- CloudCompare |
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- Python libraries such as `open3d` or `trimesh`. |
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### Example Code to Visualize the `.ply` Files in Python |
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```python |
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import open3d as o3d |
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# Load and visualize a PLY file from the dataset |
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pcd = o3d.io.read_point_cloud("FielGrwon_ZeaMays_RawPCD_100k/0001.ply") |
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o3d.visualization.draw_geometries([pcd]) |
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``` |
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**Citation** |
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If you find this dataset useful in your research, please consider citing our paper as follows: |
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``` |
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@article{kimara2025AgriField3D, |
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title = "AgriField3D: A Curated 3D Point Cloud Dataset of Field-Grown Plants from a Maize Diversity Panel", |
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author = "Elvis Kimara, Mozhgan Hadadi, Jackson Godbersen, Aditya Balu, Zaki Jubery, Adarsh Krishnamurthy, Patrick Schnable, Baskar Ganapathysubramanian" |
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year = "2025" |
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} |
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``` |