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Dataset Metadata |
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dataset_info: |
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name: SC-NeRF |
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description: > |
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SC-NeRF is a dataset designed for 3D reconstruction using Neural Radiance Fields (NeRF) under a |
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stationary-camera setup. It targets high-throughput plant phenotyping in controlled indoor environments, |
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simplifying the traditional NeRF pipeline that requires a moving camera around static objects. |
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Instead, it uses a rotating object in front of a stationary camera, making it practical for automated |
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phenotyping systems. The dataset includes videos, extracted frames, COLMAP pose estimations, trained NeRF |
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models, and high-resolution point clouds for six agriculturally relevant objects. |
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version: 1.0 |
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license: CC-BY-NC-4.0 |
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authors: |
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- Kibon Ku |
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- Talukder Z. Jubery |
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- Elijah Rodriguez |
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- Aditya Balu |
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- Soumik Sarkar |
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- Adarsh Krishnamurthy |
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- Baskar Ganapathysubramanian |
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citation: > |
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@article{ku2025stationarynerf, |
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title = {NeRF-based Point Cloud Reconstruction using a Stationary Camera for Agricultural Applications}, |
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author = {Kibon Ku, Talukder Z. Jubery, Elijah Rodriguez, Aditya Balu, Soumik Sarkar, Adarsh Krishnamurthy, Baskar Ganapathysubramanian}, |
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year = {2025}, |
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journal = {arXiv preprint arXiv:2503.21958} |
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} |
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intended_use: |
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- Stationary-camera-based 3D reconstruction |
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- High-throughput plant phenotyping |
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- AI-based point cloud generation |
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- Benchmarking indoor NeRF pipelines |
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- Hyperspectral and multimodal NeRF fusion |
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features: |
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- Videos (.MOV) |
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- Keyframes (JPG/PNG) |
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- COLMAP outputs (poses, sparse PCD) |
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- Trained NeRF models (nerfacto, Nerfstudio format) |
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- Final reconstructed 10M-point point clouds (.ply) |
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dataset_size: |
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raw: |
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- "6 video objects × 2 capture types (SC and GT) in .MOV format" |
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- "Keyframes extracted at 4–5 FPS per object" |
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pre: |
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- "COLMAP pose estimates and sparse point clouds for all objects" |
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train: |
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- "Nerfstudio-trained NeRF models with checkpoints" |
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pcd: |
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- "Final 10M-point point clouds for 6 objects (SC and GT), aligned and filtered" |
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dependencies: |
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- Python 3.8+ |
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- Nerfstudio (https://docs.nerf.studio) |
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- COLMAP |
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- Open3D (for visualization and evaluation) |
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- CloudCompare or MeshLab (optional for inspection) |
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installation_instructions: | |
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Clone and set up the dataset locally: |
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```bash |
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git clone https://huggingface.co/datasets/BGLab/SC-NeRF |
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cd AgriPCD |
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``` |
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download_instructions: | |
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1. Download the dataset files from the Hugging Face repository or provided links. |
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2. Unzip the folders: |
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```bash |
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unzip raw.zip |
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unzip pre.zip |
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unzip train.zip |
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unzip pcd.zip |
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``` |
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training_instructions: | |
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Preprocess and train NeRF models using Nerfstudio: |
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```bash |
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ns-process-data --data ./pre/object_name |
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ns-train nerfacto --data ./pre/object_name |
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``` |
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pointcloud_extraction: | |
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Export the high-resolution point cloud: |
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```bash |
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ns-export pointcloud --load-config ./train/object_name/config.yml |
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``` |
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evaluation_instructions: | |
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Align reconstructed and ground truth point clouds using ICP and evaluate using precision/recall or other geometric metrics. |
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visualization_instructions: | |
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Visualize point clouds using Open3D: |
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```python |
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import open3d as o3d |
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pcd = o3d.io.read_point_cloud("pcd/apricot_sc.ply") |
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o3d.visualization.draw_geometries([pcd]) |
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``` |
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repository_links: |
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- https://huggingface.co/datasets/BGLab/SC-NeRF |
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- https://arxiv.org/abs/2503.21958 |
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- https://docs.nerf.studio |
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