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CanolaTrack

CanolaTrack is a curated dataset for leaf-level multi-object tracking (MOT) and detection from top-down RGB imagery of Brassica napus (canola) plants. Each sequence records a single plant over time; frames contain annotated bounding boxes with persistent leaf IDs for tracking.

  • For baseline methods and a reference pipeline built on CanolaTrack, see LeafTrackNet (training, inference, and TrackEval integration) in our Github repo.

Dataset Summary

  • Domain: Plant phenotyping (leaf-level analysis, time series)
  • Modalities: RGB images (top-down)
  • Use cases: Multi-object tracking (leaf IDs), detection, re-identification
  • Content: Sequences of a single plant over days; each frame has MOT-style annotations
  • Annotations: gt/gt.txt per sequence with frame, leaf_id, x, y, w, h (pixels)
  • Extras: YOLOv10 proposals JSONs and LeafTrackNet model weightsfor reproducible tracking baselines

Repository Structure

CanolaTrack/ 
β”‚  β”œβ”€β”€ train/
β”‚  β”‚   └── <plant_id>/
β”‚  β”‚         β”œβ”€β”€ gt/gt.txt # CSV: frame,id,x,y,w,h,,,*
β”‚  β”‚         └── img/{frame:08d}.jpg
β”‚  └──val/
β”‚     └── <plant_id>/
β”‚            β”œβ”€β”€ gt/gt.txt
β”‚            └── img/{frame:08d}.jpg
proposals/ # detection proposals for standardized benchmarking
β”‚     β”œβ”€β”€ det_db_train.json
β”‚     └── det_db_val.json
weights/ # detctors and tracker weights
      └── <files>

Supported Tasks and Benchmarks

  • Multi-Object Tracking (MOT) at the leaf level
  • Object Detection (per-frame leaf boxes)
  • Leaf Segmentation (per-frame leaf masks)

How to Cite

Please cite the dataset and the accompanying papers:

@article{leaftracknet2025,
  title={LeafTrackNet: A Deep Learning Framework for Robust Leaf Tracking in Top-Down Plant Phenotyping},
  year={2025},
  author = {},
  url    = {}
}

CanolaTrack datasetΒ© BASF SE 2025. This dataset may be freely used for non-commercial research and educational purposes.

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