--- configs: - config_name: labeled_all data_files: labeled_all/all.csv default: true description: Labeled spectra data with trait measurements for supervised learning. - config_name: unlabeled data_files: unlabeled/*.csv description: Unlabeled spectra data for semi-supervised or self-supervised learning. - config_name: labeled_splits data_files: - split: train path: labeled_splits/train.csv - split: test path: labeled_splits/test.csv description: A stratified splitting of the labeled data. task_categories: - image-feature-extraction license: cc-by-nc-4.0 language: - en tags: - hyperspectral - vegetation - plant-traits - remote-sensing - climate-change --- # 🌱 GreenHyperSpectra: A multi-source hyperspectral dataset for global vegetation trait prediction 🌱 [Paper](https://huggingface.co/papers/2507.06806) GreenHySpectra is a collection of hyperspectral reflectance data of vegetation from different sources. It is intended for Regression machine learning task for plant trait prediction with self and semi-supervised learning. ## šŸ“ Configurations ### 1. `GreenHyperSpectra: Unlabeled set` - Files: all CSVs under `unlabeled/` - Contains: - Sample ID - Spectral bands (400-2450 nm) >> 1721 bands | Column | Description | |----------------|-----------------------------------------| | 400 | Reflectance at 400nm | | ... | More spectral bands | | 2450 | Reflectance at 2450nm | --- ### 2. `Labeled set` - File: `labeled/all.csv` - Contains: - Sample ID - Dataset ID - Spectral bands (400-2450 nm) >> 1721 bands - Trait measurements (e.g., leaf chlorophyll, nitrogen content etc.) | Column | Description | |----------------|-----------------------------------------| | dataset | Reference to the source of the dataset | | 400 | Reflectance at 400nm | | ... | More spectral bands | | 2450 | Reflectance at 2450nm | | Cp | Nitrogen content (g/cm²) | | Cm | Leaf mass per area (g/cm²) | | Cw | Leaf water content (cm) | | LAI | Leaf area index (m²/m²) | | Cab | Leaf chrolophyll content (µg/m²) | | Car | Leaf carotenoids content (µg/m²) | | Anth | Leaf anthocynins content (µg/m²) | | Cbc | Carbon-based constituents (g/cm²) | --- ### 3. `Split labeled set` - Files: all CSVs under `labeled_splits/` These files follow the same format as the previous set but are pre-split for machine learning purposes. The split is stratified based on the dataset ID, with 20% of the data reserved for testing. > āš ļø **Note:** Due to the high dimensionality of spectral datasets—often containing hundreds or thousands of columns—**Hugging Face Data Studio may not render these files properly**. This is a known limitation, as the Studio interface is not optimized for wide tabular data. > > To work effectively with this dataset, we recommend using the **Hugging Face `datasets` library** or the **MLCroissant Python library** for programmatic access and exploration. ``` ### Check the data with Hugging Face datasets library ### from datasets import load_dataset ### labeled_all ### # Login using e.g. `huggingface-cli login` to access this dataset ds = load_dataset("Avatarr05/GreenHyperSpectra", "labeled_all") df = ds['train'].to_pandas().drop(['Unnamed: 0'], axis=1) display(df.head()) ### labeled_splits: train ### train_dataset = load_dataset("Avatarr05/GreenHyperSpectra", 'labeled_splits', split="train") train_dataset = train_dataset.to_pandas().drop(['Unnamed: 0'], axis=1) display(df.head()) ```