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--- |
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license: apache-2.0 |
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size_categories: |
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- 1K<n<10K |
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dataset_info: |
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features: |
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- name: plot_uid |
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dtype: string |
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- name: yearsite_uid |
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dtype: string |
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- name: crop_type |
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dtype: string |
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- name: experiment_number |
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dtype: uint8 |
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- name: plot_number |
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dtype: int16 |
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- name: sowing_date |
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dtype: date32 |
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- name: harvest_date |
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dtype: date32 |
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- name: harvest_year |
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dtype: uint16 |
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- name: images |
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sequence: string |
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- name: image_dates |
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sequence: date32 |
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- name: image_times |
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sequence: time32[s] |
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- name: alignment_plot_soil_polygons |
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sequence: |
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sequence: |
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sequence: float16 |
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- name: alignment_num_steps |
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sequence: uint8 |
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- name: alignment_dates |
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sequence: date32 |
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- name: alignment_times |
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sequence: time32[s] |
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- name: alignment_initial_date |
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dtype: date32 |
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- name: alignment_inner_plot_transform |
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sequence: |
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sequence: float16 |
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- name: inner_plot_images |
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sequence: string |
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- name: image_inner_plot_transforms |
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sequence: |
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sequence: |
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sequence: float16 |
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- name: genotype_id |
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dtype: string |
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- name: marker_biallelic_codes |
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sequence: uint8 |
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- name: marker_metadata_strings |
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sequence: string |
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- name: canopy_cover_values |
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sequence: float16 |
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- name: canopy_cover_dates |
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sequence: date32 |
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- name: canopy_cover_trait_ids |
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sequence: uint8 |
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- name: canopy_cover_method_ids |
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sequence: uint16 |
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- name: height_values |
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sequence: float16 |
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- name: height_dates |
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sequence: date32 |
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- name: height_trait_ids |
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sequence: uint8 |
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- name: height_method_ids |
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sequence: uint16 |
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- name: spike_count_values |
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sequence: float16 |
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- name: spike_count_dates |
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sequence: date32 |
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- name: spike_count_trait_ids |
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sequence: uint8 |
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- name: spike_count_method_ids |
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sequence: uint16 |
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- name: senescence_values |
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sequence: float16 |
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- name: senescence_dates |
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sequence: date32 |
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- name: senescence_trait_ids |
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sequence: uint8 |
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- name: senescence_method_ids |
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sequence: uint16 |
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- name: heading_date_value |
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dtype: float16 |
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- name: heading_date_date |
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dtype: date32 |
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- name: heading_date_blue |
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dtype: float16 |
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- name: heading_date_heritability |
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dtype: float16 |
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- name: heading_date_trait_id |
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dtype: uint8 |
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- name: heading_date_method_id |
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dtype: uint16 |
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- name: height_final_value |
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dtype: float16 |
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- name: height_final_date |
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dtype: date32 |
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- name: height_final_blue |
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dtype: float16 |
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- name: height_final_heritability |
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dtype: float16 |
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- name: height_final_trait_id |
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dtype: uint8 |
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- name: height_final_method_id |
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dtype: uint16 |
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- name: yield_value |
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dtype: float16 |
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- name: yield_date |
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dtype: date32 |
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- name: yield_blue |
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dtype: float16 |
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- name: yield_heritability |
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dtype: float16 |
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- name: yield_trait_id |
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dtype: uint8 |
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- name: yield_method_id |
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dtype: uint16 |
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- name: protein_value |
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dtype: float16 |
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- name: protein_date |
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dtype: date32 |
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- name: protein_blue |
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dtype: float16 |
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- name: protein_heritability |
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dtype: float16 |
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- name: protein_trait_id |
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dtype: uint8 |
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- name: protein_method_id |
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dtype: uint16 |
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- name: temperature_air_10cm_values |
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sequence: float16 |
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- name: temperature_air_10cm_dates |
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sequence: date32 |
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- name: temperature_air_10cm_times |
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sequence: time32[s] |
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- name: temperature_air_200cm_values |
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sequence: float16 |
|
- name: temperature_air_200cm_dates |
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sequence: date32 |
|
- name: temperature_air_200cm_times |
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sequence: time32[s] |
|
- name: temperature_soil_5cm_values |
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sequence: float16 |
|
- name: temperature_soil_5cm_dates |
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sequence: date32 |
|
- name: temperature_soil_5cm_times |
|
sequence: time32[s] |
|
- name: humidity_air_10cm_values |
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sequence: float16 |
|
- name: humidity_air_10cm_dates |
|
sequence: date32 |
|
- name: humidity_air_10cm_times |
|
sequence: time32[s] |
|
- name: humidity_air_200cm_values |
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sequence: float16 |
|
- name: humidity_air_200cm_dates |
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sequence: date32 |
|
- name: humidity_air_200cm_times |
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sequence: time32[s] |
|
- name: precipitation_200cm_values |
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sequence: float16 |
|
- name: precipitation_200cm_dates |
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sequence: date32 |
|
- name: precipitation_200cm_times |
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sequence: time32[s] |
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- name: irradiance_solar_200cm_values |
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sequence: float16 |
|
- name: irradiance_solar_200cm_dates |
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sequence: date32 |
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- name: irradiance_solar_200cm_times |
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sequence: time32[s] |
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splits: |
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- name: train |
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num_bytes: 3203900670 |
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num_examples: 2930 |
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- name: validation |
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num_bytes: 676408828 |
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num_examples: 380 |
|
- name: test_plot |
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num_bytes: 444994130 |
|
num_examples: 250 |
|
- name: test_genotype |
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num_bytes: 438095034 |
|
num_examples: 246 |
|
- name: test_environment |
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num_bytes: 162273287 |
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num_examples: 190 |
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- name: test_genotype_environment |
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num_bytes: 110272291 |
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num_examples: 62 |
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download_size: 1388423768 |
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dataset_size: 5035944240 |
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configs: |
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- config_name: default |
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data_files: |
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- split: train |
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path: data/train-* |
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- split: validation |
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path: data/validation-* |
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- split: test_plot |
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path: data/test_plot-* |
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- split: test_genotype |
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path: data/test_genotype-* |
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- split: test_environment |
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path: data/test_environment-* |
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- split: test_genotype_environment |
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path: data/test_genotype_environment-* |
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tags: |
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- phenotyping |
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- wheat |
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- plant |
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- regression |
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- trait |
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- pheno |
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--- |
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!**The image data is currently being uploaded and will be available soon.**! |
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# The FIP 1.0 Data Set: Highly Resolved Annotated Image Time Series of 4,000 Wheat Plots Grown in Six Years |
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## Dataset Details |
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### Dataset Description |
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We provide time series data for more than 4,000 wheat plots, including aligned high-resolution image sequences totaling more than 151,000 aligned images across six years. |
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Measurement data for eight key wheat traits is included, namely canopy cover values, plant heights, wheat head counts, senescence ratings, heading date, final plant height, grain yield, and protein content. |
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Genetic marker information and environmental data complement the time series. |
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Data quality is demonstrated through heritability analyses and genomic prediction models, achieving accuracies aligned with previous research. |
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- **Curated by:** Mike Boss, Lukas Roth, Norbert Kirchgessner |
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- **License:** CC-BY |
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### Dataset Sources |
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<!-- Provide the basic links for the dataset. --> |
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- **Data:** [doi.org/20.500.11850/697773](doi.org/20.500.11850/697773) |
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> Note that the image data is not included in this repository, instead image paths point to */data* either */data/image* or */data/inner_plot_image*. |
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> You will need to place these folders in */data* or change the image path. |
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> |
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> This is due to some limitations with *datasets* that will hopefully soon be resolved, we will update the dataset accordingly. |
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- **Paper:** Coming soon! |
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## Uses |
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We see the largest re-use potential of the presented data set for the development and evaluation of new modelling and prediction approaches in crop genomics and phenomics. |
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The multi-faceted data set allows modelling approaches on various levels: |
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- Genomic prediction approaches that include genotype-environment interactions: The presented data enhance the data by Gogna et al. by 6 environments, totalling to 14 environments that are characterized by environmental covariates. The presented benchmark of a genomic prediction with random regressions to environmental covariates provides a baseline that novel approaches can challenge. |
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- Modelling plant growth and development with longitudinal modelling approaches: The four low-level traits canopy cover, plant height, wheat head count and senescence cover the full growing season of winter wheat in 6 environments that are characterized by environmental covariates. Baseline approaches for plant height growth modelling, canopy cover growth modelling and senescence dynamics modelling for subsets of the presented data exist. |
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- Image-based phenomic predictions and combined phenomic and genomic prediction approaches: The dense time series of images allow training and analysing end-to-end modelling approaches (e.g., deep learning based) that predict target traits such as yield based on images. |
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## Dataset Structure |
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The data is structured such that each row contains all data for a plot in a given year. |
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The plot can be identified by it's *plot_uid* which is also available in parts as *yearsite_uid*, *crop_type*, etc. |
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If data does not exist for a certain plot it is *None*, while if time series data does not exist for a certain date it is simply not present. |
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The image data is in the *images* and *inner_plot_images* colums. |
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*images* are the original images while *inner_plot_images* are aligned cutouts of the inner wheat plot. |
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Trait data is included as the values in *trait_value(s)* and the dates *trait_date(s)*. |
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Marker data includes an anyomized *genotype_id* string, biallelic codes and corresponding metadata strings. |
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Enviroment variables are also included as *_value(s)*, *_date(s)* and in addition *_time(s)*. |
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The sowing date, harvest date and harvest_year are included. |
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The data set includes additional data used for the creation of the data set itself such as the alignments. |
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## Dataset Creation |
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### Curation Rationale |
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Winter wheat provides a crucial share of calories for human nutrition, with global demand steadily increasing. |
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However, crop production faces challenges due to limited resources like water, agrochemicals, and land. |
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Climate change further threatens crop yields, necessitating responsible and efficient resource use. |
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Crop yields are substantially driven by complex interactions between plant genetics and environmental factors. |
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For instance, genes involved in fruit formation interact with temperatures at flowering, influencing growth and yield potential. |
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Limited phenotyping data is seen as the major reason for the incomplete understanding of such genotype-environment interactions. |
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HTFP was developed to address this data gap. |
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Imaging HTFP platforms allow researchers to monitor crop canopy development over time, generating dense time series data of plant growth. |
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There are many approaches to process such data ranging from extracting traits at critical time points to modeling growth dynamics and finally using end-to-end methods that directly analyze image time series. |
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This data set aims to provide a comprehensive foundation for these diverse approaches. |
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Our goal is to foster collaboration between plant physiology, biometrics, and computer vision research, ultimately improving the ability to predict genotype-environment interactions for current and future climates. |
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### Source Data |
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The FIP at ETH was established in 2015 to collect image time series of crops growing under realistic field conditions. |
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The FIP's cable carrying system is capable of carrying a 90 kg sensor head. |
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The original sensor head, hereafter referred to as the FIP 1.0 head, was equipped with a red, green, and blue (RGB) camera and a TLS, among other sensors. |
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Wheat field experiments were observed using FIP 1.0 over an eight-year period from 2015 to 2022, yielding six years of data collection, with 2015 and 2020 excluded due to incomplete measuring seasons . |
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Up to three times a week, RGB images of all experimental units (so-called `plots') were collected, and plant heights were measured simultaneously using either the TLS (2016, 2017) or drones (2018--2022) . |
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In 2023, the FIP 1.0 sensor head was replaced with a new, multi-view RGB sensor head. |
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The described data set includes all RGB and height data collected in winter wheat experiments up to this replacement. |
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The area of approximately one ha that the FIP can monitor is divided into six smaller parts (so-called `lots') that are integrated into a crop rotation. |
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The two FIP lots dedicated to winter wheat provide space for ~350 genotypes, replicated once per lot. |
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For the first three years (2016--2018), the GABI-WHEAT panel was grown as the genotype set. |
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From 2019--2022, a subset of the GABI-WHEAT panel was grown in addition to other genotypes . |
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The GABI-WHEAT panel consists of registered genotypes from different climatic regions of Europe . |
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Genetic marker data and MET data from eight year-locations for GABI-WHEAT are publicly available. |
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The GABI-WHEAT panel was largely superseded by the Swiss breeding set in 2021 . |
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This new set primarily consists of eighth-generation (F8) breeding genotypes. |
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For the Swiss breeding set, genetic marker data exists but remains confidential. |
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The remaining genotypes, linked to specific projects such as INVITE, were present throughout all years but were generally only grown in a single year each . |
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These genotypes currently lack available marker data. |
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Regular measurements with the FIP 1.0 head were accompanied by reference measurement campaigns as part of several projects. |
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The heading date and senescence ratings were performed to investigate the relationships of senescence dynamics and diseases . |
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Yield measurements taken on the FIP field were combined with data from other locations to train phenomic prediction models . |
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The plant height measurements served as a basis to quantify the temperature response of wheat genotypes in the stem elongation phase . |
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The extracted plant height values demonstrated their usefulness in improving trait extraction methods from longitudinal data . |
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The images collected were used to quantify canopy covers and examine their relationship to frost damage events using CNNs. |
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Using a combination of drone data and the high-resolution images the rows in the individual plots were identified . |
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In a small subset (375 images), the wheat heads were annotated and the data was integrated into the public global wheat head detection data set . |
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The image-based canopy cover values served as a test data set to evaluate the cultivar-specific extensions of the thermal time concept . |
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### Annotations [optional] |
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#### Annotation process |
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## Citation [optional] |
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**BibTeX:** |
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**APA:** |
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## Dataset Card Authors |
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Mike Boss, Lukas Roth, Norbert Kirchgessner |
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## Dataset Card Contact |
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Mike Boss ([email protected]) |