Overview
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Overview¶
AgML is a comprehensive library for agricultural machine learning. Currently, AgML provides access to a wealth of public agricultural datasets for common agricultural deep learning tasks. In the future, AgML will provide ag-specific ML functionality related to data, training, and evaluation. Here's a conceptual diagram of the overall framework.
AgML supports both the TensorFlow and PyTorch machine learning frameworks.
Installation¶
To install the latest release of AgML, run the following command:
pip install agml
NOTE: Some features of AgML, such as synthetic data generation, require GUI applications. When running AgML through Windows Subsystem for Linux (WSL), it may be necessary to configure your WSL environment to utilize these features. Please follow the Microsoft documentation to install all necessary prerequisites and update WSL. The latest version of WSL includes built-in support for running Linux GUI applications.
Quick Start¶
AgML is designed for easy usage of agricultural data in a variety of formats. You can start off by using the AgMLDataLoader
to
download and load a dataset into a container:
import agml
loader = agml.data.AgMLDataLoader('apple_flower_segmentation')
You can then use the in-built processing methods to get the loader ready for your training and evaluation pipelines. This includes, but is not limited to, batching data, shuffling data, splitting data into training, validation, and test sets, and applying transforms.
import albumentations as A
# Batch the dataset into collections of 8 pieces of data:
loader.batch(8)
# Shuffle the data:
loader.shuffle()
# Apply transforms to the input images and output annotation masks:
loader.mask_to_channel_basis()
loader.transform(
transform = A.RandomContrast(),
dual_transform = A.Compose([A.RandomRotate90()])
)
# Split the data into train/val/test sets.
loader.split(train = 0.8, val = 0.1, test = 0.1)
The split datasets can be accessed using loader.train_data
, loader.val_data
, and loader.test_data
. Any further processing applied to the
main loader will be applied to the split datasets, until the split attributes are accessed, at which point you need to apply processing independently
to each of the loaders. You can also turn toggle processing on and off using the loader.eval()
, loader.reset_preprocessing()
, and loader.disable_preprocessing()
methods.
You can visualize data using the agml.viz
module, which supports multiple different types of visualization for different data types:
# Disable processing and batching for the test data:
test_ds = loader.test_data
test_ds.batch(None)
test_ds.reset_prepreprocessing()
# Visualize the image and mask side-by-side:
agml.viz.visualize_image_and_mask(test_ds[0])
# Visualize the mask overlaid onto the image:
agml.viz.visualize_overlaid_masks(test_ds[0])
AgML supports both the TensorFlow and PyTorch libraries as backends, and provides functionality to export your loaders to native TensorFlow and PyTorch
formats when you want to use them in a training pipeline. This includes both exporting the AgMLDataLoader
to a tf.data.Dataset
or torch.utils.data.DataLoader
,
but also internally converting data within the AgMLDataLoader
itself, enabling access to its core functionality.
# Export the loader as a `tf.data.Dataset`:
train_ds = loader.train_data.export_tensorflow()
# Convert to PyTorch tensors without exporting.
train_ds = loader.train_data
train_ds.as_torch_dataset()
You're now ready to use AgML for training your own models! Luckily, AgML comes with a training module that enables quick-start training of standard deep learning models on agricultural datasets. Training a grape detection model is as simple as the following code:
import agml
import agml.models
import albumentations as A
loader = agml.data.AgMLDataLoader('grape_detection_californiaday')
loader.split(train = 0.8, val = 0.1, test = 0.1)
processor = agml.models.preprocessing.EfficientDetPreprocessor(
image_size = 512, augmentation = [A.HorizontalFlip(p=0.5)]
)
loader.transform(processor)
model = agml.models.DetectionModel(num_classes=loader.num_classes)
model.run_training(loader)
Public Dataset Listing¶
Dataset | Task | Number of Images |
---|---|---|
bean_disease_uganda | Image Classification | 1295 |
carrot_weeds_germany | Semantic Segmentation | 60 |
plant_seedlings_aarhus | Image Classification | 5539 |
soybean_weed_uav_brazil | Image Classification | 15336 |
sugarcane_damage_usa | Image Classification | 153 |
crop_weeds_greece | Image Classification | 508 |
sugarbeet_weed_segmentation | Semantic Segmentation | 1931 |
rangeland_weeds_australia | Image Classification | 17509 |
fruit_detection_worldwide | Object Detection | 565 |
leaf_counting_denmark | Image Classification | 9372 |
apple_detection_usa | Object Detection | 2290 |
mango_detection_australia | Object Detection | 1730 |
apple_flower_segmentation | Semantic Segmentation | 148 |
apple_segmentation_minnesota | Semantic Segmentation | 670 |
rice_seedling_segmentation | Semantic Segmentation | 224 |
plant_village_classification | Image Classification | 55448 |
autonomous_greenhouse_regression | Image Regression | 389 |
grape_detection_syntheticday | Object Detection | 448 |
grape_detection_californiaday | Object Detection | 126 |
grape_detection_californianight | Object Detection | 150 |
guava_disease_pakistan | Image Classification | 306 |
apple_detection_spain | Object Detection | 967 |
apple_detection_drone_brazil | Object Detection | 689 |
plant_doc_classification | Image Classification | 2598 |
plant_doc_detection | Object Detection | 2346 |
wheat_head_counting | Object Detection | 6512 |
peachpear_flower_segmentation | Semantic Segmentation | 42 |
red_grapes_and_leaves_segmentation | Semantic Segmentation | 258 |
white_grapes_and_leaves_segmentation | Semantic Segmentation | 273 |
ghai_romaine_detection | Object Detection | 500 |
ghai_green_cabbage_detection | Object Detection | 500 |
ghai_iceberg_lettuce_detection | Object Detection | 500 |
riseholme_strawberry_classification_2021 | Image Classification | 3520 |
ghai_broccoli_detection | Object Detection | 500 |
bean_synthetic_earlygrowth_aerial | Semantic Segmentation | 2500 |
ghai_strawberry_fruit_detection | Object Detection | 500 |
vegann_multicrop_presence_segmentation | Semantic Segmentation | 3775 |
corn_maize_leaf_disease | Image Classification | 4188 |
tomato_leaf_disease | Image Classification | 11000 |
vine_virus_photo_dataset | Image Classification | 3866 |
Usage Information¶
Using Public Agricultural Data¶
AgML aims to provide easy access to a range of existing public agricultural datasets The core of AgML's public data pipeline is
AgMLDataLoader
. You can use the AgMLDataLoader
or agml.data.download_public_dataset()
to download
the dataset locally from which point it will be automatically loaded from the disk on future runs.
From this point, the data within the loader can be split into train/val/test sets, batched, have augmentations and transforms
applied, and be converted into a training-ready dataset (including batching, tensor conversion, and image formatting).
To see the various ways in which you can use AgML datasets in your training pipelines, check out the example notebook.
Annotation Formats¶
A core aim of AgML is to provide datasets in a standardized format, enabling the synthesizing of multiple datasets into a single training pipeline. To this end, we provide annotations in the following formats:
- Image Classification: Image-To-Label-Number
- Object Detection: COCO JSON
- Semantic Segmentation: Dense Pixel-Wise
Contributions¶
We welcome contributions! If you would like to contribute a new feature, fix an issue that you've noticed, or even just mention a bug or feature that you would like to see implemented, please don't hesitate to use the Issues tab to bring it to our attention. See the contributing guidelines for more information.
Funding¶
This project is partly funded by the National AI Institute for Food Systems