Python library with Neural Networks for Image Segmentation based on Keras and TensorFlow.
The main features of this library are:
- High level API (just two lines of code to create model for segmentation)
- 5 models architectures for binary and multi-class image segmentation (including legendary Unet)
- 25 available backbones for each architecture
- All backbones have pre-trained weights for faster and better convergence
- Helpful segmentation losses (Jaccard, Dice, Focal) and metrics (IoU, F-score)
Important note
Some models of version
1.*
are not compatible with previously trained models, if you have such models and want to load them - roll back with:$ pip install -U segmentation-models==0.2.1
Library is build to work together with Keras and TensorFlow Keras frameworks
import segmentation_models as sm
# Segmentation Models: using `keras` framework.
By default it tries to import keras
, if it is not installed, it will try to start with tensorflow.keras
framework.
There are several ways to choose framework:
- Provide environment variable
SM_FRAMEWORK=keras
/SM_FRAMEWORK=tf.keras
before importsegmentation_models
- Change framework
sm.set_framework('keras')
/sm.set_framework('tf.keras')
You can also specify what kind of image_data_format
to use, segmentation-models works with both: channels_last
and channels_first
.
This can be useful for further model conversion to Nvidia TensorRT format or optimizing model for cpu/gpu computations.
import keras
# or from tensorflow import keras
keras.backend.set_image_data_format('channels_last')
# or keras.backend.set_image_data_format('channels_first')
Created segmentation model is just an instance of Keras Model, which can be build as easy as:
model = sm.Unet()
Depending on the task, you can change the network architecture by choosing backbones with fewer or more parameters and use pretrainded weights to initialize it:
model = sm.Unet('resnet34', encoder_weights='imagenet')
Change number of output classes in the model (choose your case):
# binary segmentation (this parameters are default when you call Unet('resnet34')
model = sm.Unet('resnet34', classes=1, activation='sigmoid')
# multiclass segmentation with non overlapping class masks (your classes + background)
model = sm.Unet('resnet34', classes=3, activation='softmax')
# multiclass segmentation with independent overlapping/non-overlapping class masks
model = sm.Unet('resnet34', classes=3, activation='sigmoid')
Change input shape of the model:
# if you set input channels not equal to 3, you have to set encoder_weights=None
# how to handle such case with encoder_weights='imagenet' described in docs
model = Unet('resnet34', input_shape=(None, None, 6), encoder_weights=None)
import segmentation_models as sm
BACKBONE = 'resnet34'
preprocess_input = sm.get_preprocessing(BACKBONE)
# load your data
x_train, y_train, x_val, y_val = load_data(...)
# preprocess input
x_train = preprocess_input(x_train)
x_val = preprocess_input(x_val)
# define model
model = sm.Unet(BACKBONE, encoder_weights='imagenet')
model.compile(
'Adam',
loss=sm.losses.bce_jaccard_loss,
metrics=[sm.metrics.iou_score],
)
# fit model
# if you use data generator use model.fit_generator(...) instead of model.fit(...)
# more about `fit_generator` here: https://keras.io/models/sequential/#fit_generator
model.fit(
x=x_train,
y=y_train,
batch_size=16,
epochs=100,
validation_data=(x_val, y_val),
)
Same manipulations can be done with Linknet
, PSPNet
and FPN
. For more detailed information about models API and use cases Read the Docs.
- Models training examples:
Models
Unet | Linknet |
---|---|
PSPNet | FPN |
---|---|
Backbones
Type | Names |
---|---|
VGG | 'vgg16' 'vgg19' |
ResNet | 'resnet18' 'resnet34' 'resnet50' 'resnet101' 'resnet152' |
SE-ResNet | 'seresnet18' 'seresnet34' 'seresnet50' 'seresnet101' 'seresnet152' |
ResNeXt | 'resnext50' 'resnext101' |
SE-ResNeXt | 'seresnext50' 'seresnext101' |
SENet154 | 'senet154' |
DenseNet | 'densenet121' 'densenet169' 'densenet201' |
Inception | 'inceptionv3' 'inceptionresnetv2' |
MobileNet | 'mobilenet' 'mobilenetv2' |
EfficientNet | 'efficientnetb0' 'efficientnetb1' 'efficientnetb2' 'efficientnetb3' 'efficientnetb4' 'efficientnetb5' efficientnetb6' efficientnetb7' |
All backbones have weights trained on 2012 ILSVRC ImageNet dataset (encoder_weights='imagenet'
).
Requirements
- python 3
- keras >= 2.2.0 or tensorflow >= 1.13
- keras-applications >= 1.0.7, <=1.0.8
- image-classifiers == 1.0.*
- efficientnet == 1.0.*
PyPI stable package
$ pip install -U segmentation-models
PyPI latest package
$ pip install -U --pre segmentation-models
Source latest version (original)
$ pip install git+https://github.com/qubvel/segmentation_models
Source latest version (SCCH-KVS fork)
$ pip install git+https://github.com/SCCH-KVS/segmentation_models
Latest documentation is avaliable on Read the Docs
To see important changes between versions look at CHANGELOG.md
@misc{Yakubovskiy:2019, Author = {Pavel Yakubovskiy}, Title = {Segmentation Models}, Year = {2019}, Publisher = {GitHub}, Journal = {GitHub repository}, Howpublished = {\url{https://github.com/qubvel/segmentation_models}} }
Project is distributed under MIT Licence.