Skip to main content

Deep Leaarning segmentation architectures for PyTorch and FastAI

Project description

SemTorch

This repository contains different deep learning architectures definitions that can be applied to image segmentation.

All the architectures are implemented in PyTorch and can been trained easily with FastAI 2.

In Deep-Tumour-Spheroid repository can be found and example of how to apply it with a custom dataset, in that case brain tumours images are used.

These architectures are classified as:

  • Semantic Segmentation: each pixel of an image is linked to a class label. Semantic Segmentation
  • Instance Segmentation: is similar to semantic segmentation, but goes a bit deeper, it identifies , for each pixel, the object instance it belongs to. Instance Segmentation
  • Salient Object Detection (Binary clases only): detection of the most noticeable/important object in an image. Salient Object Detection

🚀 Getting Started

To start using this package, install it using pip:

For example, for installing it in Ubuntu use:

pip3 install SemTorch

👩‍💻 Usage

This package creates an abstract API to access a segmentation model of different architectures. This method returns a FastAI 2 learner that can be combined with all the fastai's functionalities.

# SemTorch
from semtorch import get_segmentation_learner

learn = get_segmentation_learner(dls=dls, number_classes=2, segmentation_type="Semantic Segmentation",
                                 architecture_name="deeplabv3+", backbone_name="resnet50", 
                                 metrics=[tumour, Dice(), JaccardCoeff()],wd=1e-2,
                                 splitter=segmentron_splitter).to_fp16()

You can find a deeper example in Deep-Tumour-Spheroid repository, in this repo the package is used for the segmentation of brain tumours.

def get_segmentation_learner(dls, number_classes, segmentation_type, architecture_name, backbone_name,
                             loss_func=None, opt_func=Adam, lr=defaults.lr, splitter=trainable_params, 
                             cbs=None, pretrained=True, normalize=True, image_size=None, metrics=None, 
                             path=None, model_dir='models', wd=None, wd_bn_bias=False, train_bn=True,
                             moms=(0.95,0.85,0.95)):

This function return a learner for the provided architecture and backbone

Parameters:

  • dls (DataLoader): the dataloader to use with the learner
  • number_classes (int): the number of clases in the project. It should be >=2
  • segmentation_type (str): just Semantic Segmentation accepted for now
  • architecture_name (str): name of the architecture. The following ones are supported: unet, deeplabv3+, hrnet, maskrcnn and u2^net
  • backbone_name (str): name of the backbone
  • loss_func (): loss function.
  • opt_func (): opt function.
  • lr (): learning rates
  • splitter (): splitter function for freazing the learner
  • cbs (List[cb]): list of callbacks
  • pretrained (bool): it defines if a trained backbone is needed
  • normalize (bool): if normalization is applied
  • image_size (int): REQUIRED for MaskRCNN. It indicates the desired size of the image.
  • metrics (List[metric]): list of metrics
  • path (): path parameter
  • model_dir (str): the path in which save models
  • wd (float): wieght decay
  • wd_bn_bias (bool):
  • train_bn (bool):
  • moms (Tuple(float)): tuple of different momentuns

Returns:

  • learner: value containing the learner object

Supported configs

Architecture supported config backbones
unet Semantic Segmentation,binary Semantic Segmentation,multiple resnet18, resnet34, resnet50, resnet101, resnet152, xresnet18, xresnet34, xresnet50, xresnet101, xresnet152, squeezenet1_0, squeezenet1_1, densenet121, densenet169, densenet201, densenet161, vgg11_bn, vgg13_bn, vgg16_bn, vgg19_bn, alexnet
deeplabv3+ Semantic Segmentation,binary Semantic Segmentation,multiple resnet18, resnet34, resnet50, resnet101, resnet152, resnet50c, resnet101c, resnet152c, xception65, mobilenet_v2
hrnet Semantic Segmentation,binary Semantic Segmentation,multiple hrnet_w18_small_model_v1, hrnet_w18_small_model_v2, hrnet_w18, hrnet_w30, hrnet_w32, hrnet_w48
maskrcnn Semantic Segmentation,binary resnet50
u2^net Semantic Segmentation,binary small, normal

📩 Contact

📧 dvdlacallecastillo@gmail.com

💼 Linkedin David Lacalle Castillo

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

SemTorch-0.1.1.tar.gz (41.8 kB view details)

Uploaded Source

File details

Details for the file SemTorch-0.1.1.tar.gz.

File metadata

  • Download URL: SemTorch-0.1.1.tar.gz
  • Upload date:
  • Size: 41.8 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/3.2.0 pkginfo/1.5.0.1 requests/2.21.0 setuptools/49.6.0 requests-toolbelt/0.9.1 tqdm/4.31.1 CPython/3.7.3

File hashes

Hashes for SemTorch-0.1.1.tar.gz
Algorithm Hash digest
SHA256 f0814cd387fc03581fbff4a63b63a50dc889e19780b52273d5a734328c5f1647
MD5 f4ae1f6ec463150b9565f3dbed53d42a
BLAKE2b-256 7859e41afbd4cf5f8bcbf6d0b8117f60586e87f9053610fcb262d2af950ab7b4

See more details on using hashes here.

Supported by

AWS AWS Cloud computing and Security Sponsor Datadog Datadog Monitoring Fastly Fastly CDN Google Google Download Analytics Microsoft Microsoft PSF Sponsor Pingdom Pingdom Monitoring Sentry Sentry Error logging StatusPage StatusPage Status page