Source code for segmentation_models_pytorch.resunet.model

from typing import Optional, Union, List
from .decoder import ResUnetDecoder
from ..encoders import get_encoder
from ..base import SegmentationModel
from ..base import SegmentationHead, ClassificationHead


[docs]class ResUnet(SegmentationModel): """ResUnet_ is a fully convolution neural network for image semantic segmentation. Consist of *encoder* and *decoder* parts connected with *skip connections*. Encoder extract features of different spatial resolution (skip connections) which are used by decoder to define accurate segmentation mask. Use *concatenation* for fusing decoder blocks with skip connections. Use residual connections inside each decoder block. Args: encoder_name: Name of the classification model that will be used as an encoder (a.k.a backbone) to extract features encoder_depth: Number of stages of the encoder, in range [3 ,5]. Each stage generate features two times smaller, in spatial dimensions, than the previous one (e.g., for depth=0 features will haves shapes [(N, C, H, W)]), for depth 1 features will have shapes [(N, C, H, W), (N, C, H // 2, W // 2)] and so on). Default is 5 encoder_weights: One of **None** (random initialization), **"imagenet"** (pre-training on ImageNet) and other pretrained weights (see table with available weights for each encoder_name) decoder_channels: List of integers which specify **in_channels** parameter for convolutions used in the decoder. Length of the list should be the same as **encoder_depth** decoder_use_batchnorm: If **True**, BatchNorm2d layer between Conv2D and Activation layers is used. If **"inplace"** InplaceABN will be used, allows to decrease memory consumption. Available options are **True, False, "inplace"** decoder_attention_type: Attention module used in decoder of the model. Available options are **None**, **se** and **scse**. SE paper - https://arxiv.org/abs/1709.01507 SCSE paper - https://arxiv.org/abs/1808.08127 in_channels: The number of input channels of the model, default is 3 (RGB images) classes: The number of classes of the output mask. Can be thought of as the number of channels of the mask activation: An activation function to apply after the final convolution layer. Available options are **"sigmoid"**, **"softmax"**, **"logsoftmax"**, **"tanh"**, **"identity"**, **callable** and **None**. Default is **None** aux_params: Dictionary with parameters of the auxiliary output (classification head). Auxiliary output is build on top of encoder if **aux_params** is not **None** (default). Supported params: - classes (int): A number of classes - pooling (str): One of "max", "avg". Default is "avg" - dropout (float): Dropout factor in [0, 1) - activation (str): An activation function to apply "sigmoid"/"softmax" (could be **None** to return logits) Returns: ``torch.nn.Module``: ResUnet .. _ResUnet: https://arxiv.org/abs/1711.10684 Reference: https://arxiv.org/abs/1711.10684 """ def __init__( self, encoder_name: str = "resnet34", encoder_depth: int = 5, encoder_weights: Optional[str] = "imagenet", decoder_use_batchnorm: bool = True, decoder_channels: List[int] = (256, 128, 64, 32, 16), decoder_attention_type: Optional[str] = None, in_channels: int = 3, classes: int = 1, activation: Optional[Union[str, callable]] = None, aux_params: Optional[dict] = None, ): super().__init__() self.encoder = get_encoder( encoder_name, in_channels=in_channels, depth=encoder_depth, weights=encoder_weights, ) self.decoder = ResUnetDecoder( encoder_channels=self.encoder.out_channels, decoder_channels=decoder_channels, n_blocks=encoder_depth, use_batchnorm=decoder_use_batchnorm, center=True if encoder_name.startswith("vgg") else False, attention_type=decoder_attention_type, ) self.segmentation_head = SegmentationHead( in_channels=decoder_channels[-1], out_channels=classes, activation=activation, kernel_size=1, ) if aux_params is not None: self.classification_head = ClassificationHead( in_channels=self.encoder.out_channels[-1], **aux_params ) else: self.classification_head = None self.name = "resunet-{}".format(encoder_name) self.initialize()