Source code for torchreid.models.__init__

from __future__ import absolute_import
import torch

from .pcb import *
from .mlfn import *
from .hacnn import *
from .osnet import *
from .senet import *
from .mudeep import *
from .nasnet import *
from .resnet import *
from .densenet import *
from .xception import *
from .osnet_ain import *
from .resnetmid import *
from .shufflenet import *
from .squeezenet import *
from .inceptionv4 import *
from .mobilenetv2 import *
from .resnet_ibn_a import *
from .resnet_ibn_b import *
from .shufflenetv2 import *
from .inceptionresnetv2 import *

__model_factory = {
    # image classification models
    'resnet18': resnet18,
    'resnet34': resnet34,
    'resnet50': resnet50,
    'resnet101': resnet101,
    'resnet152': resnet152,
    'resnext50_32x4d': resnext50_32x4d,
    'resnext101_32x8d': resnext101_32x8d,
    'resnet50_fc512': resnet50_fc512,
    'se_resnet50': se_resnet50,
    'se_resnet50_fc512': se_resnet50_fc512,
    'se_resnet101': se_resnet101,
    'se_resnext50_32x4d': se_resnext50_32x4d,
    'se_resnext101_32x4d': se_resnext101_32x4d,
    'densenet121': densenet121,
    'densenet169': densenet169,
    'densenet201': densenet201,
    'densenet161': densenet161,
    'densenet121_fc512': densenet121_fc512,
    'inceptionresnetv2': inceptionresnetv2,
    'inceptionv4': inceptionv4,
    'xception': xception,
    'resnet50_ibn_a': resnet50_ibn_a,
    'resnet50_ibn_b': resnet50_ibn_b,
    # lightweight models
    'nasnsetmobile': nasnetamobile,
    'mobilenetv2_x1_0': mobilenetv2_x1_0,
    'mobilenetv2_x1_4': mobilenetv2_x1_4,
    'shufflenet': shufflenet,
    'squeezenet1_0': squeezenet1_0,
    'squeezenet1_0_fc512': squeezenet1_0_fc512,
    'squeezenet1_1': squeezenet1_1,
    'shufflenet_v2_x0_5': shufflenet_v2_x0_5,
    'shufflenet_v2_x1_0': shufflenet_v2_x1_0,
    'shufflenet_v2_x1_5': shufflenet_v2_x1_5,
    'shufflenet_v2_x2_0': shufflenet_v2_x2_0,
    # reid-specific models
    'mudeep': MuDeep,
    'resnet50mid': resnet50mid,
    'hacnn': HACNN,
    'pcb_p6': pcb_p6,
    'pcb_p4': pcb_p4,
    'mlfn': mlfn,
    'osnet_x1_0': osnet_x1_0,
    'osnet_x0_75': osnet_x0_75,
    'osnet_x0_5': osnet_x0_5,
    'osnet_x0_25': osnet_x0_25,
    'osnet_ibn_x1_0': osnet_ibn_x1_0,
    'osnet_ain_x1_0': osnet_ain_x1_0,
    'osnet_ain_x0_75': osnet_ain_x0_75,
    'osnet_ain_x0_5': osnet_ain_x0_5,
    'osnet_ain_x0_25': osnet_ain_x0_25
}


[docs]def show_avai_models(): """Displays available models. Examples:: >>> from torchreid import models >>> models.show_avai_models() """ print(list(__model_factory.keys()))
[docs]def build_model( name, num_classes, loss='softmax', pretrained=True, use_gpu=True ): """A function wrapper for building a model. Args: name (str): model name. num_classes (int): number of training identities. loss (str, optional): loss function to optimize the model. Currently supports "softmax" and "triplet". Default is "softmax". pretrained (bool, optional): whether to load ImageNet-pretrained weights. Default is True. use_gpu (bool, optional): whether to use gpu. Default is True. Returns: nn.Module Examples:: >>> from torchreid import models >>> model = models.build_model('resnet50', 751, loss='softmax') """ avai_models = list(__model_factory.keys()) if name not in avai_models: raise KeyError( 'Unknown model: {}. Must be one of {}'.format(name, avai_models) ) return __model_factory[name]( num_classes=num_classes, loss=loss, pretrained=pretrained, use_gpu=use_gpu )