예제 #1
0
def define_model(encoder='resnet'):
    if encoder is 'resnet':
        original_model = resnet.resnet50(pretrained=True)
        Encoder = modules.E_resnet(original_model)
        model = net.model(Encoder,
                          num_features=2048,
                          block_channel=[256, 512, 1024, 2048])
    if encoder is 'densenet':
        original_model = densenet.densenet161(pretrained=True)
        Encoder = modules.E_densenet(original_model)
        model = net.model(Encoder,
                          num_features=2208,
                          block_channel=[192, 384, 1056, 2208])
    if encoder is 'senet':
        original_model = senet.senet154(pretrained='imagenet')
        Encoder = modules.E_senet(original_model)
        model = net.model(Encoder,
                          num_features=2048,
                          block_channel=[256, 512, 1024, 2048])
    if encoder is 'resnet4':
        original_model = resnet4.resnet50(pretrained=True)
        Encoder = modules.E_resnet(original_model)
        model = net.model(Encoder,
                          num_features=2048,
                          block_channel=[256, 512, 1024, 2048])

    return model
def define_model(is_resnet, is_densenet, is_senet):
    use18 = True # True
    if is_resnet:
        if not use18:
            original_model = resnet.resnet18(pretrained = True)
            Encoder = modules.E_resnet(original_model) 
            model = net.model(Encoder, num_features=512, block_channel = [64, 128, 256, 512])
        else:
            stereoModel = Resnet18Encoder(3)  
            model_dict = stereoModel.state_dict()
            encoder_dict = torch.load('./models/monodepth_resnet18_001.pth',map_location='cpu' )
            new_dict = {}
            for key in encoder_dict:
                if key in model_dict:
                    new_dict[key] = encoder_dict[key]

            stereoModel.load_state_dict(new_dict )
            Encoder = stereoModel
            model = net.model(Encoder, num_features=512, block_channel = [64, 128, 256, 512])      
          
    if is_densenet:
        original_model = densenet.densenet161(pretrained=True)
        Encoder = modules.E_densenet(original_model)
        model = net.model(Encoder, num_features=2208, block_channel = [192, 384, 1056, 2208])
    if is_senet:
        original_model = senet.senet154(pretrained='imagenet')
        Encoder = modules.E_senet(original_model)
        model = net.model(Encoder, num_features=2048, block_channel = [256, 512, 1024, 2048])

    return model
예제 #3
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def define_model():
    original_model = resnet.resnet50(pretrained=True)
    Encoder = modules.E_resnet(original_model)
    model = net.model(None,
                      Encoder,
                      num_features=2048,
                      block_channel=[256, 512, 1024, 2048])

    return model
예제 #4
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def define_model(is_resnet, is_densenet, is_senet):
    if is_resnet:
        original_model = resnet.resnet50(pretrained=True)
        Encoder = modules.E_resnet(original_model)
        model = net.model(Encoder, num_features=2048, block_channel=[256, 512, 1024, 2048])
    if is_densenet:
        original_model = densenet.densenet161(pretrained=True)
        Encoder = modules.E_densenet(original_model)
        model = net.model(Encoder, num_features=2208, block_channel=[192, 384, 1056, 2208])
    if is_senet:
        original_model = senet.senet154(pretrained=None)
        Encoder = modules.E_senet(original_model)
        model = net.model(Encoder, num_features=2048, block_channel=[256, 512, 1024, 2048])

    return model
예제 #5
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def define_model(is_resnet,
                 is_densenet,
                 is_senet,
                 model='tbdp',
                 parallel=False,
                 semff=False,
                 pcamff=False):
    if is_resnet:
        original_model = resnet.resnet50(pretrained=True)
        Encoder = modules.E_resnet(original_model)
        if model == 'tbdp':
            model = net.TBDPNet(Encoder,
                                num_features=2048,
                                block_channel=[256, 512, 1024, 2048],
                                parallel=parallel,
                                pcamff=pcamff)
        elif model == 'hu':
            model = net.Hu(Encoder,
                           num_features=2048,
                           block_channel=[256, 512, 1024, 2048],
                           semff=semff,
                           pcamff=pcamff)
        else:
            raise NotImplementedError(
                "Select model type in [\'tbdp\', \'hu\']")
    if is_densenet:
        original_model = densenet.densenet161(pretrained=True)
        Encoder = modules.E_densenet(original_model)
        if model == 'tbdp':
            model = net.TBDPNet(Encoder,
                                num_features=2208,
                                block_channel=[192, 384, 1056, 2208],
                                parallel=parallel,
                                pcamff=pcamff)
        elif model == 'hu':
            model = net.Hu(Encoder,
                           num_features=2208,
                           block_channel=[192, 384, 1056, 2208],
                           semff=semff,
                           pcamff=pcamff)
        else:
            raise NotImplementedError(
                "Select model type in [\'tbdp\', \'hu\']")
    if is_senet:
        original_model = senet.senet154(pretrained='imagenet')
        Encoder = modules.E_senet(original_model)
        if model == 'tbdp':
            model = net.TBDPNet(Encoder,
                                num_features=2048,
                                block_channel=[256, 512, 1024, 2048],
                                parallel=parallel,
                                pcamff=pcamff)
        elif model == 'hu':
            model = net.Hu(Encoder,
                           num_features=2048,
                           block_channel=[256, 512, 1024, 2048],
                           semff=semff,
                           pcamff=pcamff)
        else:
            raise NotImplementedError(
                "Select model type in [\'tbdp\', \'hu\']")

    return model
예제 #6
0
import torch.nn.parallel
import torch.nn.functional
from utils import *
from options import get_args
from dataloader import nyudv2_dataloader
from models.backbone_dict import backbone_dict
from models import modules
from models import net


args = get_args('test')
# lode nyud v2 test set
TestImgLoader = nyudv2_dataloader.getTestingData_NYUDV2(args.batch_size, args.testlist_path, args.root_path)
# model
backbone = backbone_dict[args.backbone]()
Encoder = modules.E_resnet(backbone)

if args.backbone in ['resnet50']:
    model = net.model(Encoder, num_features=2048, block_channel=[256, 512, 1024, 2048], refinenet=args.refinenet)
elif args.backbone in ['resnet18', 'resnet34']:
    model = net.model(Encoder, num_features=512, block_channel=[64, 128, 256, 512], refinenet=args.refinenet)

model = nn.DataParallel(model).cuda()

# load test model
if args.loadckpt is not None and args.loadckpt.endswith('.pth.tar'):
    print("loading the specific model in checkpoint_dir: {}".format(args.loadckpt))
    state_dict = torch.load(args.loadckpt)
    model.load_state_dict(state_dict)
elif os.path.isdir(args.loadckpt):
    all_saved_ckpts = [ckpt for ckpt in os.listdir(args.loadckpt) if ckpt.endswith(".pth.tar")]