def transt_resnet50(settings): num_classes = 1 backbone_net = build_backbone(settings, backbone_pretrained=True) featurefusion_network = build_featurefusion_network(settings) model = TransT(backbone_net, featurefusion_network, num_classes=num_classes) device = torch.device(settings.device) model.to(device) return model
def transt_resnet50(settings): num_classes = 1 backbone_net = build_backbone(settings, backbone_pretrained=True) featurefusion_network = build_featurefusion_network(settings) model = TransT(backbone_net, featurefusion_network, num_classes=num_classes) device = torch.device(settings.device) model.to(device) # if hasattr(settings, "init_ckpt") and settings.init_ckpt: # print("Initializing from settings.init_ckpt") # model = load_weights(model, settings.init_ckpt, strict=True) return model
def transt_resnet50(settings): num_classes = 1 backbone_net = build_backbone(settings, backbone_pretrained=True) featurefusion_network = build_featurefusion_network(settings) model = TransT(backbone_net, featurefusion_network, num_classes=num_classes) device = torch.device(settings.device) model.to(device) if settings.init_ckpt: print("Initializing from settings.init_ckpt") model = load_weights( model, settings.init_ckpt, strict=False) # Not strict so we can add to the model return model