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self.model_name = '%s [%s]'%(model,net)
if(self.model == 'net-lin'): # pretrained net + linear layer
self.net = networks.PNetLin(use_gpu=use_gpu,pnet_type=net,use_dropout=True)
weight_path = os.path.join(os.path.dirname(__file__), 'weights', '%s.pth' % net)
self.net.load_state_dict(torch.load(weight_path,
map_location=self.map_location))
elif(self.model=='net'): # pretrained network
self.net = networks.PNet(use_gpu=use_gpu,pnet_type=net)
self.is_fake_net = True
elif(self.model in ['L2','l2']):
self.net = networks.L2(use_gpu=use_gpu,colorspace=colorspace) # not really a network, only for testing
self.model_name = 'L2'
elif(self.model in ['DSSIM','dssim','SSIM','ssim']):
self.net = networks.DSSIM(use_gpu=use_gpu,colorspace=colorspace)
self.model_name = 'SSIM'
else:
raise ValueError("Model [%s] not recognized." % self.model)
self.parameters = list(self.net.parameters())
self.net.eval()
if(printNet):
print('---------- Networks initialized -------------')
networks.print_network(self.net)
print('-----------------------------------------------')