|
|
| from __future__ import absolute_import |
|
|
| import sys |
| import numpy as np |
| import torch |
| from torch import nn |
| import os |
| from collections import OrderedDict |
| from torch.autograd import Variable |
| import itertools |
| from model.stylegan.lpips.base_model import BaseModel |
| from scipy.ndimage import zoom |
| import fractions |
| import functools |
| import skimage.transform |
| from tqdm import tqdm |
|
|
| from IPython import embed |
|
|
| from model.stylegan.lpips import networks_basic as networks |
| import model.stylegan.lpips as util |
|
|
| class DistModel(BaseModel): |
| def name(self): |
| return self.model_name |
|
|
| def initialize(self, model='net-lin', net='alex', colorspace='Lab', pnet_rand=False, pnet_tune=False, model_path=None, |
| use_gpu=True, printNet=False, spatial=False, |
| is_train=False, lr=.0001, beta1=0.5, version='0.1', gpu_ids=[0]): |
| ''' |
| INPUTS |
| model - ['net-lin'] for linearly calibrated network |
| ['net'] for off-the-shelf network |
| ['L2'] for L2 distance in Lab colorspace |
| ['SSIM'] for ssim in RGB colorspace |
| net - ['squeeze','alex','vgg'] |
| model_path - if None, will look in weights/[NET_NAME].pth |
| colorspace - ['Lab','RGB'] colorspace to use for L2 and SSIM |
| use_gpu - bool - whether or not to use a GPU |
| printNet - bool - whether or not to print network architecture out |
| spatial - bool - whether to output an array containing varying distances across spatial dimensions |
| spatial_shape - if given, output spatial shape. if None then spatial shape is determined automatically via spatial_factor (see below). |
| spatial_factor - if given, specifies upsampling factor relative to the largest spatial extent of a convolutional layer. if None then resized to size of input images. |
| spatial_order - spline order of filter for upsampling in spatial mode, by default 1 (bilinear). |
| is_train - bool - [True] for training mode |
| lr - float - initial learning rate |
| beta1 - float - initial momentum term for adam |
| version - 0.1 for latest, 0.0 was original (with a bug) |
| gpu_ids - int array - [0] by default, gpus to use |
| ''' |
| BaseModel.initialize(self, use_gpu=use_gpu, gpu_ids=gpu_ids) |
|
|
| self.model = model |
| self.net = net |
| self.is_train = is_train |
| self.spatial = spatial |
| self.gpu_ids = gpu_ids |
| self.model_name = '%s [%s]'%(model,net) |
|
|
| if(self.model == 'net-lin'): |
| self.net = networks.PNetLin(pnet_rand=pnet_rand, pnet_tune=pnet_tune, pnet_type=net, |
| use_dropout=True, spatial=spatial, version=version, lpips=True) |
| kw = {} |
| if not use_gpu: |
| kw['map_location'] = 'cpu' |
| if(model_path is None): |
| import inspect |
| model_path = os.path.abspath(os.path.join(inspect.getfile(self.initialize), '..', 'weights/v%s/%s.pth'%(version,net))) |
|
|
| if(not is_train): |
| print('Loading model from: %s'%model_path) |
| self.net.load_state_dict(torch.load(model_path, **kw), strict=False) |
|
|
| elif(self.model=='net'): |
| self.net = networks.PNetLin(pnet_rand=pnet_rand, pnet_type=net, lpips=False) |
| elif(self.model in ['L2','l2']): |
| self.net = networks.L2(use_gpu=use_gpu,colorspace=colorspace) |
| 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()) |
|
|
| if self.is_train: |
| |
| self.rankLoss = networks.BCERankingLoss() |
| self.parameters += list(self.rankLoss.net.parameters()) |
| self.lr = lr |
| self.old_lr = lr |
| self.optimizer_net = torch.optim.Adam(self.parameters, lr=lr, betas=(beta1, 0.999)) |
| else: |
| self.net.eval() |
|
|
| if(use_gpu): |
| self.net.to(gpu_ids[0]) |
| self.net = torch.nn.DataParallel(self.net, device_ids=gpu_ids) |
| if(self.is_train): |
| self.rankLoss = self.rankLoss.to(device=gpu_ids[0]) |
|
|
| if(printNet): |
| print('---------- Networks initialized -------------') |
| networks.print_network(self.net) |
| print('-----------------------------------------------') |
|
|
| def forward(self, in0, in1, retPerLayer=False): |
| ''' Function computes the distance between image patches in0 and in1 |
| INPUTS |
| in0, in1 - torch.Tensor object of shape Nx3xXxY - image patch scaled to [-1,1] |
| OUTPUT |
| computed distances between in0 and in1 |
| ''' |
|
|
| return self.net.forward(in0, in1, retPerLayer=retPerLayer) |
|
|
| |
| def optimize_parameters(self): |
| self.forward_train() |
| self.optimizer_net.zero_grad() |
| self.backward_train() |
| self.optimizer_net.step() |
| self.clamp_weights() |
|
|
| def clamp_weights(self): |
| for module in self.net.modules(): |
| if(hasattr(module, 'weight') and module.kernel_size==(1,1)): |
| module.weight.data = torch.clamp(module.weight.data,min=0) |
|
|
| def set_input(self, data): |
| self.input_ref = data['ref'] |
| self.input_p0 = data['p0'] |
| self.input_p1 = data['p1'] |
| self.input_judge = data['judge'] |
|
|
| if(self.use_gpu): |
| self.input_ref = self.input_ref.to(device=self.gpu_ids[0]) |
| self.input_p0 = self.input_p0.to(device=self.gpu_ids[0]) |
| self.input_p1 = self.input_p1.to(device=self.gpu_ids[0]) |
| self.input_judge = self.input_judge.to(device=self.gpu_ids[0]) |
|
|
| self.var_ref = Variable(self.input_ref,requires_grad=True) |
| self.var_p0 = Variable(self.input_p0,requires_grad=True) |
| self.var_p1 = Variable(self.input_p1,requires_grad=True) |
|
|
| def forward_train(self): |
| |
| |
|
|
| self.d0 = self.forward(self.var_ref, self.var_p0) |
| self.d1 = self.forward(self.var_ref, self.var_p1) |
| self.acc_r = self.compute_accuracy(self.d0,self.d1,self.input_judge) |
|
|
| self.var_judge = Variable(1.*self.input_judge).view(self.d0.size()) |
|
|
| self.loss_total = self.rankLoss.forward(self.d0, self.d1, self.var_judge*2.-1.) |
|
|
| return self.loss_total |
|
|
| def backward_train(self): |
| torch.mean(self.loss_total).backward() |
|
|
| def compute_accuracy(self,d0,d1,judge): |
| ''' d0, d1 are Variables, judge is a Tensor ''' |
| d1_lt_d0 = (d1<d0).cpu().data.numpy().flatten() |
| judge_per = judge.cpu().numpy().flatten() |
| return d1_lt_d0*judge_per + (1-d1_lt_d0)*(1-judge_per) |
|
|
| def get_current_errors(self): |
| retDict = OrderedDict([('loss_total', self.loss_total.data.cpu().numpy()), |
| ('acc_r', self.acc_r)]) |
|
|
| for key in retDict.keys(): |
| retDict[key] = np.mean(retDict[key]) |
|
|
| return retDict |
|
|
| def get_current_visuals(self): |
| zoom_factor = 256/self.var_ref.data.size()[2] |
|
|
| ref_img = util.tensor2im(self.var_ref.data) |
| p0_img = util.tensor2im(self.var_p0.data) |
| p1_img = util.tensor2im(self.var_p1.data) |
|
|
| ref_img_vis = zoom(ref_img,[zoom_factor, zoom_factor, 1],order=0) |
| p0_img_vis = zoom(p0_img,[zoom_factor, zoom_factor, 1],order=0) |
| p1_img_vis = zoom(p1_img,[zoom_factor, zoom_factor, 1],order=0) |
|
|
| return OrderedDict([('ref', ref_img_vis), |
| ('p0', p0_img_vis), |
| ('p1', p1_img_vis)]) |
|
|
| def save(self, path, label): |
| if(self.use_gpu): |
| self.save_network(self.net.module, path, '', label) |
| else: |
| self.save_network(self.net, path, '', label) |
| self.save_network(self.rankLoss.net, path, 'rank', label) |
|
|
| def update_learning_rate(self,nepoch_decay): |
| lrd = self.lr / nepoch_decay |
| lr = self.old_lr - lrd |
|
|
| for param_group in self.optimizer_net.param_groups: |
| param_group['lr'] = lr |
|
|
| print('update lr [%s] decay: %f -> %f' % (type,self.old_lr, lr)) |
| self.old_lr = lr |
|
|
| def score_2afc_dataset(data_loader, func, name=''): |
| ''' Function computes Two Alternative Forced Choice (2AFC) score using |
| distance function 'func' in dataset 'data_loader' |
| INPUTS |
| data_loader - CustomDatasetDataLoader object - contains a TwoAFCDataset inside |
| func - callable distance function - calling d=func(in0,in1) should take 2 |
| pytorch tensors with shape Nx3xXxY, and return numpy array of length N |
| OUTPUTS |
| [0] - 2AFC score in [0,1], fraction of time func agrees with human evaluators |
| [1] - dictionary with following elements |
| d0s,d1s - N arrays containing distances between reference patch to perturbed patches |
| gts - N array in [0,1], preferred patch selected by human evaluators |
| (closer to "0" for left patch p0, "1" for right patch p1, |
| "0.6" means 60pct people preferred right patch, 40pct preferred left) |
| scores - N array in [0,1], corresponding to what percentage function agreed with humans |
| CONSTS |
| N - number of test triplets in data_loader |
| ''' |
|
|
| d0s = [] |
| d1s = [] |
| gts = [] |
|
|
| for data in tqdm(data_loader.load_data(), desc=name): |
| d0s+=func(data['ref'],data['p0']).data.cpu().numpy().flatten().tolist() |
| d1s+=func(data['ref'],data['p1']).data.cpu().numpy().flatten().tolist() |
| gts+=data['judge'].cpu().numpy().flatten().tolist() |
|
|
| d0s = np.array(d0s) |
| d1s = np.array(d1s) |
| gts = np.array(gts) |
| scores = (d0s<d1s)*(1.-gts) + (d1s<d0s)*gts + (d1s==d0s)*.5 |
|
|
| return(np.mean(scores), dict(d0s=d0s,d1s=d1s,gts=gts,scores=scores)) |
|
|
| def score_jnd_dataset(data_loader, func, name=''): |
| ''' Function computes JND score using distance function 'func' in dataset 'data_loader' |
| INPUTS |
| data_loader - CustomDatasetDataLoader object - contains a JNDDataset inside |
| func - callable distance function - calling d=func(in0,in1) should take 2 |
| pytorch tensors with shape Nx3xXxY, and return pytorch array of length N |
| OUTPUTS |
| [0] - JND score in [0,1], mAP score (area under precision-recall curve) |
| [1] - dictionary with following elements |
| ds - N array containing distances between two patches shown to human evaluator |
| sames - N array containing fraction of people who thought the two patches were identical |
| CONSTS |
| N - number of test triplets in data_loader |
| ''' |
|
|
| ds = [] |
| gts = [] |
|
|
| for data in tqdm(data_loader.load_data(), desc=name): |
| ds+=func(data['p0'],data['p1']).data.cpu().numpy().tolist() |
| gts+=data['same'].cpu().numpy().flatten().tolist() |
|
|
| sames = np.array(gts) |
| ds = np.array(ds) |
|
|
| sorted_inds = np.argsort(ds) |
| ds_sorted = ds[sorted_inds] |
| sames_sorted = sames[sorted_inds] |
|
|
| TPs = np.cumsum(sames_sorted) |
| FPs = np.cumsum(1-sames_sorted) |
| FNs = np.sum(sames_sorted)-TPs |
|
|
| precs = TPs/(TPs+FPs) |
| recs = TPs/(TPs+FNs) |
| score = util.voc_ap(recs,precs) |
|
|
| return(score, dict(ds=ds,sames=sames)) |
|
|