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test.py
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test.py
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import torch
import numpy as np
import random
from torch.autograd import Variable
import torch.nn as nn
import torch.optim
import json
import torch.utils.data.sampler
import os
import glob
import time
import configs
import backbone
import data.feature_loader as feat_loader
from data.datamgr import SetDataManager
from methods.baselinetrain import BaselineTrain
from methods.baselinefinetune import BaselineFinetune
from methods.protonet import ProtoNet
from methods.DKT import DKT
from methods.matchingnet import MatchingNet
from methods.relationnet import RelationNet
from methods.maml import MAML
from io_utils import model_dict, get_resume_file, parse_args, get_best_file , get_assigned_file
def _set_seed(seed, verbose=True):
if(seed!=0):
random.seed(seed)
np.random.seed(seed)
torch.manual_seed(seed)
torch.cuda.manual_seed(seed)
torch.cuda.manual_seed_all(seed)
torch.backends.cudnn.deterministic = True
torch.backends.cudnn.benchmark = False
if(verbose): print("[INFO] Setting SEED: " + str(seed))
else:
if(verbose): print("[INFO] Setting SEED: None")
def feature_evaluation(cl_data_file, model, n_way = 5, n_support = 5, n_query = 15, adaptation = False):
class_list = cl_data_file.keys()
select_class = random.sample(class_list,n_way)
z_all = []
for cl in select_class:
img_feat = cl_data_file[cl]
perm_ids = np.random.permutation(len(img_feat)).tolist()
z_all.append( [ np.squeeze( img_feat[perm_ids[i]]) for i in range(n_support+n_query) ] ) # stack each batch
z_all = torch.from_numpy(np.array(z_all) )
model.n_query = n_query
if adaptation:
scores = model.set_forward_adaptation(z_all, is_feature = True)
else:
scores = model.set_forward(z_all, is_feature = True)
pred = scores.data.cpu().numpy().argmax(axis = 1)
y = np.repeat(range( n_way ), n_query )
acc = np.mean(pred == y)*100
return acc
def single_test(params):
acc_all = []
iter_num = 600
few_shot_params = dict(n_way = params.test_n_way , n_support = params.n_shot)
if params.dataset in ['omniglot', 'cross_char']:
assert params.model == 'Conv4' and not params.train_aug ,'omniglot only support Conv4 without augmentation'
params.model = 'Conv4S'
if params.method == 'baseline':
model = BaselineFinetune( model_dict[params.model], **few_shot_params )
elif params.method == 'baseline++':
model = BaselineFinetune( model_dict[params.model], loss_type = 'dist', **few_shot_params )
elif params.method == 'protonet':
model = ProtoNet( model_dict[params.model], **few_shot_params )
elif params.method == 'DKT':
model = DKT(model_dict[params.model], **few_shot_params)
elif params.method == 'matchingnet':
model = MatchingNet( model_dict[params.model], **few_shot_params )
elif params.method in ['relationnet', 'relationnet_softmax']:
if params.model == 'Conv4':
feature_model = backbone.Conv4NP
elif params.model == 'Conv6':
feature_model = backbone.Conv6NP
elif params.model == 'Conv4S':
feature_model = backbone.Conv4SNP
else:
feature_model = lambda: model_dict[params.model]( flatten = False )
loss_type = 'mse' if params.method == 'relationnet' else 'softmax'
model = RelationNet( feature_model, loss_type = loss_type , **few_shot_params )
elif params.method in ['maml' , 'maml_approx']:
backbone.ConvBlock.maml = True
backbone.SimpleBlock.maml = True
backbone.BottleneckBlock.maml = True
backbone.ResNet.maml = True
model = MAML( model_dict[params.model], approx = (params.method == 'maml_approx') , **few_shot_params )
if params.dataset in ['omniglot', 'cross_char']: #maml use different parameter in omniglot
model.n_task = 32
model.task_update_num = 1
model.train_lr = 0.1
else:
raise ValueError('Unknown method')
model = model.cuda()
checkpoint_dir = '%s/checkpoints/%s/%s_%s' %(configs.save_dir, params.dataset, params.model, params.method)
if params.train_aug:
checkpoint_dir += '_aug'
if not params.method in ['baseline', 'baseline++'] :
checkpoint_dir += '_%dway_%dshot' %( params.train_n_way, params.n_shot)
#modelfile = get_resume_file(checkpoint_dir)
if not params.method in ['baseline', 'baseline++'] :
if params.save_iter != -1:
modelfile = get_assigned_file(checkpoint_dir,params.save_iter)
else:
modelfile = get_best_file(checkpoint_dir)
if modelfile is not None:
tmp = torch.load(modelfile)
model.load_state_dict(tmp['state'])
else:
print("[WARNING] Cannot find 'best_file.tar' in: " + str(checkpoint_dir))
split = params.split
if params.save_iter != -1:
split_str = split + "_" +str(params.save_iter)
else:
split_str = split
if params.method in ['maml', 'maml_approx', 'DKT']: #maml do not support testing with feature
if 'Conv' in params.model:
if params.dataset in ['omniglot', 'cross_char']:
image_size = 28
else:
image_size = 84
else:
image_size = 224
datamgr = SetDataManager(image_size, n_eposide = iter_num, n_query = 15 , **few_shot_params)
if params.dataset == 'cross':
if split == 'base':
loadfile = configs.data_dir['miniImagenet'] + 'all.json'
else:
loadfile = configs.data_dir['CUB'] + split +'.json'
elif params.dataset == 'cross_char':
if split == 'base':
loadfile = configs.data_dir['omniglot'] + 'noLatin.json'
else:
loadfile = configs.data_dir['emnist'] + split +'.json'
else:
loadfile = configs.data_dir[params.dataset] + split + '.json'
novel_loader = datamgr.get_data_loader( loadfile, aug = False)
if params.adaptation:
model.task_update_num = 100 #We perform adaptation on MAML simply by updating more times.
model.eval()
acc_mean, acc_std = model.test_loop( novel_loader, return_std = True)
else:
novel_file = os.path.join( checkpoint_dir.replace("checkpoints","features"), split_str +".hdf5") #defaut split = novel, but you can also test base or val classes
cl_data_file = feat_loader.init_loader(novel_file)
for i in range(iter_num):
acc = feature_evaluation(cl_data_file, model, n_query = 15, adaptation = params.adaptation, **few_shot_params)
acc_all.append(acc)
acc_all = np.asarray(acc_all)
acc_mean = np.mean(acc_all)
acc_std = np.std(acc_all)
print('%d Test Acc = %4.2f%% +- %4.2f%%' %(iter_num, acc_mean, 1.96* acc_std/np.sqrt(iter_num)))
with open('./record/results.txt' , 'a') as f:
timestamp = time.strftime("%Y%m%d-%H%M%S", time.localtime())
aug_str = '-aug' if params.train_aug else ''
aug_str += '-adapted' if params.adaptation else ''
if params.method in ['baseline', 'baseline++'] :
exp_setting = '%s-%s-%s-%s%s %sshot %sway_test' %(params.dataset, split_str, params.model, params.method, aug_str, params.n_shot, params.test_n_way )
else:
exp_setting = '%s-%s-%s-%s%s %sshot %sway_train %sway_test' %(params.dataset, split_str, params.model, params.method, aug_str , params.n_shot , params.train_n_way, params.test_n_way )
acc_str = '%d Test Acc = %4.2f%% +- %4.2f%%' %(iter_num, acc_mean, 1.96* acc_std/np.sqrt(iter_num))
f.write( 'Time: %s, Setting: %s, Acc: %s \n' %(timestamp,exp_setting,acc_str) )
return acc_mean
def main():
params = parse_args('test')
seed = params.seed
repeat = params.repeat
#repeat the test N times changing the seed in range [seed, seed+repeat]
accuracy_list = list()
for i in range(seed, seed+repeat):
if(seed!=0): _set_seed(i)
else: _set_seed(0)
accuracy_list.append(single_test(parse_args('test')))
print("-----------------------------")
print('Seeds = %d | Overall Test Acc = %4.2f%% +- %4.2f%%' %(repeat, np.mean(accuracy_list), np.std(accuracy_list)))
print("-----------------------------")
if __name__ == '__main__':
main()