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test.py
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test.py
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import torch
import torch.utils.data
from bert.modeling_bert import BertModel
from data.dataset_zom import Referzom_Dataset
from data.dataset import ReferDataset
from lib import segmentation
import transforms as T
import utils
import numpy as np
import torch.nn.functional as F
import pdb
def get_dataset(image_set, transform, args, eval_mode):
if args.dataset == 'ref-zom':
ds = Referzom_Dataset(args,
split=image_set,
image_transforms=transform,
target_transforms=None,
eval_mode=eval_mode
)
else:
ds = ReferDataset(args,
split=image_set,
image_transforms=transform,
target_transforms=None,
eval_mode=eval_mode
)
num_classes = 2
return ds, num_classes
def evaluate(model, data_loader, bert_model, device):
model.eval()
metric_logger = utils.MetricLogger(delimiter=" ")
# evaluation variables
cum_I, cum_U = 0, 0
eval_seg_iou_list = [.5, .6, .7, .8, .9]
seg_correct = np.zeros(len(eval_seg_iou_list), dtype=np.int32)
seg_total = 0
mean_IoU = []
mean_acc = []
header = 'Test:'
with torch.no_grad():
for data in metric_logger.log_every(data_loader, 100, header):
image, target, source_type, sentences, sentences_masked, attentions = data
image, target, sentences, attentions = image.to(device), target.to(device), \
sentences.to(device), attentions.to(device)
sentences = sentences.squeeze(1)
attentions = attentions.squeeze(1)
target = target.cpu().data.numpy()
for j in range(sentences.size(-1)):
last_hidden_states = bert_model(sentences[:, :, j], attention_mask=attentions[:, :, j])[0]
embedding = last_hidden_states.permute(0, 2, 1)
output = model(image, embedding, embedding, l_mask=attentions[:, :, j].unsqueeze(-1))[2]
output = output.cpu()
output_mask = output.argmax(1).data.numpy()
if source_type[0] == 'zero':
incorrect_num = np.sum(output_mask)
if incorrect_num == 0:
acc = 1
else:
acc = 0
mean_acc.append(acc)
else:
I, U = computeIoU(output_mask, target)
if U == 0:
this_iou = 0.0
else:
this_iou = I*1.0/U
mean_IoU.append(this_iou)
cum_I += I
cum_U += U
for n_eval_iou in range(len(eval_seg_iou_list)):
eval_seg_iou = eval_seg_iou_list[n_eval_iou]
seg_correct[n_eval_iou] += (this_iou >= eval_seg_iou)
seg_total += 1
del image, target, sentences, attentions, output, output_mask
if bert_model is not None:
del last_hidden_states, embedding
mean_IoU = np.array(mean_IoU)
mIoU = np.mean(mean_IoU)
mean_acc = np.array(mean_acc)
mean_acc = np.mean(mean_acc)
print('Final results:')
results_str = ''
for n_eval_iou in range(len(eval_seg_iou_list)):
results_str += ' precision@%s = %.2f\n' % \
(str(eval_seg_iou_list[n_eval_iou]), seg_correct[n_eval_iou] * 100. / seg_total)
results_str += ' overall IoU = %.2f\n' % (cum_I * 100. / cum_U)
results_str += ' mean IoU = %.2f\n' % (mIoU * 100.)
print(results_str)
if args.dataset == 'ref-zom':
print('Mean accuracy for one-to-zero sample is %.2f\n' % (mean_acc*100))
def get_transform(args):
transforms = [T.Resize(args.img_size, args.img_size),
T.ToTensor(),
T.Normalize(mean=[0.485, 0.456, 0.406], std=[0.229, 0.224, 0.225])
]
return T.Compose(transforms)
def computeIoU(pred_seg, gd_seg):
I = np.sum(np.logical_and(pred_seg, gd_seg))
U = np.sum(np.logical_or(pred_seg, gd_seg))
return I, U
def main(args):
device = torch.device(args.device)
dataset_test, _ = get_dataset(args.split, get_transform(args=args), args, eval_mode=True)
test_sampler = torch.utils.data.SequentialSampler(dataset_test)
data_loader_test = torch.utils.data.DataLoader(dataset_test, batch_size=1,
sampler=test_sampler, num_workers=args.workers)
print(args.model)
single_model = segmentation.__dict__[args.model](pretrained='',args=args)
checkpoint = torch.load(args.test_parameter, map_location='cpu')
single_model.load_state_dict(checkpoint['model'])
model = single_model.to(device)
model_class = BertModel
single_bert_model = model_class.from_pretrained(args.ck_bert)
# work-around for a transformers bug; need to update to a newer version of transformers to remove these two lines
if args.ddp_trained_weights:
single_bert_model.pooler = None
single_bert_model.load_state_dict(checkpoint['bert_model'])
bert_model = single_bert_model.to(device)
evaluate(model, data_loader_test, bert_model, device=device)
if __name__ == "__main__":
from args import get_parser
parser = get_parser()
args = parser.parse_args()
print('Image size: {}'.format(str(args.img_size)))
main(args)