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worker.py
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worker.py
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from __future__ import absolute_import
import os
os.environ.setdefault('DJANGO_SETTINGS_MODULE', 'vilbert_multitask.settings')
import django
django.setup()
from django.conf import settings
from demo.utils import log_to_terminal
from demo.models import QuestionAnswer, Tasks
import demo.constants as constants
import pika
import time
import yaml
import json
import traceback
import signal
import requests
import atexit
django.db.close_old_connections()
import sys
import os
import torch
import yaml
import cv2
import argparse
import glob
import pdb
import numpy as np
import PIL
import _pickle as cPickle
import time
import traceback
import uuid
from PIL import Image
from easydict import EasyDict as edict
from pytorch_transformers.tokenization_bert import BertTokenizer
from vilbert.datasets import ConceptCapLoaderTrain, ConceptCapLoaderVal
from vilbert.vilbert import VILBertForVLTasks, BertConfig, BertForMultiModalPreTraining
from vilbert.task_utils import LoadDatasetEval
import matplotlib.pyplot as plt
from maskrcnn_benchmark.config import cfg
from maskrcnn_benchmark.layers import nms
from maskrcnn_benchmark.modeling.detector import build_detection_model
from maskrcnn_benchmark.structures.image_list import to_image_list
from maskrcnn_benchmark.utils.model_serialization import load_state_dict
from types import SimpleNamespace
class FeatureExtractor:
MAX_SIZE = 1333
MIN_SIZE = 800
def __init__(self):
self.args = self.get_parser()
self.detection_model = self._build_detection_model()
def get_parser(self):
parser = SimpleNamespace(model_file= 'save/resnext_models/model_final.pth',
config_file='save/resnext_models/e2e_faster_rcnn_X-152-32x8d-FPN_1x_MLP_2048_FPN_512_train.yaml',
batch_size=1,
num_features=100,
feature_name="fc6",
confidence_threshold=0,
background=False,
partition=0)
return parser
def _build_detection_model(self):
cfg.merge_from_file(self.args.config_file)
cfg.freeze()
model = build_detection_model(cfg)
checkpoint = torch.load(self.args.model_file, map_location=torch.device("cpu"))
load_state_dict(model, checkpoint.pop("model"))
model.to("cuda")
model.eval()
return model
def _image_transform(self, path):
img = Image.open(path)
im = np.array(img).astype(np.float32)
# IndexError: too many indices for array, grayscale images
if len(im.shape) < 3:
im = np.repeat(im[:, :, np.newaxis], 3, axis=2)
im = im[:,:,:3]
im = im[:, :, ::-1]
im -= np.array([102.9801, 115.9465, 122.7717])
im_shape = im.shape
im_height = im_shape[0]
im_width = im_shape[1]
im_size_min = np.min(im_shape[0:2])
im_size_max = np.max(im_shape[0:2])
# Scale based on minimum size
im_scale = self.MIN_SIZE / im_size_min
# Prevent the biggest axis from being more than max_size
# If bigger, scale it down
if np.round(im_scale * im_size_max) > self.MAX_SIZE:
im_scale = self.MAX_SIZE / im_size_max
im = cv2.resize(
im, None, None, fx=im_scale, fy=im_scale, interpolation=cv2.INTER_LINEAR
)
img = torch.from_numpy(im).permute(2, 0, 1)
im_info = {"width": im_width, "height": im_height}
return img, im_scale, im_info
def _process_feature_extraction(
self, output, im_scales, im_infos, feature_name="fc6", conf_thresh=0
):
batch_size = len(output[0]["proposals"])
n_boxes_per_image = [len(boxes) for boxes in output[0]["proposals"]]
score_list = output[0]["scores"].split(n_boxes_per_image)
score_list = [torch.nn.functional.softmax(x, -1) for x in score_list]
feats = output[0][feature_name].split(n_boxes_per_image)
cur_device = score_list[0].device
feat_list = []
info_list = []
for i in range(batch_size):
dets = output[0]["proposals"][i].bbox / im_scales[i]
scores = score_list[i]
max_conf = torch.zeros((scores.shape[0])).to(cur_device)
conf_thresh_tensor = torch.full_like(max_conf, conf_thresh)
start_index = 1
# Column 0 of the scores matrix is for the background class
if self.args.background:
start_index = 0
for cls_ind in range(start_index, scores.shape[1]):
cls_scores = scores[:, cls_ind]
keep = nms(dets, cls_scores, 0.5)
max_conf[keep] = torch.where(
# Better than max one till now and minimally greater than conf_thresh
(cls_scores[keep] > max_conf[keep])
& (cls_scores[keep] > conf_thresh_tensor[keep]),
cls_scores[keep],
max_conf[keep],
)
sorted_scores, sorted_indices = torch.sort(max_conf, descending=True)
num_boxes = (sorted_scores[: self.args.num_features] != 0).sum()
keep_boxes = sorted_indices[: self.args.num_features]
feat_list.append(feats[i][keep_boxes])
bbox = output[0]["proposals"][i][keep_boxes].bbox / im_scales[i]
# Predict the class label using the scores
objects = torch.argmax(scores[keep_boxes][start_index:], dim=1)
cls_prob = torch.max(scores[keep_boxes][start_index:], dim=1)
info_list.append(
{
"bbox": bbox.cpu().numpy(),
"num_boxes": num_boxes.item(),
"objects": objects.cpu().numpy(),
"image_width": im_infos[i]["width"],
"image_height": im_infos[i]["height"],
"cls_prob": scores[keep_boxes].cpu().numpy(),
}
)
return feat_list, info_list
def get_detectron_features(self, image_paths):
img_tensor, im_scales, im_infos = [], [], []
for image_path in image_paths:
im, im_scale, im_info = self._image_transform(image_path)
img_tensor.append(im)
im_scales.append(im_scale)
im_infos.append(im_info)
# Image dimensions should be divisible by 32, to allow convolutions
# in detector to work
current_img_list = to_image_list(img_tensor, size_divisible=32)
current_img_list = current_img_list.to("cuda")
with torch.no_grad():
output = self.detection_model(current_img_list)
feat_list = self._process_feature_extraction(
output,
im_scales,
im_infos,
self.args.feature_name,
self.args.confidence_threshold,
)
return feat_list
def _chunks(self, array, chunk_size):
for i in range(0, len(array), chunk_size):
yield array[i : i + chunk_size]
def _save_feature(self, file_name, feature, info):
file_base_name = os.path.basename(file_name)
file_base_name = file_base_name.split(".")[0]
info["image_id"] = file_base_name
info["features"] = feature.cpu().numpy()
file_base_name = file_base_name + ".npy"
np.save(os.path.join(self.args.output_folder, file_base_name), info)
def extract_features(self, image_path):
with torch.no_grad():
features, infos = self.get_detectron_features(image_path)
return features, infos
def tokenize_batch(batch):
return [tokenizer.convert_tokens_to_ids(sent) for sent in batch]
def untokenize_batch(batch):
return [tokenizer.convert_ids_to_tokens(sent) for sent in batch]
def detokenize(sent):
""" Roughly detokenizes (mainly undoes wordpiece) """
new_sent = []
for i, tok in enumerate(sent):
if tok.startswith("##"):
new_sent[len(new_sent) - 1] = new_sent[len(new_sent) - 1] + tok[2:]
else:
new_sent.append(tok)
return new_sent
def printer(sent, should_detokenize=True):
if should_detokenize:
sent = detokenize(sent)[1:-1]
print(" ".join(sent))
def prediction(question, features, spatials, segment_ids, input_mask, image_mask, co_attention_mask, task_tokens, task_id, infos):
if task_id == "7":
N = len(infos) # define top N results need to return.
else:
N = 3
# check the number of image is correct:
if task_id in ["1", "15", "13", "11", "4", "16"]:
assert len(infos) == 1, "task require 1 image"
elif task_id in ["12"]:
assert len(infos) == 2, "task require 2 images"
elif task_id in ["7"]:
assert len(infos) > 1 and len(infos) <= 10, "task require 2-10 images"
else:
raise ValueError('task not valid.')
if task_id == "12":
batch_size = 1
max_num_bbox = features.size(1)
num_options = question.size(1)
question = question.repeat(2, 1)
# question = question.view(batch_size * 2, int(question.size(1) / 2))
input_mask = input_mask.repeat(2, 1)
# input_mask = input_mask.view(batch_size * 2, int(input_mask.size(1) / 2))
segment_ids = segment_ids.repeat(2, 1)
# segment_ids = segment_ids.view(batch_size * 2, int(segment_ids.size(1) / 2))
task_tokens = task_tokens.repeat(2, 1)
if task_id == "7":
num_image = features.size(0)
max_num_bbox = features.size(1)
question = question.repeat(num_image, 1)
input_mask = input_mask.repeat(num_image, 1)
segment_ids = segment_ids.repeat(num_image, 1)
task_tokens = task_tokens.repeat(num_image, 1)
with torch.no_grad():
vil_prediction, vil_prediction_gqa, vil_logit, vil_binary_prediction, vil_tri_prediction, vision_prediction, vision_logit, linguisic_prediction, linguisic_logit, attn_data_list = model(
question, features, spatials, segment_ids, input_mask, image_mask, co_attention_mask, task_tokens, output_all_attention_masks=True
)
# logits = torch.max(vil_prediction, 1)[1].data # argmax
# pdb.set_trace()
# Load VQA label to answers:
if task_id == "1" or task_id == "2":
prob = torch.softmax(vil_prediction.view(-1), dim=0)
prob_val, prob_idx = torch.sort(prob, 0, True)
label2ans_path = os.path.join('save', "VQA" ,"cache", "trainval_label2ans.pkl")
vqa_label2ans = cPickle.load(open(label2ans_path, "rb"))
answer = [vqa_label2ans[prob_idx[i].item()] for i in range(N)]
confidence = [prob_val[i].item() for i in range(N)]
output = {
"top3_answer": answer,
"top3_confidence": confidence
}
return output
# Load GQA label to answers:
if task_id == "15":
label2ans_path = os.path.join('save', "gqa" ,"cache", "trainval_label2ans.pkl")
prob_gqa = torch.softmax(vil_prediction_gqa.view(-1), dim=0)
prob_val, prob_idx = torch.sort(prob_gqa, 0, True)
gqa_label2ans = cPickle.load(open(label2ans_path, "rb"))
answer = [gqa_label2ans[prob_idx[i].item()] for i in range(N)]
confidence = [prob_val[i].item() for i in range(N)]
output = {
"top3_answer": answer,
"top3_confidence": confidence
}
return output
# vil_binary_prediction NLVR2, 0: False 1: True Task 12
if task_id == "12":
label_map = {0:"False", 1:"True"}
prob_binary = torch.softmax(vil_binary_prediction.view(-1), dim=0)
prob_val, prob_idx = torch.sort(prob_binary, 0, True)
answer = [label_map[prob_idx[i].item()] for i in range(2)]
confidence = [prob_val[i].item() for i in range(2)]
output = {
"top3_answer": answer,
"top3_confidence": confidence
}
return output
# vil_entaliment:
if task_id == "13":
label_map = {0:"contradiction (false)", 1:"neutral", 2:"entailment (true)"}
# logtis_tri = torch.max(vil_tri_prediction, 1)[1].data
prob_tri = torch.softmax(vil_tri_prediction.view(-1), dim=0)
prob_val, prob_idx = torch.sort(prob_tri, 0, True)
answer = [label_map[prob_idx[i].item()] for i in range(3)]
confidence = [prob_val[i].item() for i in range(3)]
output = {
"top3_answer": answer,
"top3_confidence": confidence
}
return output
# vil_logit:
# For image retrieval
if task_id == "7":
sort_val, sort_idx = torch.sort(torch.softmax(vil_logit.view(-1), dim=0), 0, True)
idx = [sort_idx[i].item() for i in range(N)]
confidence = [sort_val[i].item() for i in range(N)]
output = {
"top3_answer": idx,
"top3_confidence": confidence
}
return output
# grounding:
# For refer expressions -
if task_id == "11" or task_id == "4" or task_id == "16":
image_w = infos[0]['image_width']
image_h = infos[0]['image_height']
prob = torch.softmax(vision_logit.view(-1), dim=0)
grounding_val, grounding_idx = torch.sort(prob, 0, True)
out = []
for i in range(N):
idx = grounding_idx[i]
val = grounding_val[i]
box = spatials[0][idx][:4].tolist()
y1 = int(box[1] * image_h)
y2 = int(box[3] * image_h)
x1 = int(box[0] * image_w)
x2 = int(box[2] * image_w)
out.append({"y1":y1, "y2":y2, "x1":x1, "x2":x2, 'confidence':val.item()*100})
return out
def custom_prediction(query, task, features, infos, task_id):
# if task is Guesswhat:
if task_id in ["16"]:
tokens_list = []
dialogs = query.split("q:")[1:]
for dialog in dialogs:
QA_pair = dialog.split("a:")
tokens_list.append("start " + QA_pair[0] + " answer " + QA_pair[1] + " stop ")
tokens = ''
for token in tokens_list:
tokens = tokens + token
tokens = tokenizer.encode(query)
tokens = tokenizer.add_special_tokens_single_sentence(tokens)
segment_ids = [0] * len(tokens)
input_mask = [1] * len(tokens)
max_length = 37
if len(tokens) < max_length:
# Note here we pad in front of the sentence
padding = [0] * (max_length - len(tokens))
tokens = tokens + padding
input_mask += padding
segment_ids += padding
text = torch.from_numpy(np.array(tokens)).cuda().unsqueeze(0)
input_mask = torch.from_numpy(np.array(input_mask)).cuda().unsqueeze(0)
segment_ids = torch.from_numpy(np.array(segment_ids)).cuda().unsqueeze(0)
task = torch.from_numpy(np.array(task)).cuda().unsqueeze(0)
num_image = len(infos)
feature_list = []
image_location_list = []
image_mask_list = []
for i in range(num_image):
image_w = infos[i]['image_width']
image_h = infos[i]['image_height']
feature = features[i]
num_boxes = feature.shape[0]
g_feat = torch.sum(feature, dim=0) / num_boxes
num_boxes = num_boxes + 1
feature = torch.cat([g_feat.view(1,-1), feature], dim=0)
boxes = infos[i]['bbox']
image_location = np.zeros((boxes.shape[0], 5), dtype=np.float32)
image_location[:,:4] = boxes
image_location[:,4] = (image_location[:,3] - image_location[:,1]) * (image_location[:,2] - image_location[:,0]) / (float(image_w) * float(image_h))
image_location[:,0] = image_location[:,0] / float(image_w)
image_location[:,1] = image_location[:,1] / float(image_h)
image_location[:,2] = image_location[:,2] / float(image_w)
image_location[:,3] = image_location[:,3] / float(image_h)
g_location = np.array([0,0,1,1,1])
image_location = np.concatenate([np.expand_dims(g_location, axis=0), image_location], axis=0)
image_mask = [1] * (int(num_boxes))
feature_list.append(feature)
image_location_list.append(torch.tensor(image_location))
image_mask_list.append(torch.tensor(image_mask))
features = torch.stack(feature_list, dim=0).float().cuda()
spatials = torch.stack(image_location_list, dim=0).float().cuda()
image_mask = torch.stack(image_mask_list, dim=0).byte().cuda()
co_attention_mask = torch.zeros((num_image, num_boxes, max_length)).cuda()
answer = prediction(text, features, spatials, segment_ids, input_mask, image_mask, co_attention_mask, task, task_id, infos)
return answer
# =============================
# ViLBERT Model Loading Part
# =============================
def load_vilbert_model():
global feature_extractor
global tokenizer
global model
feature_extractor = FeatureExtractor()
args = SimpleNamespace(from_pretrained= "save/multitask_model/pytorch_model_9.bin",
bert_model="bert-base-uncased",
config_file="config/bert_base_6layer_6conect.json",
max_seq_length=101,
train_batch_size=1,
do_lower_case=True,
predict_feature=False,
seed=42,
num_workers=0,
baseline=False,
img_weight=1,
distributed=False,
objective=1,
visual_target=0,
dynamic_attention=False,
task_specific_tokens=True,
tasks='1',
save_name='',
in_memory=False,
batch_size=1,
local_rank=-1,
split='mteval',
clean_train_sets=True
)
config = BertConfig.from_json_file(args.config_file)
with open('./vilbert_tasks.yml', 'r') as f:
task_cfg = edict(yaml.safe_load(f))
task_names = []
for i, task_id in enumerate(args.tasks.split('-')):
task = 'TASK' + task_id
name = task_cfg[task]['name']
task_names.append(name)
timeStamp = args.from_pretrained.split('/')[-1] + '-' + args.save_name
config = BertConfig.from_json_file(args.config_file)
default_gpu=True
if args.predict_feature:
config.v_target_size = 2048
config.predict_feature = True
else:
config.v_target_size = 1601
config.predict_feature = False
if args.task_specific_tokens:
config.task_specific_tokens = True
if args.dynamic_attention:
config.dynamic_attention = True
config.visualization = True
num_labels = 3129
if args.baseline:
model = BaseBertForVLTasks.from_pretrained(
args.from_pretrained, config=config, num_labels=num_labels, default_gpu=default_gpu
)
else:
model = VILBertForVLTasks.from_pretrained(
args.from_pretrained, config=config, num_labels=num_labels, default_gpu=default_gpu
)
model.eval()
cuda = torch.cuda.is_available()
if cuda: model = model.cuda(0)
tokenizer = BertTokenizer.from_pretrained(
args.bert_model, do_lower_case=args.do_lower_case
)
def callback(ch, method, properties, body):
print("I'm callback")
start = time.time()
body = yaml.safe_load(body) # using yaml instead of json.loads since that unicodes the string in value
print(" [x] Received %r" % body)
try:
task = Tasks.objects.get(unique_id=int(body["task_id"]))
question_obj = QuestionAnswer.objects.create(task=task,
input_text=body['question'],
input_images=body['image_path'],
socket_id=body['socket_id'])
print("created question answer object")
except:
print(str(traceback.print_exc()))
try:
image_path = body["image_path"]
features, infos = feature_extractor.extract_features(image_path)
query = body["question"]
socket_id = body["socket_id"]
task_id = body["task_id"]
task = [eval(task_id)]
answer = custom_prediction(query, task, features, infos, task_id)
if (task_id == "1" or task_id == "15" or task_id == "2" or task_id == "13"):
top3_answer = answer["top3_answer"]
top3_confidence = answer["top3_confidence"]
top3_list = []
for i in range(3):
temp = {}
temp["answer"] = top3_answer[i]
temp["confidence"] = round(top3_confidence[i]*100, 2)
top3_list.append(temp)
result = {
"task_id": task_id,
"result": top3_list
}
print("The task result is", result)
question_obj.answer_text = result
question_obj.save()
if (task_id == "4" or task_id == "16" or task_id == "11"):
print("The answer is", answer)
image_name_with_bounding_boxes = uuid.uuid4()
image = image_path[0].split("/")
abs_path = ""
for i in range(len(image)-3):
abs_path += image[i]
abs_path += "/"
color_list = [(0,0,255),(0,255,0),(255,0,0)]
image_name_list = []
confidence_list = []
for i, j in zip(answer, color_list):
image_obj = cv2.imread(image_path[0])
image_name = uuid.uuid4()
image_with_bounding_boxes = cv2.rectangle(image_obj, (i["x1"], i["y1"]), (i["x2"], i["y2"]), j, 4)
image_name_list.append(str(image_name))
confidence_list.append(round(i["confidence"], 2))
cv2.imwrite(os.path.join(abs_path, "media", "refer_expressions_task", str(image_name)+ ".jpg"), image_with_bounding_boxes)
result = {
"task_id": task_id,
"image_name_list": image_name_list,
"confidence_list": confidence_list
}
question_obj.answer_images = result
question_obj.save()
if (task_id == "12"):
print(answer)
top3_answer = answer["top3_answer"]
top3_confidence = answer["top3_confidence"]
top3_list = []
for i in range(2):
temp = {}
temp["answer"] = top3_answer[i]
temp["confidence"] = round(top3_confidence[i]*100, 2)
top3_list.append(temp)
result = {
"task_id": task_id,
"result": top3_list
}
question_obj.answer_text = result
question_obj.save()
if (task_id == "7"):
top3_answer = answer["top3_answer"]
top3_confidence = answer["top3_confidence"]
image_name_list = []
confidence_list = []
for i in range(len(top3_answer)):
print(image_path[top3_answer[i]])
if "demo" in image_path[0].split("/"):
image_name_list.append("demo/" + os.path.split(image_path[top3_answer[i]])[1].split(".")[0] + "." + str(image_path[0].split("/")[-1].split(".")[1]))
else:
image_name_list.append("test2014/" + os.path.split(image_path[top3_answer[i]])[1].split(".")[0] + "." + str(image_path[0].split("/")[-1].split(".")[1]))
confidence_list.append(round(top3_confidence[i]*100, 2))
result = {
"task_id": task_id,
"image_name_list": image_name_list,
"confidence_list": confidence_list
}
print("The result is", result)
question_obj.answer_images = result
question_obj.save()
log_to_terminal(body['socket_id'], {"terminal": json.dumps(result)})
log_to_terminal(body['socket_id'], {"result": json.dumps(result)})
log_to_terminal(body['socket_id'], {"terminal": "Completed Task"})
ch.basic_ack(delivery_tag=method.delivery_tag)
print("Message Deleted")
django.db.close_old_connections()
except Exception as e:
print(traceback.print_exc())
print(str(e))
end = time.time()
print("Time taken is", end - start)
def main():
# Load correponding Vilbert model into global instance
load_vilbert_model()
connection = pika.BlockingConnection(pika.ConnectionParameters(
host='localhost',
port=5672,
socket_timeout=10000))
channel = connection.channel()
channel.queue_declare(queue='vilbert_multitask_queue', durable=True)
print('[*] Waiting for messages. To exit press CTRL+C')
# Listen to interface
channel.basic_consume('vilbert_multitask_queue', callback)
channel.start_consuming()
if __name__ == "__main__":
main()