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util.py
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util.py
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#!/usr/bin/env python3
# -*- coding: utf-8 -*-
"""
Created on Fri May 8 21:56:19 2020
@author: akshitac8
"""
import torch
import torch.nn.functional as F
from sklearn import preprocessing
from sklearn.preprocessing import normalize
from sklearn.neighbors import NearestNeighbors
import os
import pickle
import h5py
import time
import numpy as np
import random
random.seed(3483)
np.random.seed(3483)
def load_dict_from_hdf5(filename):
"""
....
"""
with h5py.File(filename, 'r') as h5file:
return recursively_load_dict_contents_from_group(h5file, '/')
def recursively_load_dict_contents_from_group(h5file, path):
"""
....
"""
ans = {}
for key, item in h5file[path].items():
if isinstance(item, h5py._hl.dataset.Dataset):
ans[key] = item.value
elif isinstance(item, h5py._hl.group.Group):
ans[key] = recursively_load_dict_contents_from_group(
h5file, path + key + '/')
return ans
def mkdir(path):
if not os.path.exists(path):
os.makedirs(path)
def weights_init(m):
classname = m.__class__.__name__
if classname.find('Linear') != -1:
m.weight.data.normal_(0.0, 0.02)
if m.bias is not None:
m.bias.data.fill_(0)
elif classname.find('BatchNorm') != -1:
m.weight.data.normal_(1.0, 0.02)
m.bias.data.fill_(0)
# SYNTHESIS LABELS FROM TRAIN DATA
def generate_fake_test_from_train_labels(train_seen_label, attribute, seenclasses, unseenclasses, num, per_seen=0.10, \
per_unseen=0.40, per_seen_unseen= 0.50):
"""
Input:
train_seen_label-> images with labels containing objects less than opt.N
attribute-> array containing word embeddings
seenclasses-> array containing seen class indices
unseenclasses-> array containing unseen class indices
num-> number of generated synthetic labels
Output:
gzsl -> tensor containing synthetic labels of only unseen, seen and seen-unseen classes.
"""
if train_seen_label.min() == 0:
print("Training data already trimmed and converted")
else:
print("original training data received (-1,1)'s ")
train_seen_label = torch.clamp(train_seen_label,0,1)
#remove all zero labeled images while training
train_seen_label = train_seen_label[(train_seen_label.sum(1) != 0).nonzero().flatten()]
seen_attributes = attribute[seenclasses]
unseen_attributes = attribute[unseenclasses]
seen_percent, unseen_percent, seen_unseen_percent = per_seen , per_unseen, per_seen_unseen
print("seen={}, unseen={}, seen-unseen={}".format(seen_percent, unseen_percent, seen_unseen_percent))
print("syn num={}".format(num))
gzsl = []
for i in range(0, num):
new_gzsl_syn_list = []
seen_unseen_label_pairs = {}
nbrs = NearestNeighbors(n_neighbors=1, algorithm='auto').fit(unseen_attributes)
for seen_idx, seen_att in zip(seenclasses,seen_attributes):
_, indices = nbrs.kneighbors(seen_att[None,:])
seen_unseen_label_pairs[seen_idx.tolist()] = unseenclasses[indices[0][0]].tolist()
#ADDING ONLY SEEN LABELS
idx = torch.randperm(len(train_seen_label))[0:int(len(train_seen_label)*seen_percent)]
seen_labels = train_seen_label[idx]
_new_gzsl_syn_list = torch.zeros(seen_labels.shape[0], attribute.shape[0])
_new_gzsl_syn_list[:,:len(seenclasses)] = seen_labels
new_gzsl_syn_list.append(_new_gzsl_syn_list)
#ADDING ONLY UNSEEN LABELS
idx = torch.randperm(len(train_seen_label))[0:int(len(train_seen_label)*unseen_percent)]
temp_label = train_seen_label[idx]
_new_gzsl_syn_list = torch.zeros(temp_label.shape[0], attribute.shape[0])
for m,lab in enumerate(temp_label):
new_lab = torch.zeros(attribute.shape[0])
unseen_lab = lab.nonzero().flatten()
u=[]
for i in unseen_lab:
u.append(seen_unseen_label_pairs[i.tolist()])
new_lab[u]=1
_new_gzsl_syn_list[m,:] = new_lab
unseen_labels = _new_gzsl_syn_list
new_gzsl_syn_list.append(unseen_labels)
#ADDING BOTH SEEN AND UNSEEN LABELS 50% OF THE SELECTED SEEN LABELS IS MAPPED TO UNSEEN LABELS
idx = torch.randperm(len(train_seen_label))[0:int(len(train_seen_label)*seen_unseen_percent)]
temp_label = train_seen_label[idx]
_new_gzsl_syn_list = torch.zeros(temp_label.shape[0], attribute.shape[0])
for m,lab in enumerate(temp_label):
u = []
new_lab = torch.zeros(attribute.shape[0])
seen_unseen_lab = lab.nonzero().flatten()
temp_seen_label = np.random.choice(seen_unseen_lab,int(len(seen_unseen_lab)*0.50))
u.extend(temp_seen_label)
rem_seen_label = np.setxor1d(temp_seen_label,seen_unseen_lab)
for i in rem_seen_label:
u.append(seen_unseen_label_pairs[i.tolist()])
new_lab[u]=1
_new_gzsl_syn_list[m,:] = new_lab
seen_unseen_labels = _new_gzsl_syn_list
new_gzsl_syn_list.append(seen_unseen_labels)
new_gzsl_syn_list = torch.cat(new_gzsl_syn_list)
gzsl.append(new_gzsl_syn_list)
gzsl = torch.cat(gzsl)
tmp_list = gzsl.sum(0)
## To make sure every unseen label gets covered
empty_lab = torch.arange(tmp_list.numel())[tmp_list==0]
min_uc = int(tmp_list[len(seenclasses):][tmp_list[len(seenclasses):]>0].min().item())
for el in empty_lab:
idx = torch.randperm(gzsl.size(0))[:min_uc]
gzsl[idx,el] = 1
gzsl = gzsl.long()
print("GZSL TEST LABELS:",gzsl.shape)
return gzsl
def get_seen_unseen_classes(file_tag1k, file_tag81):
"""
Input:
file_tag1k -> NUS-WIDE provided Taglist of 1000 categories.
file_tag81 -> NUS-WIDE provided Taglist of 81 categories.
Output:
seen_cls_idx -> selected seen class indices
unseen_cls_idx -> selected unseen class indices
"""
with open(file_tag1k, "r") as file:
tag1k = np.array(file.read().splitlines())
with open(file_tag81, "r") as file:
tag81 = np.array(file.read().splitlines())
seen_cls_idx = np.array(
[i for i in range(len(tag1k)) if tag1k[i] not in tag81])
unseen_cls_idx = np.array(
[i for i in range(len(tag1k)) if tag1k[i] in tag81])
return seen_cls_idx, unseen_cls_idx
class DATA_LOADER(object):
def __init__(self, opt):
self.read_matdataset(opt)
self.index_in_epoch = 0
self.epochs_completed = 0
def read_matdataset(self, opt):
tic = time.time()
src = "datasets/NUS-WIDE" #folder for path containing features
att_path = os.path.join(src,'word_embedding','NUS_WIDE_pretrained_w2v_glove-wiki-gigaword-300')
file_tag1k = os.path.join(src,'NUS_WID_Tags','TagList1k.txt')
file_tag81 = os.path.join(src,'ConceptsList','Concepts81.txt')
self.seen_cls_idx, _ = get_seen_unseen_classes(file_tag1k, file_tag81)
src_att = pickle.load(open(att_path, 'rb'))
print("attributes are combined in this order-> seen+unseen")
self.attribute = torch.from_numpy(normalize(np.concatenate((src_att[0][self.seen_cls_idx],src_att[1]),axis=0)))
#VGG features path
import pdb;pdb.set_trace()
train_loc = load_dict_from_hdf5(os.path.join(src, 'nus_wide_vgg_features','nus_seen_train_vgg19.h5'))
test_unseen_loc = load_dict_from_hdf5(os.path.join(src, 'nus_wide_vgg_features', 'nus_zsl_test_vgg19.h5'))
test_seen_unseen_loc = load_dict_from_hdf5(os.path.join(src, 'nus_wide_vgg_features', 'nus_gzsl_test_vgg19.h5'))
feature_train_loc = train_loc['features']
label_train_loc = train_loc['labels']
feature_test_unseen_loc = test_unseen_loc['features']
label_test_unseen_loc = test_unseen_loc['labels']
feature_test_seen_unseen_loc = test_seen_unseen_loc['features']
label_test_seen_unseen_loc = test_seen_unseen_loc['labels']
print("Data loading finished, Time taken: {}".format(time.time()-tic))
tic = time.time()
if not opt.validation:
if opt.preprocessing:
if opt.standardization:
print('standardization...')
scaler = preprocessing.StandardScaler()
else:
scaler = preprocessing.MinMaxScaler()
_train_feature = scaler.fit_transform(feature_train_loc)
_test_unseen_feature = scaler.transform(feature_test_unseen_loc)
_test_seen_unseen_feature = scaler.transform(feature_test_seen_unseen_loc)
self.train_feature = torch.from_numpy(_train_feature).float()
mx = self.train_feature.max()
self.train_feature.mul_(1/mx)
self.train_label = torch.from_numpy(label_train_loc).long()
self.test_unseen_feature = torch.from_numpy(_test_unseen_feature).float()
self.test_unseen_feature.mul_(1/mx)
self.test_unseen_label = torch.from_numpy(label_test_unseen_loc).long()
self.test_seen_unseen_feature = torch.from_numpy(_test_seen_unseen_feature).float()
self.test_seen_unseen_feature.mul_(1/mx)
self.test_seen_unseen_label = torch.from_numpy(label_test_seen_unseen_loc).long()
else:
self.train_feature = torch.from_numpy(feature_train_loc).float()
self.train_label = torch.from_numpy(label_train_loc).long()
self.test_unseen_feature = torch.from_numpy(feature_test_unseen_loc).float()
self.test_unseen_label = torch.from_numpy(label_test_unseen_loc).long()
print("REMOVING ZEROS LABELS")
temp_label = torch.clamp(self.train_label,0,1)
temp_seen_labels = temp_label.sum(1)
temp_label = temp_label[temp_seen_labels>0]
self.train_label = temp_label
self.train_feature = self.train_feature[temp_seen_labels>0]
self.train_trimmed_label = self.train_label[temp_label.sum(1)<=opt.N]
self.train_trimmed_feature = self.train_feature[temp_label.sum(1)<=opt.N]
print("Data with N={} labels={}".format(opt.N,self.train_trimmed_label.shape))
print("Full Data labels={} with min label/feature = {} and max label/feature = {}".format(self.train_label.shape, temp_label.sum(1).min(), temp_label.sum(1).max()))
self.seenclasses = torch.from_numpy(np.arange(0, self.seen_cls_idx.shape[-1])) # [0-925]
self.unseenclasses = torch.from_numpy(np.arange(0+self.seen_cls_idx.shape[-1], len(self.attribute))) # [925-1006]
self.N = opt.N
self.syn_num = opt.syn_num
self.per_seen = opt.per_seen
self.per_unseen = opt.per_unseen
self.per_seen_unseen = opt.per_seen_unseen
print("USING TRAIN FEATURES WITH <=N")
self.ntrain = self.train_trimmed_feature.size()[0]
train_labels = self.train_trimmed_label
self.ntest_unseen = self.test_unseen_feature.size()[0]
self.ntrain_class = self.seenclasses.size(0)
self.ntest_class = self.unseenclasses.size(0)
self.train_class = self.seenclasses.clone()
self.allclasses = torch.arange(0, self.ntrain_class + self.ntest_class).long()
self.GZSL_fake_test_labels = generate_fake_test_from_train_labels(train_labels, self.attribute, self.seenclasses, \
self.unseenclasses, self.syn_num, self.per_seen, self.per_unseen, self.per_seen_unseen)
print("Data preprocssing finished, Time taken: {}".format(time.time()-tic))
def _average(self, lab, attribute):
return torch.mean(attribute[lab], 0)
def ALF_preprocess_att(self, labels, attribute):
new_seen_attribute = torch.zeros(labels.shape[0], attribute.shape[-1])
for i in range(len(labels)):
lab = labels[i].nonzero().flatten()
if len(lab) == 0: continue
new_seen_attribute[i, :] = self._average(lab, attribute)
return new_seen_attribute
def FLF_preprocess_att(self, labels, attribute):
new_attributes = torch.zeros(labels.shape[0], self.N, attribute.shape[-1]) #new attributes [BS X 10 X 925]
for i in range(len(labels)):
lab = labels[i].nonzero().flatten()
if len(lab) == self.N: new_attributes[i,:,:] = attribute[lab]
elif len(lab) < self.N: new_attributes[i,:,:] = torch.cat((attribute[lab],torch.zeros((self.N - len(lab)), attribute.shape[-1])))
return new_attributes
## Training Dataloader
def next_train_batch(self, batch_size):
idx = torch.randperm(self.ntrain)[0:batch_size]
feature = self.train_trimmed_feature
labels = self.train_trimmed_label
batch_feature = feature[idx]
batch_labels = labels[idx]
early_fusion_train_batch_att = self.ALF_preprocess_att(batch_labels, self.attribute)
late_fusion_train_batch_att = self.FLF_preprocess_att(batch_labels, self.attribute)
return batch_labels, batch_feature, late_fusion_train_batch_att, early_fusion_train_batch_att
## Testing Dataloader
def next_test_batch(self, batch_size):
idx = torch.randperm(len(self.GZSL_fake_test_labels))[0:batch_size]
batch_labels = self.GZSL_fake_test_labels[idx]
early_fusion_test_batch_att = self.ALF_preprocess_att(batch_labels, self.attribute)
late_fusion_test_batch_att = self.FLF_preprocess_att(batch_labels, self.attribute)
return batch_labels, late_fusion_test_batch_att, early_fusion_test_batch_att