Nadine Rueegg
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# 24 joints instead of 20!!
import gzip
import json
import os
import random
import math
import numpy as np
import torch
import torch.utils.data as data
from importlib_resources import open_binary
from scipy.io import loadmat
from tabulate import tabulate
import itertools
import json
from scipy import ndimage
from csv import DictReader
from pycocotools.mask import decode as decode_RLE
import sys
sys.path.insert(0, os.path.join(os.path.dirname(__file__), '..', '..'))
from configs.data_info import COMPLETE_DATA_INFO_24
from stacked_hourglass.utils.imutils import load_image, draw_labelmap, draw_multiple_labelmaps
from stacked_hourglass.utils.misc import to_torch
from stacked_hourglass.utils.transforms import shufflelr, crop, color_normalize, fliplr, transform
import stacked_hourglass.datasets.utils_stanext as utils_stanext
from stacked_hourglass.utils.visualization import save_input_image_with_keypoints
from configs.dog_breeds.dog_breed_class import COMPLETE_ABBREV_DICT, COMPLETE_SUMMARY_BREEDS, SIM_MATRIX_RAW, SIM_ABBREV_INDICES
from configs.dataset_path_configs import STANEXT_RELATED_DATA_ROOT_DIR
class StanExt(data.Dataset):
DATA_INFO = COMPLETE_DATA_INFO_24
# Suggested joints to use for keypoint reprojection error calculations
ACC_JOINTS = [0, 1, 2, 3, 4, 5, 6, 7, 8, 9, 10, 11, 12, 16]
def __init__(self, image_path=None, is_train=True, inp_res=256, out_res=64, sigma=1,
scale_factor=0.25, rot_factor=30, label_type='Gaussian',
do_augment='default', shorten_dataset_to=None, dataset_mode='keyp_only', V12=None, val_opt='test'):
self.V12 = V12
self.is_train = is_train # training set or test set
if do_augment == 'yes':
self.do_augment = True
elif do_augment == 'no':
self.do_augment = False
elif do_augment=='default':
if self.is_train:
self.do_augment = True
else:
self.do_augment = False
else:
raise ValueError
self.inp_res = inp_res
self.out_res = out_res
self.sigma = sigma
self.scale_factor = scale_factor
self.rot_factor = rot_factor
self.label_type = label_type
self.dataset_mode = dataset_mode
if self.dataset_mode=='complete' or self.dataset_mode=='keyp_and_seg' or self.dataset_mode=='keyp_and_seg_and_partseg':
self.calc_seg = True
else:
self.calc_seg = False
self.val_opt = val_opt
# create train/val split
self.img_folder = utils_stanext.get_img_dir(V12=self.V12)
self.train_dict, init_test_dict, init_val_dict = utils_stanext.load_stanext_json_as_dict(split_train_test=True, V12=self.V12)
self.train_name_list = list(self.train_dict.keys()) # 7004
if self.val_opt == 'test':
self.test_dict = init_test_dict
self.test_name_list = list(self.test_dict.keys())
elif self.val_opt == 'val':
self.test_dict = init_val_dict
self.test_name_list = list(self.test_dict.keys())
else:
raise NotImplementedError
# stanext breed dict (contains for each name a stanext specific index)
breed_json_path = os.path.join(STANEXT_RELATED_DATA_ROOT_DIR, 'StanExt_breed_dict_v2.json')
self.breed_dict = self.get_breed_dict(breed_json_path, create_new_breed_json=False)
self.train_name_list = sorted(self.train_name_list)
self.test_name_list = sorted(self.test_name_list)
random.seed(4)
random.shuffle(self.train_name_list)
random.shuffle(self.test_name_list)
if shorten_dataset_to is not None:
# sometimes it is useful to have a smaller set (validation speed, debugging)
self.train_name_list = self.train_name_list[0 : min(len(self.train_name_list), shorten_dataset_to)]
self.test_name_list = self.test_name_list[0 : min(len(self.test_name_list), shorten_dataset_to)]
# special case for debugging: 12 similar images
if shorten_dataset_to == 12:
my_sample = self.test_name_list[2]
for ind in range(0, 12):
self.test_name_list[ind] = my_sample
print('len(dataset): ' + str(self.__len__()))
# add results for eyes, whithers and throat as obtained through anipose -> they are used
# as pseudo ground truth at training time.
self.path_anipose_out_root = os.path.join(STANEXT_RELATED_DATA_ROOT_DIR, 'animalpose_hg8_v0_results_on_StanExt')
def get_data_sampler_info(self):
# for custom data sampler
if self.is_train:
name_list = self.train_name_list
else:
name_list = self.test_name_list
info_dict = {'name_list': name_list,
'stanext_breed_dict': self.breed_dict,
'breeds_abbrev_dict': COMPLETE_ABBREV_DICT,
'breeds_summary': COMPLETE_SUMMARY_BREEDS,
'breeds_sim_martix_raw': SIM_MATRIX_RAW,
'breeds_sim_abbrev_inds': SIM_ABBREV_INDICES
}
return info_dict
def get_breed_dict(self, breed_json_path, create_new_breed_json=False):
if create_new_breed_json:
breed_dict = {}
breed_index = 0
for img_name in self.train_name_list:
folder_name = img_name.split('/')[0]
breed_name = folder_name.split(folder_name.split('-')[0] + '-')[1]
if not (folder_name in breed_dict):
breed_dict[folder_name] = {
'breed_name': breed_name,
'index': breed_index}
breed_index += 1
with open(breed_json_path, 'w', encoding='utf-8') as f: json.dump(breed_dict, f, ensure_ascii=False, indent=4)
else:
with open(breed_json_path) as json_file: breed_dict = json.load(json_file)
return breed_dict
def __getitem__(self, index):
if self.is_train:
name = self.train_name_list[index]
data = self.train_dict[name]
else:
name = self.test_name_list[index]
data = self.test_dict[name]
sf = self.scale_factor
rf = self.rot_factor
img_path = os.path.join(self.img_folder, data['img_path'])
try:
anipose_res_path = os.path.join(self.path_anipose_out_root, data['img_path'].replace('.jpg', '.json'))
with open(anipose_res_path) as f: anipose_data = json.load(f)
anipose_thr = 0.2
anipose_joints_0to24 = np.asarray(anipose_data['anipose_joints_0to24']).reshape((-1, 3))
anipose_joints_0to24_scores = anipose_joints_0to24[:, 2]
# anipose_joints_0to24_scores[anipose_joints_0to24_scores>anipose_thr] = 1.0
anipose_joints_0to24_scores[anipose_joints_0to24_scores<anipose_thr] = 0.0
anipose_joints_0to24[:, 2] = anipose_joints_0to24_scores
except:
# REMARK: This happens sometimes!!! maybe once every 10th image..?
# print('no anipose eye keypoints!')
anipose_joints_0to24 = np.zeros((24, 3))
joints = np.concatenate((np.asarray(data['joints'])[:20, :], anipose_joints_0to24[20:24, :]), axis=0)
joints[joints[:, 2]==0, :2] = 0 # avoid nan values
pts = torch.Tensor(joints)
# inp = crop(img, c, s, [self.inp_res, self.inp_res], rot=r)
# sf = scale * 200.0 / res[0] # res[0]=256
# center = center * 1.0 / sf
# scale = scale / sf = 256 / 200
# h = 200 * scale
bbox_xywh = data['img_bbox']
bbox_c = [bbox_xywh[0]+0.5*bbox_xywh[2], bbox_xywh[1]+0.5*bbox_xywh[3]]
bbox_max = max(bbox_xywh[2], bbox_xywh[3])
bbox_diag = math.sqrt(bbox_xywh[2]**2 + bbox_xywh[3]**2)
# bbox_s = bbox_max / 200. # the dog will fill the image -> bbox_max = 256
# bbox_s = bbox_diag / 200. # diagonal of the boundingbox will be 200
bbox_s = bbox_max / 200. * 256. / 200. # maximum side of the bbox will be 200
c = torch.Tensor(bbox_c)
s = bbox_s
# For single-person pose estimation with a centered/scaled figure
nparts = pts.size(0)
img = load_image(img_path) # CxHxW
# segmentation map (we reshape it to 3xHxW, such that we can do the
# same transformations as with the image)
if self.calc_seg:
seg = torch.Tensor(utils_stanext.get_seg_from_entry(data)[None, :, :])
seg = torch.cat(3*[seg])
r = 0
do_flip = False
if self.do_augment:
s = s*torch.randn(1).mul_(sf).add_(1).clamp(1-sf, 1+sf)[0]
r = torch.randn(1).mul_(rf).clamp(-2*rf, 2*rf)[0] if random.random() <= 0.6 else 0
# Flip
if random.random() <= 0.5:
do_flip = True
img = fliplr(img)
if self.calc_seg:
seg = fliplr(seg)
pts = shufflelr(pts, img.size(2), self.DATA_INFO.hflip_indices)
c[0] = img.size(2) - c[0]
# Color
img[0, :, :].mul_(random.uniform(0.8, 1.2)).clamp_(0, 1)
img[1, :, :].mul_(random.uniform(0.8, 1.2)).clamp_(0, 1)
img[2, :, :].mul_(random.uniform(0.8, 1.2)).clamp_(0, 1)
# Prepare image and groundtruth map
inp = crop(img, c, s, [self.inp_res, self.inp_res], rot=r)
img_border_mask = torch.all(inp > 1.0/256, dim = 0).unsqueeze(0).float() # 1 is foreground
inp = color_normalize(inp, self.DATA_INFO.rgb_mean, self.DATA_INFO.rgb_stddev)
if self.calc_seg:
seg = crop(seg, c, s, [self.inp_res, self.inp_res], rot=r)
# Generate ground truth
tpts = pts.clone()
target_weight = tpts[:, 2].clone().view(nparts, 1)
target = torch.zeros(nparts, self.out_res, self.out_res)
for i in range(nparts):
# if tpts[i, 2] > 0: # This is evil!!
if tpts[i, 1] > 0:
tpts[i, 0:2] = to_torch(transform(tpts[i, 0:2]+1, c, s, [self.out_res, self.out_res], rot=r, as_int=False))
target[i], vis = draw_labelmap(target[i], tpts[i]-1, self.sigma, type=self.label_type)
target_weight[i, 0] *= vis
# NEW:
'''target_new, vis_new = draw_multiple_labelmaps((self.out_res, self.out_res), tpts[:, :2]-1, self.sigma, type=self.label_type)
target_weight_new = tpts[:, 2].clone().view(nparts, 1) * vis_new
target_new[(target_weight_new==0).reshape((-1)), :, :] = 0'''
# --- Meta info
this_breed = self.breed_dict[name.split('/')[0]] # 120
# add information about location within breed similarity matrix
folder_name = name.split('/')[0]
breed_name = folder_name.split(folder_name.split('-')[0] + '-')[1]
abbrev = COMPLETE_ABBREV_DICT[breed_name]
try:
sim_breed_index = COMPLETE_SUMMARY_BREEDS[abbrev]._ind_in_xlsx_matrix
except: # some breeds are not in the xlsx file
sim_breed_index = -1
meta = {'index' : index, 'center' : c, 'scale' : s,
'pts' : pts, 'tpts' : tpts, 'target_weight': target_weight,
'breed_index': this_breed['index'], 'sim_breed_index': sim_breed_index,
'ind_dataset': 0} # ind_dataset=0 for stanext or stanexteasy or stanext 2
meta2 = {'index' : index, 'center' : c, 'scale' : s,
'pts' : pts, 'tpts' : tpts, 'target_weight': target_weight,
'ind_dataset': 3}
# return different things depending on dataset_mode
if self.dataset_mode=='keyp_only':
# save_input_image_with_keypoints(inp, meta['tpts'], out_path='./test_input_stanext.png', ratio_in_out=self.inp_res/self.out_res)
return inp, target, meta
elif self.dataset_mode=='keyp_and_seg':
meta['silh'] = seg[0, :, :]
meta['name'] = name
return inp, target, meta
elif self.dataset_mode=='keyp_and_seg_and_partseg':
# partseg is fake! this does only exist such that this dataset can be combined with an other datset that has part segmentations
meta2['silh'] = seg[0, :, :]
meta2['name'] = name
fake_body_part_matrix = torch.ones((3, 256, 256)).long() * (-1)
meta2['body_part_matrix'] = fake_body_part_matrix
return inp, target, meta2
elif self.dataset_mode=='complete':
target_dict = meta
target_dict['silh'] = seg[0, :, :]
# NEW for silhouette loss
target_dict['img_border_mask'] = img_border_mask
target_dict['has_seg'] = True
if target_dict['silh'].sum() < 1:
if ((not self.is_train) and self.val_opt == 'test'):
raise ValueError
elif self.is_train:
print('had to replace training image')
replacement_index = max(0, index - 1)
inp, target_dict = self.__getitem__(replacement_index)
else:
# There seem to be a few validation images without segmentation
# which would lead to nan in iou calculation
replacement_index = max(0, index - 1)
inp, target_dict = self.__getitem__(replacement_index)
return inp, target_dict
else:
print('sampling error')
import pdb; pdb.set_trace()
raise ValueError
def __len__(self):
if self.is_train:
return len(self.train_name_list)
else:
return len(self.test_name_list)