QuintW's picture
added controlnet in build in extensions
78db0f1
raw
history blame
8.49 kB
import os.path as osp
import tempfile
import annotator.mmpkg.mmcv as mmcv
import numpy as np
from annotator.mmpkg.mmcv.utils import print_log
from PIL import Image
from .builder import DATASETS
from .custom import CustomDataset
@DATASETS.register_module()
class CityscapesDataset(CustomDataset):
"""Cityscapes dataset.
The ``img_suffix`` is fixed to '_leftImg8bit.png' and ``seg_map_suffix`` is
fixed to '_gtFine_labelTrainIds.png' for Cityscapes dataset.
"""
CLASSES = ('road', 'sidewalk', 'building', 'wall', 'fence', 'pole',
'traffic light', 'traffic sign', 'vegetation', 'terrain', 'sky',
'person', 'rider', 'car', 'truck', 'bus', 'train', 'motorcycle',
'bicycle')
PALETTE = [[128, 64, 128], [244, 35, 232], [70, 70, 70], [102, 102, 156],
[190, 153, 153], [153, 153, 153], [250, 170, 30], [220, 220, 0],
[107, 142, 35], [152, 251, 152], [70, 130, 180], [220, 20, 60],
[255, 0, 0], [0, 0, 142], [0, 0, 70], [0, 60, 100],
[0, 80, 100], [0, 0, 230], [119, 11, 32]]
def __init__(self, **kwargs):
super(CityscapesDataset, self).__init__(
img_suffix='_leftImg8bit.png',
seg_map_suffix='_gtFine_labelTrainIds.png',
**kwargs)
@staticmethod
def _convert_to_label_id(result):
"""Convert trainId to id for cityscapes."""
if isinstance(result, str):
result = np.load(result)
import cityscapesscripts.helpers.labels as CSLabels
result_copy = result.copy()
for trainId, label in CSLabels.trainId2label.items():
result_copy[result == trainId] = label.id
return result_copy
def results2img(self, results, imgfile_prefix, to_label_id):
"""Write the segmentation results to images.
Args:
results (list[list | tuple | ndarray]): Testing results of the
dataset.
imgfile_prefix (str): The filename prefix of the png files.
If the prefix is "somepath/xxx",
the png files will be named "somepath/xxx.png".
to_label_id (bool): whether convert output to label_id for
submission
Returns:
list[str: str]: result txt files which contains corresponding
semantic segmentation images.
"""
mmcv.mkdir_or_exist(imgfile_prefix)
result_files = []
prog_bar = mmcv.ProgressBar(len(self))
for idx in range(len(self)):
result = results[idx]
if to_label_id:
result = self._convert_to_label_id(result)
filename = self.img_infos[idx]['filename']
basename = osp.splitext(osp.basename(filename))[0]
png_filename = osp.join(imgfile_prefix, f'{basename}.png')
output = Image.fromarray(result.astype(np.uint8)).convert('P')
import cityscapesscripts.helpers.labels as CSLabels
palette = np.zeros((len(CSLabels.id2label), 3), dtype=np.uint8)
for label_id, label in CSLabels.id2label.items():
palette[label_id] = label.color
output.putpalette(palette)
output.save(png_filename)
result_files.append(png_filename)
prog_bar.update()
return result_files
def format_results(self, results, imgfile_prefix=None, to_label_id=True):
"""Format the results into dir (standard format for Cityscapes
evaluation).
Args:
results (list): Testing results of the dataset.
imgfile_prefix (str | None): The prefix of images files. It
includes the file path and the prefix of filename, e.g.,
"a/b/prefix". If not specified, a temp file will be created.
Default: None.
to_label_id (bool): whether convert output to label_id for
submission. Default: False
Returns:
tuple: (result_files, tmp_dir), result_files is a list containing
the image paths, tmp_dir is the temporal directory created
for saving json/png files when img_prefix is not specified.
"""
assert isinstance(results, list), 'results must be a list'
assert len(results) == len(self), (
'The length of results is not equal to the dataset len: '
f'{len(results)} != {len(self)}')
if imgfile_prefix is None:
tmp_dir = tempfile.TemporaryDirectory()
imgfile_prefix = tmp_dir.name
else:
tmp_dir = None
result_files = self.results2img(results, imgfile_prefix, to_label_id)
return result_files, tmp_dir
def evaluate(self,
results,
metric='mIoU',
logger=None,
imgfile_prefix=None,
efficient_test=False):
"""Evaluation in Cityscapes/default protocol.
Args:
results (list): Testing results of the dataset.
metric (str | list[str]): Metrics to be evaluated.
logger (logging.Logger | None | str): Logger used for printing
related information during evaluation. Default: None.
imgfile_prefix (str | None): The prefix of output image file,
for cityscapes evaluation only. It includes the file path and
the prefix of filename, e.g., "a/b/prefix".
If results are evaluated with cityscapes protocol, it would be
the prefix of output png files. The output files would be
png images under folder "a/b/prefix/xxx.png", where "xxx" is
the image name of cityscapes. If not specified, a temp file
will be created for evaluation.
Default: None.
Returns:
dict[str, float]: Cityscapes/default metrics.
"""
eval_results = dict()
metrics = metric.copy() if isinstance(metric, list) else [metric]
if 'cityscapes' in metrics:
eval_results.update(
self._evaluate_cityscapes(results, logger, imgfile_prefix))
metrics.remove('cityscapes')
if len(metrics) > 0:
eval_results.update(
super(CityscapesDataset,
self).evaluate(results, metrics, logger, efficient_test))
return eval_results
def _evaluate_cityscapes(self, results, logger, imgfile_prefix):
"""Evaluation in Cityscapes protocol.
Args:
results (list): Testing results of the dataset.
logger (logging.Logger | str | None): Logger used for printing
related information during evaluation. Default: None.
imgfile_prefix (str | None): The prefix of output image file
Returns:
dict[str: float]: Cityscapes evaluation results.
"""
try:
import cityscapesscripts.evaluation.evalPixelLevelSemanticLabeling as CSEval # noqa
except ImportError:
raise ImportError('Please run "pip install cityscapesscripts" to '
'install cityscapesscripts first.')
msg = 'Evaluating in Cityscapes style'
if logger is None:
msg = '\n' + msg
print_log(msg, logger=logger)
result_files, tmp_dir = self.format_results(results, imgfile_prefix)
if tmp_dir is None:
result_dir = imgfile_prefix
else:
result_dir = tmp_dir.name
eval_results = dict()
print_log(f'Evaluating results under {result_dir} ...', logger=logger)
CSEval.args.evalInstLevelScore = True
CSEval.args.predictionPath = osp.abspath(result_dir)
CSEval.args.evalPixelAccuracy = True
CSEval.args.JSONOutput = False
seg_map_list = []
pred_list = []
# when evaluating with official cityscapesscripts,
# **_gtFine_labelIds.png is used
for seg_map in mmcv.scandir(
self.ann_dir, 'gtFine_labelIds.png', recursive=True):
seg_map_list.append(osp.join(self.ann_dir, seg_map))
pred_list.append(CSEval.getPrediction(CSEval.args, seg_map))
eval_results.update(
CSEval.evaluateImgLists(pred_list, seg_map_list, CSEval.args))
if tmp_dir is not None:
tmp_dir.cleanup()
return eval_results