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lane_to_mask.py
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lane_to_mask.py
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# coding: utf8
# Copyright (c) 2023 PaddlePaddle Authors. All Rights Reserve.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
"""Convert poly2d to mask/bitmask."""
import os
from functools import partial
from multiprocessing import Pool
from typing import Callable, Dict, List
import matplotlib # type: ignore
import matplotlib.pyplot as plt # type: ignore
import numpy as np
from PIL import Image
from scalabel.common.parallel import NPROC
from scalabel.common.typing import NDArrayU8
from scalabel.label.io import group_and_sort, load
from scalabel.label.transforms import poly_to_patch
from scalabel.label.typing import Config, Frame, ImageSize, Label, Poly2D
from scalabel.label.utils import (
check_crowd,
check_ignored,
get_leaf_categories, )
from tqdm import tqdm
from bdd100k.common.logger import logger
from bdd100k.common.typing import BDD100KConfig
from bdd100k.common.utils import get_bdd100k_instance_id, load_bdd100k_config
from bdd100k.label.label import drivables, labels, lane_categories
from bdd100k.label.to_coco import parse_args
from bdd100k.label.to_scalabel import bdd100k_to_scalabel
IGNORE_LABEL = 255
STUFF_NUM = 30
LANE_DIRECTION_MAP = {"parallel": 0, "vertical": 1}
LANE_STYLE_MAP = {"solid": 0, "dashed": 1}
def frame_to_mask(
out_path: str,
shape: ImageSize,
colors: List[NDArrayU8],
poly2ds: List[List[Poly2D]],
with_instances: bool=True,
back_color: int=0,
closed: bool=True, ) -> None:
"""Converting a frame of poly2ds to mask/bitmask."""
assert len(colors) == len(poly2ds)
height, width = shape.height, shape.width
assert back_color >= 0
if with_instances:
img: NDArrayU8 = (
np.ones(
[height, width, 4], dtype=np.uint8) * back_color # type: ignore
)
else:
img = (
np.ones(
[height, width, 1], dtype=np.uint8) * back_color # type: ignore
)
if len(colors) == 0:
pil_img = Image.fromarray(img.squeeze())
pil_img.save(out_path)
matplotlib.use("Agg")
fig = plt.figure(facecolor="0")
fig.set_size_inches((width / fig.get_dpi()), height / fig.get_dpi())
ax = fig.add_axes([0, 0, 1, 1])
ax.axis("off")
ax.set_xlim(0, width)
ax.set_ylim(0, height)
ax.set_facecolor((0, 0, 0, 0))
ax.invert_yaxis()
for i, poly2d in enumerate(poly2ds):
for poly in poly2d:
ax.add_patch(
poly_to_patch(
poly.vertices,
poly.types,
# (0, 0, 0) for the background
color=(
((i + 1) >> 8) / 255.0,
((i + 1) % 255) / 255.0,
0.0, ),
closed=closed, ))
fig.canvas.draw()
out: NDArrayU8 = np.frombuffer(fig.canvas.tostring_rgb(), np.uint8)
out = out.reshape((height, width, -1)).astype(np.int32)
out = (out[..., 0] << 8) + out[..., 1]
plt.close()
for i, color in enumerate(colors):
# 0 is for the background
img[out == i + 1] = color
img[img == 255] = 0
pil_img = Image.fromarray(img.squeeze())
pil_img.save(out_path)
def set_instance_color(label: Label, category_id: int,
ann_id: int) -> NDArrayU8:
"""Set the color for an instance given its attributes and ID."""
attributes = label.attributes
if attributes is None:
truncated, occluded, crowd, ignored = 0, 0, 0, 0
else:
truncated = int(attributes.get("truncated", False))
occluded = int(attributes.get("occluded", False))
crowd = int(check_crowd(label))
ignored = int(check_ignored(label))
color: NDArrayU8 = np.array(
[
category_id & 255,
(truncated << 3) + (occluded << 2) + (crowd << 1) + ignored,
ann_id >> 8,
ann_id & 255,
],
dtype=np.uint8, )
return color
def set_lane_color(label: Label, category_id: int) -> NDArrayU8:
"""Set the color for the lane given its attributes and category."""
attributes = label.attributes
if attributes is None:
lane_direction, lane_style = 0, 0
else:
lane_direction = LANE_DIRECTION_MAP[str(
attributes.get("laneDirection", "parallel"))]
lane_style = LANE_STYLE_MAP[str(attributes.get("laneStyle", "solid"))]
#value = category_id + (lane_direction << 5) + (lane_style << 4)
value = category_id
if lane_style == 0 and (category_id == 3 or category_id == 2):
value = 1
if lane_style == 0:
value = 2
else:
value = 3
color: NDArrayU8 = np.array([value], dtype=np.uint8)
return color
def frames_to_masks(
nproc: int,
out_paths: List[str],
shapes: List[ImageSize],
colors_list: List[List[NDArrayU8]],
poly2ds_list: List[List[List[Poly2D]]],
with_instances: bool=True,
back_color: int=0,
closed: bool=True, ) -> None:
"""Execute the mask conversion in parallel."""
with Pool(nproc) as pool:
pool.starmap(
partial(
frame_to_mask,
with_instances=with_instances,
back_color=back_color,
closed=closed, ),
tqdm(
zip(out_paths, shapes, colors_list, poly2ds_list),
total=len(out_paths), ), )
def seg_to_masks(
frames: List[Frame],
out_base: str,
config: Config,
nproc: int=NPROC,
mode: str="sem_seg",
back_color: int=IGNORE_LABEL,
closed: bool=True, ) -> None:
"""Converting segmentation poly2d to 1-channel masks."""
os.makedirs(out_base, exist_ok=True)
img_shape = config.imageSize
out_paths: List[str] = []
shapes: List[ImageSize] = []
colors_list: List[List[NDArrayU8]] = []
poly2ds_list: List[List[List[Poly2D]]] = []
categories = dict(
sem_seg=labels, drivable=drivables, lane_mark=lane_categories)[mode]
cat_name2id = {
cat.name: cat.trainId
for cat in categories if cat.trainId != IGNORE_LABEL
}
logger.info("Preparing annotations for Semseg to Bitmasks")
for image_anns in tqdm(frames):
# Mask in .png format
image_name = image_anns.name.replace(".jpg", ".png")
image_name = os.path.split(image_name)[-1]
out_path = os.path.join(out_base, image_name)
out_paths.append(out_path)
if img_shape is None:
if image_anns.size is not None:
img_shape = image_anns.size
else:
raise ValueError("Image shape not defined!")
shapes.append(img_shape)
colors: List[NDArrayU8] = []
poly2ds: List[List[Poly2D]] = []
colors_list.append(colors)
poly2ds_list.append(poly2ds)
if image_anns.labels is None:
continue
for label in image_anns.labels:
if label.category not in cat_name2id:
continue
if label.poly2d is None:
continue
category_id = cat_name2id[label.category]
if mode in ["sem_seg", "drivable"]:
color: NDArrayU8 = np.array([category_id], dtype=np.uint8)
else:
color = set_lane_color(label, category_id)
colors.append(color)
poly2ds.append(label.poly2d)
logger.info("Start Conversion for Seg to Masks")
frames_to_masks(
nproc,
out_paths,
shapes,
colors_list,
poly2ds_list,
with_instances=False,
back_color=back_color,
closed=closed, )
ToMasksFunc = Callable[[List[Frame], str, Config, int], None]
semseg_to_masks: ToMasksFunc = partial(
seg_to_masks, mode="sem_seg", back_color=IGNORE_LABEL, closed=True)
drivable_to_masks: ToMasksFunc = partial(
seg_to_masks,
mode="drivable",
back_color=len(drivables) - 1,
closed=True, )
lanemark_to_masks: ToMasksFunc = partial(
seg_to_masks, mode="lane_mark", back_color=IGNORE_LABEL, closed=False)
def insseg_to_bitmasks(frames: List[Frame],
out_base: str,
config: Config,
nproc: int=NPROC) -> None:
"""Converting instance segmentation poly2d to bitmasks."""
os.makedirs(out_base, exist_ok=True)
img_shape = config.imageSize
out_paths: List[str] = []
shapes: List[ImageSize] = []
colors_list: List[List[NDArrayU8]] = []
poly2ds_list: List[List[List[Poly2D]]] = []
categories = get_leaf_categories(config.categories)
cat_name2id = {cat.name: i + 1 for i, cat in enumerate(categories)}
logger.info("Preparing annotations for InsSeg to Bitmasks")
for image_anns in tqdm(frames):
ann_id = 0
# Bitmask in .png format
image_name = image_anns.name.replace(".jpg", ".png")
image_name = os.path.split(image_name)[-1]
out_path = os.path.join(out_base, image_name)
out_paths.append(out_path)
if img_shape is None:
if image_anns.size is not None:
img_shape = image_anns.size
else:
raise ValueError("Image shape not defined!")
shapes.append(img_shape)
colors: List[NDArrayU8] = []
poly2ds: List[List[Poly2D]] = []
colors_list.append(colors)
poly2ds_list.append(poly2ds)
labels_ = image_anns.labels
if labels_ is None or len(labels_) == 0:
continue
# Scores higher, rendering later
if labels_[0].score is not None:
labels_ = sorted(labels_, key=lambda label: float(label.score))
for label in labels_:
if label.poly2d is None:
continue
if label.category not in cat_name2id:
continue
ann_id += 1
category_id = cat_name2id[label.category]
color = set_instance_color(label, category_id, ann_id)
colors.append(color)
poly2ds.append(label.poly2d)
logger.info("Start conversion for InsSeg to Bitmasks")
frames_to_masks(nproc, out_paths, shapes, colors_list, poly2ds_list)
def panseg_to_bitmasks(frames: List[Frame],
out_base: str,
config: Config,
nproc: int=NPROC) -> None:
"""Converting panoptic segmentation poly2d to bitmasks."""
os.makedirs(out_base, exist_ok=True)
img_shape = config.imageSize
out_paths: List[str] = []
shapes: List[ImageSize] = []
colors_list: List[List[NDArrayU8]] = []
poly2ds_list: List[List[List[Poly2D]]] = []
cat_name2id = {cat.name: cat.id for cat in labels}
logger.info("Preparing annotations for InsSeg to Bitmasks")
for image_anns in tqdm(frames):
cur_ann_id = STUFF_NUM
# Bitmask in .png format
image_name = image_anns.name.replace(".jpg", ".png")
image_name = os.path.split(image_name)[-1]
out_path = os.path.join(out_base, image_name)
out_paths.append(out_path)
if img_shape is None:
if image_anns.size is not None:
img_shape = image_anns.size
else:
raise ValueError("Image shape not defined!")
shapes.append(img_shape)
colors: List[NDArrayU8] = []
poly2ds: List[List[Poly2D]] = []
colors_list.append(colors)
poly2ds_list.append(poly2ds)
labels_ = image_anns.labels
if labels_ is None or len(labels_) == 0:
continue
# Scores higher, rendering later
if labels_[0].score is not None:
labels_ = sorted(labels_, key=lambda label: float(label.score))
for label in labels_:
if label.poly2d is None:
continue
if label.category not in cat_name2id:
continue
category_id = cat_name2id[label.category]
if category_id == 0:
continue
if category_id <= STUFF_NUM:
ann_id = category_id
else:
cur_ann_id += 1
ann_id = cur_ann_id
color = set_instance_color(label, category_id, ann_id)
colors.append(color)
poly2ds.append(label.poly2d)
logger.info("Start conversion for PanSeg to Bitmasks")
frames_to_masks(nproc, out_paths, shapes, colors_list, poly2ds_list)
def segtrack_to_bitmasks(frames: List[Frame],
out_base: str,
config: Config,
nproc: int=NPROC) -> None:
"""Converting segmentation tracking poly2d to bitmasks."""
frames_list = group_and_sort(frames)
img_shape = config.imageSize
out_paths: List[str] = []
shapes: List[ImageSize] = []
colors_list: List[List[NDArrayU8]] = []
poly2ds_list: List[List[List[Poly2D]]] = []
categories = get_leaf_categories(config.categories)
cat_name2id = {cat.name: i + 1 for i, cat in enumerate(categories)}
logger.info("Preparing annotations for SegTrack to Bitmasks")
for video_anns in tqdm(frames_list):
global_instance_id: int = 1
instance_id_maps: Dict[str, int] = {}
video_name = video_anns[0].videoName
out_dir = os.path.join(out_base, video_name)
if not os.path.isdir(out_dir):
os.makedirs(out_dir)
for image_anns in video_anns:
# Bitmask in .png format
image_name = image_anns.name.replace(".jpg", ".png")
image_name = os.path.split(image_name)[-1]
out_path = os.path.join(out_dir, image_name)
out_paths.append(out_path)
if img_shape is None:
if image_anns.size is not None:
img_shape = image_anns.size
else:
raise ValueError("Image shape not defined!")
shapes.append(img_shape)
colors: List[NDArrayU8] = []
poly2ds: List[List[Poly2D]] = []
colors_list.append(colors)
poly2ds_list.append(poly2ds)
labels_ = image_anns.labels
if labels_ is None or len(labels_) == 0:
continue
# Scores higher, rendering later
if labels_[0].score is not None:
labels_ = sorted(labels_, key=lambda label: float(label.score))
for label in labels_:
if label.poly2d is None:
continue
if label.category not in cat_name2id:
continue
instance_id, global_instance_id = get_bdd100k_instance_id(
instance_id_maps, global_instance_id, label.id)
category_id = cat_name2id[label.category]
color = set_instance_color(label, category_id, instance_id)
colors.append(color)
poly2ds.append(label.poly2d)
logger.info("Start Conversion for SegTrack to Bitmasks")
frames_to_masks(nproc, out_paths, shapes, colors_list, poly2ds_list)
def main() -> None:
"""Main function."""
args = parse_args()
args.mode = "lane_mark"
os.environ["QT_QPA_PLATFORM"] = "offscreen" # matplotlib offscreen render
convert_funcs: Dict[str, ToMasksFunc] = dict(
sem_seg=semseg_to_masks,
drivable=drivable_to_masks,
lane_mark=lanemark_to_masks,
pan_seg=panseg_to_bitmasks,
ins_seg=insseg_to_bitmasks,
seg_track=segtrack_to_bitmasks, )
dataset = load(args.input, args.nproc)
if args.config is not None:
bdd100k_config = load_bdd100k_config(args.config)
elif dataset.config is not None:
bdd100k_config = BDD100KConfig(config=dataset.config)
else:
bdd100k_config = load_bdd100k_config(args.mode)
if args.mode in ["ins_seg", "seg_track"]:
frames = bdd100k_to_scalabel(dataset.frames, bdd100k_config)
else:
frames = dataset.frames
convert_funcs[args.mode](frames, args.output, bdd100k_config.scalabel,
args.nproc)
logger.info("Finished!")
if __name__ == "__main__":
main()