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import json
import os
import sys
from glob import glob
from pathlib import Path
import cv2
import numpy as np
from PIL import Image
from shapely.geometry import Polygon
sys.path.append(str(Path(__file__).resolve().parent.parent))
from common_utils import resort_corners
def draw_polygon_on_image(image, polygons, class_to_color):
"""
Draws polygons on the image based on the COLOR_TO_CLASS mapping.
Args:
image (numpy.ndarray): The image on which to draw.
polygons (list of list of tuple): List of polygons, where each polygon is a list of (x, y) points.
Returns:
numpy.ndarray: The image with polygons drawn.
"""
# Draw each polygon on the image
for polygon, polygon_class in polygons:
# Convert polygon points to numpy array
pts = np.array(polygon, dtype=np.int32).reshape(-1, 2)
color = class_to_color[polygon_class]
bgr = (color[2], color[1], color[0]) # Convert RGB to BGR for OpenCV
# Draw filled polygon
cv2.fillPoly(image, [pts], bgr)
return image
def fill_mask(segmentation_mask):
filled_mask = np.zeros_like(segmentation_mask, dtype=np.uint8)
# Iterate over each class index in the segmentation mask
for class_index in np.unique(segmentation_mask):
if class_index == 0: # Skip the background
continue
# Create a binary mask for the current class
binary_mask = (segmentation_mask == class_index).astype(np.uint8)
# Find contours for the current class
contours, _ = cv2.findContours(binary_mask, cv2.RETR_EXTERNAL, cv2.CHAIN_APPROX_SIMPLE)
# Fill each contour with white color in the single-channel mask
cv2.drawContours(filled_mask, contours, -1, 255, thickness=cv2.FILLED)
return filled_mask
def to_bw_image(input_image):
# Convert the input image to grayscale
gray_image = cv2.cvtColor(input_image, cv2.COLOR_BGR2GRAY)
# Apply a binary threshold to convert the grayscale image to black and white
_, bw_image = cv2.threshold(gray_image, 127, 255, cv2.THRESH_BINARY)
return bw_image
def create_coco_bounding_box(bb_x, bb_y, image_width, image_height, bound_pad=2):
bb_x = np.unique(bb_x)
bb_y = np.unique(bb_y)
bb_x_min = np.maximum(np.min(bb_x) - bound_pad, 0)
bb_y_min = np.maximum(np.min(bb_y) - bound_pad, 0)
bb_x_max = np.minimum(np.max(bb_x) + bound_pad, image_width - 1)
bb_y_max = np.minimum(np.max(bb_y) + bound_pad, image_height - 1)
bb_width = bb_x_max - bb_x_min
bb_height = bb_y_max - bb_y_min
coco_bb = [bb_x_min, bb_y_min, bb_width, bb_height]
return coco_bb
def prepare_dict(categories_dict):
save_dict = {"images": [], "annotations": [], "categories": []}
for key, value in categories_dict.items():
type_dict = {"supercategory": "room", "id": value, "name": key}
save_dict["categories"].append(type_dict)
return save_dict
def convert_numpy_to_python(obj):
if isinstance(obj, np.integer):
return int(obj)
elif isinstance(obj, np.floating):
return float(obj)
elif isinstance(obj, np.ndarray):
return obj.tolist()
else:
return obj
def config():
a = argparse.ArgumentParser(description="Generate coco format data for WAFFLE BENCHMARK SET")
a.add_argument("--data_root", default="data/waffle/benchmark/", type=str, help="path to WAFFLE BENCHMARK folder")
a.add_argument("--output", default="data/waffle_benchmark_processed/", type=str, help="path to output folder")
args = a.parse_args()
return args
if __name__ == "__main__":
LABEL_NOTATIONS = {
"Background": (0, 0, 0), # Black
"Interior": (255, 255, 255), # White
"Walls": (255, 0, 0), # Red
"Doors": (0, 0, 255), # Blue
"Windows": (0, 255, 255), # Cyan
}
CLASS2INDEX = {
"Background": 0, # Black
"Interior": 1, # White
# "Walls": 2, # Red
"Doors": 3, # Blue
"Windows": 4, # Cyan
}
# Create a mapping from RGB values to class indices
COLOR_TO_CLASS = {
(0, 0, 0): 0, # Background
(255, 255, 255): 1, # Interior
(255, 0, 0): 2, # Walls
(0, 0, 255): 3, # Doors
(0, 255, 255): 4, # Windows
}
NEW_CLASS_MAPPING = {
1: 0,
3: 1,
4: 2,
}
CLASS_TO_COLOR = {
0: (255, 255, 255), # Interior
1: (0, 0, 255), # Doors
2: (0, 255, 255), # Windows
}
args = config()
root = args.data_root
image_dir = f"{root}/pngs"
label_dir = f"{root}/segmented_descrete_pngs"
input_paths = sorted(glob(f"{label_dir}/*.png"))
output_dir = args.output
output_aux_dir = f"{output_dir}/aux"
output_image_dir = f"{output_dir}/test/"
output_annot_dir = f"{output_dir}/annotations/"
fn_mapping_log = f"{output_annot_dir}/test_image_id_mapping.json"
os.makedirs(output_dir, exist_ok=True)
os.makedirs(output_aux_dir, exist_ok=True)
os.makedirs(output_image_dir, exist_ok=True)
os.makedirs(output_annot_dir, exist_ok=True)
instance_count = 0
save_dict = prepare_dict(CLASS2INDEX)
output_mappings = []
for i, path in enumerate(input_paths):
# if i > 5:
# exit(0)
mask = Image.open(path).convert("RGB")
fn = os.path.basename(path).replace("_seg_colors.png", "")
new_fn = str(i).zfill(5)
mask = np.array(mask)
image = Image.open(os.path.join(image_dir, f"{fn}.png")).convert("RGB")
image_width, image_height = image.size
# Initialize an empty segmentation mask with the same height and width as the input mask
segmentation_mask = np.zeros((mask.shape[0], mask.shape[1]), dtype=np.uint8)
img_id = i
img_dict = {}
img_dict["file_name"] = str(img_id).zfill(5) + ".png"
img_dict["id"] = img_id
img_dict["width"] = image_width
img_dict["height"] = image_height
output_polygons = []
coco_annotation_dict_list = []
# Iterate over each pixel in the mask and assign the corresponding class index
for color, class_index in COLOR_TO_CLASS.items():
# Create a boolean mask for the current color
color_mask = (mask == color).all(axis=-1)
color_mask_uint8 = color_mask.astype(np.uint8)
# Assign the class index to the segmentation mask
segmentation_mask[color_mask] = class_index
if class_index not in NEW_CLASS_MAPPING:
continue
class_index = NEW_CLASS_MAPPING[class_index]
# Find contours for the current color mask
contours, _ = cv2.findContours(color_mask_uint8, cv2.RETR_EXTERNAL, cv2.CHAIN_APPROX_SIMPLE)
new_contours = []
for cnt in contours:
peri = cv2.arcLength(cnt, True)
approx = cv2.approxPolyDP(cnt, 0.001 * peri, True)
new_contours.append(approx)
# Convert contours to polygon coordinates
polygons = [contour.reshape(-1, 2) for contour in new_contours]
for polygon in polygons:
# Convert the polygon to a Shapely Polygon object
if polygon.shape[0] < 3:
continue
shapely_polygon = Polygon(polygon)
area = shapely_polygon.area
rectangle_shapely = shapely_polygon.envelope
bb_x, bb_y = rectangle_shapely.exterior.xy
coco_bb = create_coco_bounding_box(bb_x, bb_y, image_width, image_height, bound_pad=2)
if class_index in [3, 4] and area < 1:
continue
if class_index not in [3, 4] and area < 100:
continue
coco_seg_poly = []
poly_sorted = resort_corners(polygon)
# image = draw_polygon_on_image(image, poly_shapely, "test_poly.jpg")
for p in poly_sorted:
coco_seg_poly += list(p)
# Create a dictionary for the COCO annotation
coco_annotation_dict = {
"segmentation": [coco_seg_poly],
"area": area,
"iscrow": 0,
"image_id": i,
"bbox": coco_bb,
"category_id": class_index,
"id": instance_count,
}
coco_annotation_dict_list.append(coco_annotation_dict)
instance_count += 1
output_polygons.append([coco_seg_poly, class_index])
save_dict["images"].append(img_dict)
save_dict["annotations"] += coco_annotation_dict_list
# Print the unique class indices in the segmentation mask to verify
print(path)
print(np.unique(segmentation_mask))
filled_mask = fill_mask(segmentation_mask)
clean_image = np.array(image)
filled_mask_resized = cv2.resize(
filled_mask, (clean_image.shape[1], clean_image.shape[0]), interpolation=cv2.INTER_NEAREST
)
cv2.imwrite(f"{output_aux_dir}/{fn}_fg_mask.png", filled_mask_resized)
clean_image = clean_image * np.array(filled_mask_resized[:, :, np.newaxis] / 255.0).astype(bool)
clean_image[filled_mask_resized == 0] = 255
clean_image = cv2.cvtColor(clean_image, cv2.COLOR_RGB2BGR)
# clean_image = to_bw_image(clean_image)
cv2.imwrite(f"{output_image_dir}/{new_fn}.png", clean_image)
image_with_polygons = draw_polygon_on_image(np.zeros_like(clean_image), output_polygons, CLASS_TO_COLOR)
cv2.imwrite(f"{output_aux_dir}/{fn}_polylines.png", image_with_polygons)
output_mappings.append(f"{fn} {new_fn}")
with open(fn_mapping_log, "w") as f:
for mapping in output_mappings:
f.write(f"{mapping}\n")
# Serialize save_dict to JSON
json_path = f"{output_annot_dir}/test.json"
with open(json_path, "w") as f:
json.dump(save_dict, f, default=convert_numpy_to_python)
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