bobinamoe's picture
Upload 1664 files
baac5bb verified
import folder_paths
from PIL import Image
import numpy as np
import cv2
import torch
def add_folder_path_and_extensions(folder_name, full_folder_paths, extensions):
# Iterate over the list of full folder paths
for full_folder_path in full_folder_paths:
# Use the provided function to add each model folder path
folder_paths.add_model_folder_path(folder_name, full_folder_path)
# Now handle the extensions. If the folder name already exists, update the extensions
if folder_name in folder_paths.folder_names_and_paths:
# Unpack the current paths and extensions
current_paths, current_extensions = folder_paths.folder_names_and_paths[folder_name]
# Update the extensions set with the new extensions
updated_extensions = current_extensions | extensions
# Reassign the updated tuple back to the dictionary
folder_paths.folder_names_and_paths[folder_name] = (current_paths, updated_extensions)
else:
# If the folder name was not present, add_model_folder_path would have added it with the last path
# Now we just need to update the set of extensions as it would be an empty set
# Also ensure that all paths are included (since add_model_folder_path adds only one path at a time)
folder_paths.folder_names_and_paths[folder_name] = (full_folder_paths, extensions)
def normalize_region(limit, startp, size):
if startp < 0:
new_endp = min(limit, size)
new_startp = 0
elif startp + size > limit:
new_startp = max(0, limit - size)
new_endp = limit
else:
new_startp = startp
new_endp = min(limit, startp+size)
return int(new_startp), int(new_endp)
def _tensor_check_image(image):
if image.ndim != 4:
raise ValueError(f"Expected NHWC tensor, but found {image.ndim} dimensions")
if image.shape[-1] not in (1, 3, 4):
raise ValueError(f"Expected 1, 3 or 4 channels for image, but found {image.shape[-1]} channels")
return
def tensor2pil(image):
_tensor_check_image(image)
return Image.fromarray(np.clip(255. * image.cpu().numpy().squeeze(0), 0, 255).astype(np.uint8))
def dilate_masks(segmasks, dilation_factor, iter=1):
if dilation_factor == 0:
return segmasks
dilated_masks = []
kernel = np.ones((abs(dilation_factor), abs(dilation_factor)), np.uint8)
for i in range(len(segmasks)):
cv2_mask = segmasks[i][1]
if dilation_factor > 0:
dilated_mask = cv2.dilate(cv2_mask, kernel, iter)
else:
dilated_mask = cv2.erode(cv2_mask, kernel, iter)
item = (segmasks[i][0], dilated_mask, segmasks[i][2])
dilated_masks.append(item)
return dilated_masks
def combine_masks(masks):
if len(masks) == 0:
return None
else:
initial_cv2_mask = np.array(masks[0][1])
combined_cv2_mask = initial_cv2_mask
for i in range(1, len(masks)):
cv2_mask = np.array(masks[i][1])
if combined_cv2_mask.shape == cv2_mask.shape:
combined_cv2_mask = cv2.bitwise_or(combined_cv2_mask, cv2_mask)
else:
# do nothing - incompatible mask
pass
mask = torch.from_numpy(combined_cv2_mask)
return mask
def make_crop_region(w, h, bbox, crop_factor, crop_min_size=None):
x1 = bbox[0]
y1 = bbox[1]
x2 = bbox[2]
y2 = bbox[3]
bbox_w = x2 - x1
bbox_h = y2 - y1
crop_w = bbox_w * crop_factor
crop_h = bbox_h * crop_factor
if crop_min_size is not None:
crop_w = max(crop_min_size, crop_w)
crop_h = max(crop_min_size, crop_h)
kernel_x = x1 + bbox_w / 2
kernel_y = y1 + bbox_h / 2
new_x1 = int(kernel_x - crop_w / 2)
new_y1 = int(kernel_y - crop_h / 2)
# make sure position in (w,h)
new_x1, new_x2 = normalize_region(w, new_x1, crop_w)
new_y1, new_y2 = normalize_region(h, new_y1, crop_h)
return [new_x1, new_y1, new_x2, new_y2]
def crop_ndarray2(npimg, crop_region):
x1 = crop_region[0]
y1 = crop_region[1]
x2 = crop_region[2]
y2 = crop_region[3]
cropped = npimg[y1:y2, x1:x2]
return cropped
def crop_ndarray4(npimg, crop_region):
x1 = crop_region[0]
y1 = crop_region[1]
x2 = crop_region[2]
y2 = crop_region[3]
cropped = npimg[:, y1:y2, x1:x2, :]
return cropped
crop_tensor4 = crop_ndarray4
def crop_image(image, crop_region):
return crop_tensor4(image, crop_region)