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import folder_paths |
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from PIL import Image |
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import numpy as np |
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import cv2 |
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import torch |
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def add_folder_path_and_extensions(folder_name, full_folder_paths, extensions): |
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for full_folder_path in full_folder_paths: |
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folder_paths.add_model_folder_path(folder_name, full_folder_path) |
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if folder_name in folder_paths.folder_names_and_paths: |
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current_paths, current_extensions = folder_paths.folder_names_and_paths[folder_name] |
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updated_extensions = current_extensions | extensions |
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folder_paths.folder_names_and_paths[folder_name] = (current_paths, updated_extensions) |
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else: |
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folder_paths.folder_names_and_paths[folder_name] = (full_folder_paths, extensions) |
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def normalize_region(limit, startp, size): |
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if startp < 0: |
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new_endp = min(limit, size) |
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new_startp = 0 |
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elif startp + size > limit: |
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new_startp = max(0, limit - size) |
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new_endp = limit |
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else: |
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new_startp = startp |
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new_endp = min(limit, startp+size) |
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return int(new_startp), int(new_endp) |
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def _tensor_check_image(image): |
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if image.ndim != 4: |
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raise ValueError(f"Expected NHWC tensor, but found {image.ndim} dimensions") |
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if image.shape[-1] not in (1, 3, 4): |
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raise ValueError(f"Expected 1, 3 or 4 channels for image, but found {image.shape[-1]} channels") |
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return |
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def tensor2pil(image): |
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_tensor_check_image(image) |
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return Image.fromarray(np.clip(255. * image.cpu().numpy().squeeze(0), 0, 255).astype(np.uint8)) |
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def dilate_masks(segmasks, dilation_factor, iter=1): |
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if dilation_factor == 0: |
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return segmasks |
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dilated_masks = [] |
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kernel = np.ones((abs(dilation_factor), abs(dilation_factor)), np.uint8) |
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for i in range(len(segmasks)): |
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cv2_mask = segmasks[i][1] |
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if dilation_factor > 0: |
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dilated_mask = cv2.dilate(cv2_mask, kernel, iter) |
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else: |
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dilated_mask = cv2.erode(cv2_mask, kernel, iter) |
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item = (segmasks[i][0], dilated_mask, segmasks[i][2]) |
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dilated_masks.append(item) |
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return dilated_masks |
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def combine_masks(masks): |
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if len(masks) == 0: |
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return None |
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else: |
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initial_cv2_mask = np.array(masks[0][1]) |
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combined_cv2_mask = initial_cv2_mask |
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for i in range(1, len(masks)): |
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cv2_mask = np.array(masks[i][1]) |
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if combined_cv2_mask.shape == cv2_mask.shape: |
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combined_cv2_mask = cv2.bitwise_or(combined_cv2_mask, cv2_mask) |
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else: |
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pass |
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mask = torch.from_numpy(combined_cv2_mask) |
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return mask |
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def make_crop_region(w, h, bbox, crop_factor, crop_min_size=None): |
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x1 = bbox[0] |
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y1 = bbox[1] |
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x2 = bbox[2] |
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y2 = bbox[3] |
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bbox_w = x2 - x1 |
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bbox_h = y2 - y1 |
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crop_w = bbox_w * crop_factor |
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crop_h = bbox_h * crop_factor |
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if crop_min_size is not None: |
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crop_w = max(crop_min_size, crop_w) |
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crop_h = max(crop_min_size, crop_h) |
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kernel_x = x1 + bbox_w / 2 |
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kernel_y = y1 + bbox_h / 2 |
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new_x1 = int(kernel_x - crop_w / 2) |
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new_y1 = int(kernel_y - crop_h / 2) |
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new_x1, new_x2 = normalize_region(w, new_x1, crop_w) |
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new_y1, new_y2 = normalize_region(h, new_y1, crop_h) |
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return [new_x1, new_y1, new_x2, new_y2] |
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def crop_ndarray2(npimg, crop_region): |
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x1 = crop_region[0] |
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y1 = crop_region[1] |
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x2 = crop_region[2] |
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y2 = crop_region[3] |
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cropped = npimg[y1:y2, x1:x2] |
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return cropped |
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def crop_ndarray4(npimg, crop_region): |
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x1 = crop_region[0] |
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y1 = crop_region[1] |
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x2 = crop_region[2] |
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y2 = crop_region[3] |
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cropped = npimg[:, y1:y2, x1:x2, :] |
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return cropped |
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crop_tensor4 = crop_ndarray4 |
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def crop_image(image, crop_region): |
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return crop_tensor4(image, crop_region) |
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