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import math
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import numpy as np
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import torch
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from typing import TypedDict
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try:
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import pyvips
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HAS_VIPS = True
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except:
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from PIL import Image
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HAS_VIPS = False
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def select_tiling(
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height: int, width: int, crop_size: int, max_crops: int
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) -> tuple[int, int]:
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"""
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Determine the optimal number of tiles to cover an image with overlapping crops.
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"""
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if height <= crop_size or width <= crop_size:
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return (1, 1)
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min_h = math.ceil(height / crop_size)
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min_w = math.ceil(width / crop_size)
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if min_h * min_w > max_crops:
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ratio = math.sqrt(max_crops / (min_h * min_w))
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return (max(1, math.floor(min_h * ratio)), max(1, math.floor(min_w * ratio)))
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h_tiles = math.floor(math.sqrt(max_crops * height / width))
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w_tiles = math.floor(math.sqrt(max_crops * width / height))
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h_tiles = max(h_tiles, min_h)
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w_tiles = max(w_tiles, min_w)
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if h_tiles * w_tiles > max_crops:
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if w_tiles > h_tiles:
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w_tiles = math.floor(max_crops / h_tiles)
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else:
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h_tiles = math.floor(max_crops / w_tiles)
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return (max(1, h_tiles), max(1, w_tiles))
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class OverlapCropOutput(TypedDict):
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crops: np.ndarray
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tiling: tuple[int, int]
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def overlap_crop_image(
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image: np.ndarray,
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overlap_margin: int,
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max_crops: int,
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base_size: tuple[int, int] = (378, 378),
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patch_size: int = 14,
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) -> OverlapCropOutput:
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"""
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Process an image using an overlap-and-resize cropping strategy with margin handling.
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This function takes an input image and creates multiple overlapping crops with
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consistent margins. It produces:
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1. A single global crop resized to base_size
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2. Multiple overlapping local crops that maintain high resolution details
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3. A patch ordering matrix that tracks correspondence between crops
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The overlap strategy ensures:
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- Smooth transitions between adjacent crops
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- No loss of information at crop boundaries
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- Proper handling of features that cross crop boundaries
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- Consistent patch indexing across the full image
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Args:
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image (np.ndarray): Input image as numpy array with shape (H,W,C)
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base_size (tuple[int,int]): Target size for crops, default (378,378)
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patch_size (int): Size of patches in pixels, default 14
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overlap_margin (int): Margin size in patch units, default 4
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max_crops (int): Maximum number of crops allowed, default 12
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Returns:
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OverlapCropOutput: Dictionary containing:
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- crops: A numpy array containing the global crop of the full image (index 0)
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followed by the overlapping cropped regions (indices 1+)
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- tiling: Tuple of (height,width) tile counts
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"""
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original_h, original_w = image.shape[:2]
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margin_pixels = patch_size * overlap_margin
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total_margin_pixels = margin_pixels * 2
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crop_patches = base_size[0] // patch_size
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crop_window_patches = crop_patches - (2 * overlap_margin)
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crop_window_size = crop_window_patches * patch_size
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tiling = select_tiling(
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original_h - total_margin_pixels,
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original_w - total_margin_pixels,
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crop_window_size,
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max_crops,
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)
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n_crops = tiling[0] * tiling[1] + 1
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crops = np.zeros(
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(n_crops, base_size[0], base_size[1], image.shape[2]), dtype=np.uint8
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)
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target_size = (
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tiling[0] * crop_window_size + total_margin_pixels,
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tiling[1] * crop_window_size + total_margin_pixels,
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)
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if HAS_VIPS:
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vips_image = pyvips.Image.new_from_array(image)
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scale_x = target_size[1] / image.shape[1]
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scale_y = target_size[0] / image.shape[0]
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resized = vips_image.resize(scale_x, vscale=scale_y)
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image = resized.numpy()
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scale_x = base_size[1] / vips_image.width
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scale_y = base_size[0] / vips_image.height
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global_vips = vips_image.resize(scale_x, vscale=scale_y)
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crops[0] = global_vips.numpy()
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else:
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pil_img = Image.fromarray(image)
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resized = pil_img.resize(
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(int(target_size[1]), int(target_size[0])),
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resample=Image.Resampling.LANCZOS,
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)
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image = np.asarray(resized)
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global_pil = pil_img.resize(
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(int(base_size[1]), int(base_size[0])), resample=Image.Resampling.LANCZOS
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)
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crops[0] = np.asarray(global_pil)
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for i in range(tiling[0]):
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for j in range(tiling[1]):
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y0 = i * crop_window_size
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x0 = j * crop_window_size
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y_end = min(y0 + base_size[0], image.shape[0])
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x_end = min(x0 + base_size[1], image.shape[1])
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crop_region = image[y0:y_end, x0:x_end]
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crops[
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1 + i * tiling[1] + j, : crop_region.shape[0], : crop_region.shape[1]
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] = crop_region
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return {"crops": crops, "tiling": tiling}
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def reconstruct_from_crops(
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crops: torch.Tensor,
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tiling: tuple[int, int],
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overlap_margin: int,
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patch_size: int = 14,
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) -> torch.Tensor:
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"""
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Reconstruct the original image from overlapping crops into a single seamless image.
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Takes a list of overlapping image crops along with their positional metadata and
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reconstructs them into a single coherent image by carefully stitching together
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non-overlapping regions. Handles both numpy arrays and PyTorch tensors.
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Args:
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crops: List of image crops as numpy arrays or PyTorch tensors with shape
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(H,W,C)
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tiling: Tuple of (height,width) indicating crop grid layout
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patch_size: Size in pixels of each patch, default 14
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overlap_margin: Number of overlapping patches on each edge, default 4
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Returns:
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Reconstructed image as numpy array or PyTorch tensor matching input type,
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with shape (H,W,C) where H,W are the original image dimensions
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"""
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tiling_h, tiling_w = tiling
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crop_height, crop_width = crops[0].shape[:2]
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margin_pixels = overlap_margin * patch_size
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output_h = (crop_height - 2 * margin_pixels) * tiling_h + 2 * margin_pixels
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output_w = (crop_width - 2 * margin_pixels) * tiling_w + 2 * margin_pixels
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reconstructed = torch.zeros(
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(output_h, output_w, crops[0].shape[2]),
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device=crops[0].device,
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dtype=crops[0].dtype,
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)
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for i, crop in enumerate(crops):
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tile_y = i // tiling_w
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tile_x = i % tiling_w
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x_start = 0 if tile_x == 0 else margin_pixels
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x_end = crop_width if tile_x == tiling_w - 1 else crop_width - margin_pixels
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y_start = 0 if tile_y == 0 else margin_pixels
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y_end = crop_height if tile_y == tiling_h - 1 else crop_height - margin_pixels
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out_x = tile_x * (crop_width - 2 * margin_pixels)
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out_y = tile_y * (crop_height - 2 * margin_pixels)
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reconstructed[
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out_y + y_start : out_y + y_end, out_x + x_start : out_x + x_end
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] = crop[y_start:y_end, x_start:x_end]
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return reconstructed
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