mirror of
https://github.com/azaion/ai-training.git
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269 lines
12 KiB
Python
269 lines
12 KiB
Python
import os
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import time
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from datetime import datetime, timedelta
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from pathlib import Path
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import cv2
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import numpy as np
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import torch
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import kornia.augmentation as K
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import kornia.utils as KU
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from torch.utils.data import Dataset, DataLoader
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import concurrent.futures
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from constants import (data_images_dir, data_labels_dir, processed_images_dir, processed_labels_dir)
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from dto.imageLabel import ImageLabel
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# Configurable parameters
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num_augmented_images = 7
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augmentation_probability = 0.5 # general probability for augmentations, can be adjusted per augmentation
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RESIZE_SIZE = (1080, 1920) # Resize images to Full HD 1920x1080 (height, width)
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processed_images_dir = processed_images_dir + '_cuda'
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processed_labels_dir = processed_labels_dir + '_cuda'
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# Ensure directories exist
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os.makedirs(processed_images_dir, exist_ok=True)
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os.makedirs(processed_labels_dir, exist_ok=True)
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# Custom Augmentations
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class RandomFog(K.AugmentationBase2D):
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def __init__(self, fog_coef_range=(0, 0.3), p=augmentation_probability, same_on_batch=True):
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super().__init__(p=p, same_on_batch=same_on_batch)
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self.fog_coef_range = fog_coef_range
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def compute_transformation(self, input_shape: torch.Size, params: dict) -> dict:
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return {"fog_factor": torch.rand(input_shape[0], device=self.device) * (self.fog_coef_range[1] - self.fog_coef_range[0]) + self.fog_coef_range[0]}
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def apply_transform(self, input: torch.Tensor, params: dict, transform: dict) -> torch.Tensor:
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fog_factor = transform['fog_factor'].view(-1, 1, 1, 1)
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return input * (1.0 - fog_factor) + fog_factor
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class RandomShadow(K.AugmentationBase2D):
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def __init__(self, shadow_factor_range=(0.2, 0.8), p=augmentation_probability, same_on_batch=True):
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super().__init__(p=p, same_on_batch=same_on_batch)
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self.shadow_factor_range = shadow_factor_range
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def compute_transformation(self, input_shape: torch.Size, params: dict) -> dict:
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batch_size, _, height, width = input_shape
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x1 = torch.randint(0, width, (batch_size,), device=self.device)
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y1 = torch.randint(0, height, (batch_size,), device=self.device)
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x2 = torch.randint(x1, width, (batch_size,), device=self.device)
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y2 = torch.randint(y1, height, (batch_size,), device=self.device)
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shadow_factor = torch.rand(batch_size, device=self.device) * (self.shadow_factor_range[1] - self.shadow_factor_range[0]) + self.shadow_factor_range[0]
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return {"x1": x1, "y1": y1, "x2": x2, "y2": y2, "shadow_factor": shadow_factor}
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def apply_transform(self, input: torch.Tensor, params: dict, transform: dict) -> torch.Tensor:
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batch_size, _, height, width = input.size()
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mask = torch.zeros_like(input, device=self.device)
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for b in range(batch_size):
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mask[b, :, transform['y1'][b]:transform['y2'][b], transform['x1'][b]:transform['x2'][b]] = 1
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shadow_factor = transform['shadow_factor'].view(-1, 1, 1, 1)
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return input * (1.0 - mask) + input * mask * shadow_factor
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class ImageDataset(Dataset):
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def __init__(self, images_dir, labels_dir):
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self.images_dir = images_dir
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self.labels_dir = labels_dir
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self.image_filenames = [f for f in os.listdir(images_dir) if os.path.isfile(os.path.join(images_dir, f))]
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self.resize = K.Resize(RESIZE_SIZE) # Add resize transform here
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def __len__(self):
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return len(self.image_filenames)
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def __getitem__(self, idx):
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image_filename = self.image_filenames[idx]
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image_path = os.path.join(self.images_dir, image_filename)
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label_path = os.path.join(self.labels_dir, Path(image_filename).stem + '.txt')
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image_np = cv2.imread(image_path)
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if image_np is None:
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raise FileNotFoundError(f"Error reading image: {image_path}")
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image_np = cv2.cvtColor(image_np, cv2.COLOR_BGR2RGB) # Convert to RGB for Kornia
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image = KU.image_to_tensor(image_np, keepdim=False).float() # HWC -> CHW, and to tensor, convert to float here!
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image = self.resize(image) # Resize image here to fixed size
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print(f"Image shape after resize (index {idx}, filename {image_filename}): {image.shape}") # DEBUG PRINT
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labels = []
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if os.path.exists(label_path):
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labels = self._read_labels(label_path)
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return image, labels, image_filename
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def _read_labels(self, labels_path):
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labels = []
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with open(labels_path, 'r') as f:
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for row in f.readlines():
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str_coordinates = row.strip().split(' ')
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class_num = int(str_coordinates[0])
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coordinates = [float(n) for n in str_coordinates[1:]] # x_center, y_center, width, height (normalized YOLO)
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labels.append([*coordinates, class_num])
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return labels
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def yolo_to_xyxy(bboxes_yolo, image_width, image_height):
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bboxes_xyxy = []
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for bbox in bboxes_yolo:
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x_center, y_center, w, h, class_id = bbox
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x_min = int((x_center - w / 2) * image_width)
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y_min = int((y_center - h / 2) * image_height)
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x_max = int((x_center + w / 2) * image_width)
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y_max = int((y_center + h / 2) * image_height)
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bboxes_xyxy.append([x_min, y_min, x_max, y_max, class_id])
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return torch.tensor(bboxes_xyxy) if bboxes_xyxy else torch.empty((0, 5))
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def xyxy_to_yolo(bboxes_xyxy, image_width, image_height):
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bboxes_yolo = []
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for bbox in bboxes_xyxy:
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x_min, y_min, x_max, y_max, class_id = bbox
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x_center = ((x_min + x_max) / 2) / image_width
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y_center = ((y_min + y_max) / 2) / image_height
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w = (x_max - x_min) / image_width
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h = (y_max - y_min) / image_height
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bboxes_yolo.append([x_center, y_center, w, h, int(class_id)])
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return bboxes_yolo
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def correct_bboxes(labels):
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margin = 0.0005
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min_size = 0.01
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res = []
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for bboxes in labels:
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x = bboxes[0]
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y = bboxes[1]
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half_width = 0.5*bboxes[2]
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half_height = 0.5*bboxes[3]
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w_diff = min( (1 - margin) - (x + half_width), (x - half_width) - margin, 0 )
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w = bboxes[2] + 2*w_diff
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if w < min_size:
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continue
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h_diff = min( (1 - margin) - (y + half_height), ((y - half_height) - margin), 0)
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h = bboxes[3] + 2 * h_diff
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if h < min_size:
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continue
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res.append([x, y, w, h, bboxes[4]])
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return res
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def process_image_and_labels(image, labels_yolo, image_filename, geometric_pipeline, intensity_pipeline, device):
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image = image.float() / 255.0
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original_height, original_width = RESIZE_SIZE[0], RESIZE_SIZE[1] # Use fixed resize size (Height, Width)
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processed_image_labels = []
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# 1. Original image and labels
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current_labels_yolo_corrected = correct_bboxes(labels_yolo)
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processed_image_labels.append(ImageLabel(
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image=KU.tensor_to_image(image.byte()), # Convert back to numpy uint8 for saving
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labels=current_labels_yolo_corrected,
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image_path=os.path.join(processed_images_dir, image_filename),
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labels_path=os.path.join(processed_labels_dir, Path(image_filename).stem + '.txt')
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))
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# 2-8. Augmented images
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for i in range(num_augmented_images):
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img_batch = image.unsqueeze(0).to(device) # BCHW
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bboxes_xyxy = yolo_to_xyxy(labels_yolo, original_width, original_height).unsqueeze(0).to(device) # B N 5
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augmented_batch = geometric_pipeline(img_batch, params={"bbox": bboxes_xyxy})
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geo_augmented_image = augmented_batch["input"]
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geo_augmented_bboxes_xyxy = augmented_batch["bbox"]
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intensity_augmented_image = intensity_pipeline(geo_augmented_image)
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# Convert back to CPU and numpy
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augmented_image_np = KU.tensor_to_image((intensity_augmented_image.squeeze(0).cpu() * 255.0).byte())
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augmented_bboxes_xyxy_cpu = geo_augmented_bboxes_xyxy.squeeze(0).cpu()
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augmented_bboxes_yolo = xyxy_to_yolo(augmented_bboxes_xyxy_cpu, original_width, original_height)
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augmented_bboxes_yolo_corrected = correct_bboxes(augmented_bboxes_yolo)
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processed_image_labels.append(ImageLabel(
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image=augmented_image_np,
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labels=augmented_bboxes_yolo_corrected,
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image_path=os.path.join(processed_images_dir, f'{Path(image_filename).stem}_{i + 1}{Path(image_filename).suffix}'),
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labels_path=os.path.join(processed_labels_dir, f'{Path(image_filename).stem}_{i + 1}.txt')
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))
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return processed_image_labels
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def write_result(img_ann: ImageLabel):
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cv2.imwrite(img_ann.image_path, cv2.cvtColor(img_ann.image, cv2.COLOR_RGB2BGR)) # Save as BGR
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print(f'{img_ann.image_path} written')
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with open(img_ann.labels_path, 'w') as f:
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lines = [f'{ann[4]} {round(ann[0], 5)} {round(ann[1], 5)} {round(ann[2], 5)} {round(ann[3], 5)}\n' for ann in
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img_ann.labels]
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f.writelines(lines)
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f.close()
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print(f'{img_ann.labels_path} written')
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def process_batch_wrapper(batch_data, geometric_pipeline, intensity_pipeline, device):
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processed_batch_image_labels = []
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for image, labels_yolo, image_filename in batch_data:
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results = process_image_and_labels(image, labels_yolo, image_filename, geometric_pipeline, intensity_pipeline, device)
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processed_batch_image_labels.extend(results)
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return processed_batch_image_labels
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def save_batch_results(batch_image_labels):
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global total_files_processed
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for img_ann in batch_image_labels:
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write_result(img_ann)
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total_files_processed += 1
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print(f"Total processed images: {total_files_processed}")
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def main():
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global total_files_processed
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total_files_processed = 0
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device = torch.device('cuda' if torch.cuda.is_available() else 'cpu')
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print(f"Using device: {device}")
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geometric_pipeline = K.AugmentationSequential(
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K.RandomHorizontalFlip(p=0.5),
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K.RandomAffine(degrees=25, translate=(0.1, 0.1), scale=(0.8, 1.2), p=0.5),
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data_keys=["input", "bbox"],
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same_on_batch=False
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).to(device)
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intensity_pipeline = K.AugmentationSequential(
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K.ColorJitter(brightness=0.1, contrast=0.07, saturation=0.1, hue=0.1, p=0.5),
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RandomFog(p=0.2),
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RandomShadow(p=0.3),
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K.RandomMotionBlur(kernel_size=3, angle=35., direction=0.5, p=0.3),
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data_keys=["input"],
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same_on_batch=False
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).to(device)
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dataset = ImageDataset(data_images_dir, data_labels_dir)
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dataloader = DataLoader(dataset, batch_size=32, shuffle=False, num_workers=os.cpu_count()) # Adjust batch_size as needed
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processed_images_set = set(os.listdir(processed_images_dir))
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images_to_process_indices = [i for i, filename in enumerate(dataset.image_filenames) if filename not in processed_images_set]
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dataloader_filtered = torch.utils.data.Subset(dataset, images_to_process_indices)
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filtered_dataloader = DataLoader(dataloader_filtered, batch_size=32, shuffle=False, num_workers=os.cpu_count())
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start_time = time.time()
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try:
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for batch_data in filtered_dataloader:
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batch_image = batch_data[0]
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batch_labels = batch_data[1]
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batch_filenames = batch_data[2]
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batch_processed_image_labels = process_batch_wrapper(list(zip(batch_image, batch_labels, batch_filenames)), geometric_pipeline, intensity_pipeline, device)
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save_batch_results(batch_processed_image_labels)
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except Exception as e:
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print(e)
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end_time = time.time()
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elapsed_time = end_time - start_time
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print(f"Total processing time: {elapsed_time:.2f} seconds")
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images_per_hour = (total_files_processed / elapsed_time) * 3600
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print(f"Processed images per hour: {images_per_hour:.2f}")
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print("Augmentation process completed.")
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if __name__ == '__main__':
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main() |