import os from pathlib import Path import json import time import random from typing import * import traceback import itertools from numbers import Number import io import numpy as np import cv2 from PIL import Image import torch import torchvision.transforms.v2.functional as TF import utils3d import pipeline from tqdm import tqdm from ..utils.io import * from ..utils.geometry_numpy import harmonic_mean_numpy, norm3d, depth_occlusion_edge_numpy from ..utils.data_augmentation import sample_perspective, warp_perspective, image_color_augmentation class TrainDataLoaderPipeline: def __init__(self, config: dict, batch_size: int, num_load_workers: int = 4, num_process_workers: int = 8, buffer_size: int = 8): self.config = config self.batch_size = batch_size self.clamp_max_depth = config['clamp_max_depth'] self.fov_range_absolute = config.get('fov_range_absolute', 0.0) self.fov_range_relative = config.get('fov_range_relative', 0.0) self.center_augmentation = config.get('center_augmentation', 0.0) self.image_augmentation = config.get('image_augmentation', []) self.depth_interpolation = config.get('depth_interpolation', 'bilinear') if 'image_sizes' in config: self.image_size_strategy = 'fixed' self.image_sizes = config['image_sizes'] elif 'aspect_ratio_range' in config and 'area_range' in config: self.image_size_strategy = 'aspect_area' self.aspect_ratio_range = config['aspect_ratio_range'] self.area_range = config['area_range'] else: raise ValueError('Invalid image size configuration') # Load datasets self.datasets = {} for dataset in tqdm(config['datasets'], desc='Loading datasets'): name = dataset['name'] content = Path(dataset['path'], dataset.get('index', '.index.txt')).joinpath().read_text() filenames = content.splitlines() self.datasets[name] = { **dataset, 'path': dataset['path'], 'filenames': filenames, } self.dataset_names = [dataset['name'] for dataset in config['datasets']] self.dataset_weights = [dataset['weight'] for dataset in config['datasets']] # Build pipeline self.pipeline = pipeline.Sequential([ self._sample_batch, pipeline.Unbatch(), pipeline.Parallel([self._load_instance] * num_load_workers), pipeline.Parallel([self._process_instance] * num_process_workers), pipeline.Batch(self.batch_size), self._collate_batch, pipeline.Buffer(buffer_size), ]) self.invalid_instance = { 'intrinsics': np.array([[1.0, 0.0, 0.5], [0.0, 1.0, 0.5], [0.0, 0.0, 1.0]], dtype=np.float32), 'image': np.zeros((256, 256, 3), dtype=np.uint8), 'depth': np.ones((256, 256), dtype=np.float32), 'depth_mask': np.ones((256, 256), dtype=bool), 'depth_mask_inf': np.zeros((256, 256), dtype=bool), 'label_type': 'invalid', } def _sample_batch(self): batch_id = 0 last_area = None while True: # Depending on the sample strategy, choose a dataset and a filename batch_id += 1 batch = [] # Sample instances for _ in range(self.batch_size): dataset_name = random.choices(self.dataset_names, weights=self.dataset_weights)[0] filename = random.choice(self.datasets[dataset_name]['filenames']) path = Path(self.datasets[dataset_name]['path'], filename) instance = { 'batch_id': batch_id, 'seed': random.randint(0, 2 ** 32 - 1), 'dataset': dataset_name, 'filename': filename, 'path': path, 'label_type': self.datasets[dataset_name]['label_type'], } batch.append(instance) # Decide the image size for this batch if self.image_size_strategy == 'fixed': width, height = random.choice(self.config['image_sizes']) elif self.image_size_strategy == 'aspect_area': area = random.uniform(*self.area_range) aspect_ratio_ranges = [self.datasets[instance['dataset']].get('aspect_ratio_range', self.aspect_ratio_range) for instance in batch] aspect_ratio_range = (min(r[0] for r in aspect_ratio_ranges), max(r[1] for r in aspect_ratio_ranges)) aspect_ratio = random.uniform(*aspect_ratio_range) width, height = int((area * aspect_ratio) ** 0.5), int((area / aspect_ratio) ** 0.5) else: raise ValueError('Invalid image size strategy') for instance in batch: instance['width'], instance['height'] = width, height yield batch def _load_instance(self, instance: dict): try: image = read_image(Path(instance['path'], 'image.jpg')) depth = read_depth(Path(instance['path'], self.datasets[instance['dataset']].get('depth', 'depth.png'))) meta = read_json(Path(instance['path'], 'meta.json')) intrinsics = np.array(meta['intrinsics'], dtype=np.float32) data = { 'image': image, 'depth': depth, 'intrinsics': intrinsics } instance.update({ **data, }) except Exception as e: print(f"Failed to load instance {instance['dataset']}/{instance['filename']} because of exception:", e) instance.update(self.invalid_instance) return instance def _process_instance(self, instance: Dict[str, Union[np.ndarray, str, float, bool]]): raw_image, raw_depth, raw_intrinsics, label_type = instance['image'], instance['depth'], instance['intrinsics'], instance['label_type'] raw_normal, raw_normal_mask = utils3d.np.depth_map_to_normal_map(raw_depth, intrinsics=raw_intrinsics, mask=np.isfinite(raw_depth), edge_threshold=88) raw_normal = np.where(raw_normal_mask[..., None], raw_normal, np.nan) depth_unit = self.datasets[instance['dataset']].get('depth_unit', None) raw_height, raw_width = raw_image.shape[:2] raw_fov_x, raw_fov_y = utils3d.np.intrinsics_to_fov(raw_intrinsics) tgt_width, tgt_height = instance['width'], instance['height'] tgt_aspect = tgt_width / tgt_height rng = np.random.default_rng(instance['seed']) # Sample perspective transformation tgt_intrinsics, R = sample_perspective( raw_intrinsics, tgt_aspect=tgt_aspect, center_augmentation=self.datasets[instance['dataset']].get('center_augmentation', self.center_augmentation), fov_range_absolute=self.datasets[instance['dataset']].get('fov_range_absolute', self.fov_range_absolute), fov_range_relative=self.datasets[instance['dataset']].get('fov_range_relative', self.fov_range_relative), rng=rng ) # Warp transform = tgt_intrinsics @ R @ np.linalg.inv(raw_intrinsics) # - Warp image tgt_image = warp_perspective(raw_image, transform, tgt_size=(tgt_height, tgt_width), interpolation='lanczos') # - Warp depth depth_edge_mask = utils3d.np.depth_map_edge(raw_depth, mask=np.isfinite(raw_depth), kernel_size=5, ltol=0.01) depth_bilinear_mask = np.isfinite(raw_depth) & ~depth_edge_mask warped_depth_bilinear_mask = warp_perspective(depth_bilinear_mask.astype(np.float32), transform, (tgt_height, tgt_width), interpolation='bilinear') warped_depth_nearest = warp_perspective(raw_depth, transform, (tgt_height, tgt_width), interpolation='nearest', sparse_mask=~np.isnan(raw_depth)) warped_depth_bilinear = 1 / warp_perspective(1 / raw_depth, transform, (tgt_height, tgt_width), interpolation='bilinear') # NOTE: Bilinear intepolation in disparity space maintains planar surfaces. warped_depth = np.where(warped_depth_bilinear_mask == 1., warped_depth_bilinear, warped_depth_nearest) tgt_uvhomo = np.concatenate([utils3d.np.uv_map((tgt_height, tgt_width)), np.ones((tgt_height, tgt_width, 1), dtype=np.float32)], axis=-1) tgt_depth = warped_depth / np.dot(tgt_uvhomo, np.linalg.inv(transform)[2, :]) # - Warp normal warped_normal = warp_perspective(raw_normal, transform, (tgt_height, tgt_width), interpolation='bilinear') tgt_normal = warped_normal @ R.T # always make sure that mask is not empty if np.isfinite(tgt_depth).sum() / tgt_depth.size < 0.001: tgt_depth = np.ones_like(tgt_depth) instance['label_type'] = 'invalid' # Flip augmentation if rng.choice([True, False]): tgt_image = np.flip(tgt_image, axis=1).copy() tgt_depth = np.flip(tgt_depth, axis=1).copy() tgt_normal = np.flip(tgt_normal, axis=1).copy() * [-1, 1, 1] # NOTE: if cx != 0.5, flip intrinsics accordingly. # Color augmentation image_augmentation = self.datasets[instance['dataset']].get('image_augmentation', self.image_augmentation) tgt_image = image_color_augmentation( tgt_image, augmentations=image_augmentation, rng=rng, depth=tgt_depth, ) # Set metric flag if depth is in metric unit if depth_unit is not None: tgt_depth *= depth_unit instance['is_metric'] = True else: instance['is_metric'] = False # Clip maximum depth max_depth = np.nanquantile(np.where(np.isfinite(tgt_depth), tgt_depth, np.nan), 0.01) * self.clamp_max_depth tgt_depth = np.where(np.isfinite(tgt_depth), np.clip(tgt_depth, 0, max_depth), tgt_depth) tgt_depth_mask_inf = np.isinf(tgt_depth) if self.datasets[instance['dataset']].get('finite_depth_mask', None) == "only_known": tgt_depth_mask_fin = np.isfinite(tgt_depth) else: tgt_depth_mask_fin = ~tgt_depth_mask_inf instance.update({ 'image': torch.from_numpy(tgt_image.astype(np.float32) / 255.0).permute(2, 0, 1), 'depth': torch.from_numpy(tgt_depth).float(), 'depth_mask_fin': torch.from_numpy(tgt_depth_mask_fin).bool(), 'depth_mask_inf': torch.from_numpy(tgt_depth_mask_inf).bool(), "normal": torch.from_numpy(tgt_normal).float(), 'intrinsics': torch.from_numpy(tgt_intrinsics).float(), }) return instance def _collate_batch(self, instances: List[Dict[str, Any]]): batch = {k: torch.stack([instance[k] for instance in instances], dim=0) for k in ['image', 'depth', 'depth_mask_fin', 'depth_mask_inf', 'normal', 'intrinsics']} batch = { 'label_type': [instance['label_type'] for instance in instances], 'is_metric': [instance['is_metric'] for instance in instances], 'info': [{'dataset': instance['dataset'], 'filename': instance['filename']} for instance in instances], **batch, } return batch def get(self) -> Dict[str, Union[torch.Tensor, str]]: return self.pipeline.get() def start(self): self.pipeline.start() def stop(self): self.pipeline.stop() def __enter__(self): self.start() return self def __exit__(self, exc_type, exc_value, traceback): self.pipeline.stop() return False