| import os |
| import cv2 |
| from tqdm import tqdm |
| from PIL import Image |
| from torch.utils import data |
| from torchvision import transforms |
|
|
| from .image_proc import preproc |
| from .config import Config |
| from .utils import path_to_image |
|
|
|
|
| Image.MAX_IMAGE_PIXELS = None |
| config = Config() |
| _class_labels_TR_sorted = ( |
| 'Airplane, Ant, Antenna, Archery, Axe, BabyCarriage, Bag, BalanceBeam, Balcony, Balloon, Basket, BasketballHoop, Beatle, Bed, Bee, Bench, Bicycle, ' |
| 'BicycleFrame, BicycleStand, Boat, Bonsai, BoomLift, Bridge, BunkBed, Butterfly, Button, Cable, CableLift, Cage, Camcorder, Cannon, Canoe, Car, ' |
| 'CarParkDropArm, Carriage, Cart, Caterpillar, CeilingLamp, Centipede, Chair, Clip, Clock, Clothes, CoatHanger, Comb, ConcretePumpTruck, Crack, Crane, ' |
| 'Cup, DentalChair, Desk, DeskChair, Diagram, DishRack, DoorHandle, Dragonfish, Dragonfly, Drum, Earphone, Easel, ElectricIron, Excavator, Eyeglasses, ' |
| 'Fan, Fence, Fencing, FerrisWheel, FireExtinguisher, Fishing, Flag, FloorLamp, Forklift, GasStation, Gate, Gear, Goal, Golf, GymEquipment, Hammock, ' |
| 'Handcart, Handcraft, Handrail, HangGlider, Harp, Harvester, Headset, Helicopter, Helmet, Hook, HorizontalBar, Hydrovalve, IroningTable, Jewelry, Key, ' |
| 'KidsPlayground, Kitchenware, Kite, Knife, Ladder, LaundryRack, Lightning, Lobster, Locust, Machine, MachineGun, MagazineRack, Mantis, Medal, MemorialArchway, ' |
| 'Microphone, Missile, MobileHolder, Monitor, Mosquito, Motorcycle, MovingTrolley, Mower, MusicPlayer, MusicStand, ObservationTower, Octopus, OilWell, ' |
| 'OlympicLogo, OperatingTable, OutdoorFitnessEquipment, Parachute, Pavilion, Piano, Pipe, PlowHarrow, PoleVault, Punchbag, Rack, Racket, Rifle, Ring, Robot, ' |
| 'RockClimbing, Rope, Sailboat, Satellite, Scaffold, Scale, Scissor, Scooter, Sculpture, Seadragon, Seahorse, Seal, SewingMachine, Ship, Shoe, ShoppingCart, ' |
| 'ShoppingTrolley, Shower, Shrimp, Signboard, Skateboarding, Skeleton, Skiing, Spade, SpeedBoat, Spider, Spoon, Stair, Stand, Stationary, SteeringWheel, ' |
| 'Stethoscope, Stool, Stove, StreetLamp, SweetStand, Swing, Sword, TV, Table, TableChair, TableLamp, TableTennis, Tank, Tapeline, Teapot, Telescope, Tent, ' |
| 'TobaccoPipe, Toy, Tractor, TrafficLight, TrafficSign, Trampoline, TransmissionTower, Tree, Tricycle, TrimmerCover, Tripod, Trombone, Truck, Trumpet, Tuba, ' |
| 'UAV, Umbrella, UnevenBars, UtilityPole, VacuumCleaner, Violin, Wakesurfing, Watch, WaterTower, WateringPot, Well, WellLid, Wheel, Wheelchair, WindTurbine, Windmill, WineGlass, WireWhisk, Yacht' |
| ) |
| class_labels_TR_sorted = _class_labels_TR_sorted.split(', ') |
|
|
|
|
| class MyData(data.Dataset): |
| def __init__(self, datasets, image_size, is_train=True): |
| self.size_train = image_size |
| self.size_test = image_size |
| self.keep_size = not config.size |
| self.data_size = (config.size, config.size) |
| self.is_train = is_train |
| self.load_all = config.load_all |
| self.device = config.device |
| valid_extensions = ['.png', '.jpg', '.PNG', '.JPG', '.JPEG'] |
|
|
| if self.is_train and config.auxiliary_classification: |
| self.cls_name2id = {_name: _id for _id, _name in enumerate(class_labels_TR_sorted)} |
| self.transform_image = transforms.Compose([ |
| transforms.Resize(self.data_size), |
| transforms.ToTensor(), |
| transforms.Normalize([0.485, 0.456, 0.406], [0.229, 0.224, 0.225]), |
| ][self.load_all or self.keep_size:]) |
| self.transform_label = transforms.Compose([ |
| transforms.Resize(self.data_size), |
| transforms.ToTensor(), |
| ][self.load_all or self.keep_size:]) |
| dataset_root = os.path.join(config.data_root_dir, config.task) |
| |
| self.image_paths = [] |
| for dataset in datasets.split('+'): |
| image_root = os.path.join(dataset_root, dataset, 'im') |
| self.image_paths += [os.path.join(image_root, p) for p in os.listdir(image_root) if any(p.endswith(ext) for ext in valid_extensions)] |
| self.label_paths = [] |
| for p in self.image_paths: |
| for ext in valid_extensions: |
| |
| p_gt = p.replace('/im/', '/gt/')[:-(len(p.split('.')[-1])+1)] + ext |
| file_exists = False |
| if os.path.exists(p_gt): |
| self.label_paths.append(p_gt) |
| file_exists = True |
| break |
| if not file_exists: |
| print('Not exists:', p_gt) |
|
|
| if len(self.label_paths) != len(self.image_paths): |
| raise ValueError(f"There are different numbers of images ({len(self.label_paths)}) and labels ({len(self.image_paths)})") |
|
|
| if self.load_all: |
| self.images_loaded, self.labels_loaded = [], [] |
| self.class_labels_loaded = [] |
| |
| for image_path, label_path in tqdm(zip(self.image_paths, self.label_paths), total=len(self.image_paths)): |
| _image = path_to_image(image_path, size=(config.size, config.size), color_type='rgb') |
| _label = path_to_image(label_path, size=(config.size, config.size), color_type='gray') |
| self.images_loaded.append(_image) |
| self.labels_loaded.append(_label) |
| self.class_labels_loaded.append( |
| self.cls_name2id[label_path.split('/')[-1].split('#')[3]] if self.is_train and config.auxiliary_classification else -1 |
| ) |
|
|
| def __getitem__(self, index): |
|
|
| if self.load_all: |
| image = self.images_loaded[index] |
| label = self.labels_loaded[index] |
| class_label = self.class_labels_loaded[index] if self.is_train and config.auxiliary_classification else -1 |
| else: |
| image = path_to_image(self.image_paths[index], size=(config.size, config.size), color_type='rgb') |
| label = path_to_image(self.label_paths[index], size=(config.size, config.size), color_type='gray') |
| class_label = self.cls_name2id[self.label_paths[index].split('/')[-1].split('#')[3]] if self.is_train and config.auxiliary_classification else -1 |
|
|
| |
| if self.is_train: |
| image, label = preproc(image, label, preproc_methods=config.preproc_methods) |
| |
| |
| |
| |
|
|
| image, label = self.transform_image(image), self.transform_label(label) |
|
|
| if self.is_train: |
| return image, label, class_label |
| else: |
| return image, label, self.label_paths[index] |
|
|
| def __len__(self): |
| return len(self.image_paths) |
|
|