# Ultralytics YOLO 🚀, AGPL-3.0 license # Open Images v7 dataset https://storage.googleapis.com/openimages/web/index.html by Google # Documentation: https://docs.ultralytics.com/datasets/detect/open-images-v7/ # Example usage: yolo train data=open-images-v7.yaml # parent # ├── ultralytics # └── datasets # └── open-images-v7 ← downloads here (561 GB) # Train/val/test sets as 1) dir: path/to/imgs, 2) file: path/to/imgs.txt, or 3) list: [path/to/imgs1, path/to/imgs2, ..] path: ../datasets/open-images-v7 # dataset root dir train: images/train # train images (relative to 'path') 1743042 images val: images/val # val images (relative to 'path') 41620 images test: # test images (optional) # Classes names: 0: Accordion 1: Adhesive tape 2: Aircraft 3: Airplane 4: Alarm clock 5: Alpaca 6: Ambulance 7: Animal 8: Ant 9: Antelope 10: Apple 11: Armadillo 12: Artichoke 13: Auto part 14: Axe 15: Backpack 16: Bagel 17: Baked goods 18: Balance beam 19: Ball 20: Balloon 21: Banana 22: Band-aid 23: Banjo 24: Barge 25: Barrel 26: Baseball bat 27: Baseball glove 28: Bat (Animal) 29: Bathroom accessory 30: Bathroom cabinet 31: Bathtub 32: Beaker 33: Bear 34: Bed 35: Bee 36: Beehive 37: Beer 38: Beetle 39: Bell pepper 40: Belt 41: Bench 42: Bicycle 43: Bicycle helmet 44: Bicycle wheel 45: Bidet 46: Billboard 47: Billiard table 48: Binoculars 49: Bird 50: Blender 51: Blue jay 52: Boat 53: Bomb 54: Book 55: Bookcase 56: Boot 57: Bottle 58: Bottle opener 59: Bow and arrow 60: Bowl 61: Bowling equipment 62: Box 63: Boy 64: Brassiere 65: Bread 66: Briefcase 67: Broccoli 68: Bronze sculpture 69: Brown bear 70: Building 71: Bull 72: Burrito 73: Bus 74: Bust 75: Butterfly 76: Cabbage 77: Cabinetry 78: Cake 79: Cake stand 80: Calculator 81: Camel 82: Camera 83: Can opener 84: Canary 85: Candle 86: Candy 87: Cannon 88: Canoe 89: Cantaloupe 90: Car 91: Carnivore 92: Carrot 93: Cart 94: Cassette deck 95: Castle 96: Cat 97: Cat furniture 98: Caterpillar 99: Cattle 100: Ceiling fan 101: Cello 102: Centipede 103: Chainsaw 104: Chair 105: Cheese 106: Cheetah 107: Chest of drawers 108: Chicken 109: Chime 110: Chisel 111: Chopsticks 112: Christmas tree 113: Clock 114: Closet 115: Clothing 116: Coat 117: Cocktail 118: Cocktail shaker 119: Coconut 120: Coffee 121: Coffee cup 122: Coffee table 123: Coffeemaker 124: Coin 125: Common fig 126: Common sunflower 127: Computer keyboard 128: Computer monitor 129: Computer mouse 130: Container 131: Convenience store 132: Cookie 133: Cooking spray 134: Corded phone 135: Cosmetics 136: Couch 137: Countertop 138: Cowboy hat 139: Crab 140: Cream 141: Cricket ball 142: Crocodile 143: Croissant 144: Crown 145: Crutch 146: Cucumber 147: Cupboard 148: Curtain 149: Cutting board 150: Dagger 151: Dairy Product 152: Deer 153: Desk 154: Dessert 155: Diaper 156: Dice 157: Digital clock 158: Dinosaur 159: Dishwasher 160: Dog 161: Dog bed 162: Doll 163: Dolphin 164: Door 165: Door handle 166: Doughnut 167: Dragonfly 168: Drawer 169: Dress 170: Drill (Tool) 171: Drink 172: Drinking straw 173: Drum 174: Duck 175: Dumbbell 176: Eagle 177: Earrings 178: Egg (Food) 179: Elephant 180: Envelope 181: Eraser 182: Face powder 183: Facial tissue holder 184: Falcon 185: Fashion accessory 186: Fast food 187: Fax 188: Fedora 189: Filing cabinet 190: Fire hydrant 191: Fireplace 192: Fish 193: Flag 194: Flashlight 195: Flower 196: Flowerpot 197: Flute 198: Flying disc 199: Food 200: Food processor 201: Football 202: Football helmet 203: Footwear 204: Fork 205: Fountain 206: Fox 207: French fries 208: French horn 209: Frog 210: Fruit 211: Frying pan 212: Furniture 213: Garden Asparagus 214: Gas stove 215: Giraffe 216: Girl 217: Glasses 218: Glove 219: Goat 220: Goggles 221: Goldfish 222: Golf ball 223: Golf cart 224: Gondola 225: Goose 226: Grape 227: Grapefruit 228: Grinder 229: Guacamole 230: Guitar 231: Hair dryer 232: Hair spray 233: Hamburger 234: Hammer 235: Hamster 236: Hand dryer 237: Handbag 238: Handgun 239: Harbor seal 240: Harmonica 241: Harp 242: Harpsichord 243: Hat 244: Headphones 245: Heater 246: Hedgehog 247: Helicopter 248: Helmet 249: High heels 250: Hiking equipment 251: Hippopotamus 252: Home appliance 253: Honeycomb 254: Horizontal bar 255: Horse 256: Hot dog 257: House 258: Houseplant 259: Human arm 260: Human beard 261: Human body 262: Human ear 263: Human eye 264: Human face 265: Human foot 266: Human hair 267: Human hand 268: Human head 269: Human leg 270: Human mouth 271: Human nose 272: Humidifier 273: Ice cream 274: Indoor rower 275: Infant bed 276: Insect 277: Invertebrate 278: Ipod 279: Isopod 280: Jacket 281: Jacuzzi 282: Jaguar (Animal) 283: Jeans 284: Jellyfish 285: Jet ski 286: Jug 287: Juice 288: Kangaroo 289: Kettle 290: Kitchen & dining room table 291: Kitchen appliance 292: Kitchen knife 293: Kitchen utensil 294: Kitchenware 295: Kite 296: Knife 297: Koala 298: Ladder 299: Ladle 300: Ladybug 301: Lamp 302: Land vehicle 303: Lantern 304: Laptop 305: Lavender (Plant) 306: Lemon 307: Leopard 308: Light bulb 309: Light switch 310: Lighthouse 311: Lily 312: Limousine 313: Lion 314: Lipstick 315: Lizard 316: Lobster 317: Loveseat 318: Luggage and bags 319: Lynx 320: Magpie 321: Mammal 322: Man 323: Mango 324: Maple 325: Maracas 326: Marine invertebrates 327: Marine mammal 328: Measuring cup 329: Mechanical fan 330: Medical equipment 331: Microphone 332: Microwave oven 333: Milk 334: Miniskirt 335: Mirror 336: Missile 337: Mixer 338: Mixing bowl 339: Mobile phone 340: Monkey 341: Moths and butterflies 342: Motorcycle 343: Mouse 344: Muffin 345: Mug 346: Mule 347: Mushroom 348: Musical instrument 349: Musical keyboard 350: Nail (Construction) 351: Necklace 352: Nightstand 353: Oboe 354: Office building 355: Office supplies 356: Orange 357: Organ (Musical Instrument) 358: Ostrich 359: Otter 360: Oven 361: Owl 362: Oyster 363: Paddle 364: Palm tree 365: Pancake 366: Panda 367: Paper cutter 368: Paper towel 369: Parachute 370: Parking meter 371: Parrot 372: Pasta 373: Pastry 374: Peach 375: Pear 376: Pen 377: Pencil case 378: Pencil sharpener 379: Penguin 380: Perfume 381: Person 382: Personal care 383: Personal flotation device 384: Piano 385: Picnic basket 386: Picture frame 387: Pig 388: Pillow 389: Pineapple 390: Pitcher (Container) 391: Pizza 392: Pizza cutter 393: Plant 394: Plastic bag 395: Plate 396: Platter 397: Plumbing fixture 398: Polar bear 399: Pomegranate 400: Popcorn 401: Porch 402: Porcupine 403: Poster 404: Potato 405: Power plugs and sockets 406: Pressure cooker 407: Pretzel 408: Printer 409: Pumpkin 410: Punching bag 411: Rabbit 412: Raccoon 413: Racket 414: Radish 415: Ratchet (Device) 416: Raven 417: Rays and skates 418: Red panda 419: Refrigerator 420: Remote control 421: Reptile 422: Rhinoceros 423: Rifle 424: Ring binder 425: Rocket 426: Roller skates 427: Rose 428: Rugby ball 429: Ruler 430: Salad 431: Salt and pepper shakers 432: Sandal 433: Sandwich 434: Saucer 435: Saxophone 436: Scale 437: Scarf 438: Scissors 439: Scoreboard 440: Scorpion 441: Screwdriver 442: Sculpture 443: Sea lion 444: Sea turtle 445: Seafood 446: Seahorse 447: Seat belt 448: Segway 449: Serving tray 450: Sewing machine 451: Shark 452: Sheep 453: Shelf 454: Shellfish 455: Shirt 456: Shorts 457: Shotgun 458: Shower 459: Shrimp 460: Sink 461: Skateboard 462: Ski 463: Skirt 464: Skull 465: Skunk 466: Skyscraper 467: Slow cooker 468: Snack 469: Snail 470: Snake 471: Snowboard 472: Snowman 473: Snowmobile 474: Snowplow 475: Soap dispenser 476: Sock 477: Sofa bed 478: Sombrero 479: Sparrow 480: Spatula 481: Spice rack 482: Spider 483: Spoon 484: Sports equipment 485: Sports uniform 486: Squash (Plant) 487: Squid 488: Squirrel 489: Stairs 490: Stapler 491: Starfish 492: Stationary bicycle 493: Stethoscope 494: Stool 495: Stop sign 496: Strawberry 497: Street light 498: Stretcher 499: Studio couch 500: Submarine 501: Submarine sandwich 502: Suit 503: Suitcase 504: Sun hat 505: Sunglasses 506: Surfboard 507: Sushi 508: Swan 509: Swim cap 510: Swimming pool 511: Swimwear 512: Sword 513: Syringe 514: Table 515: Table tennis racket 516: Tablet computer 517: Tableware 518: Taco 519: Tank 520: Tap 521: Tart 522: Taxi 523: Tea 524: Teapot 525: Teddy bear 526: Telephone 527: Television 528: Tennis ball 529: Tennis racket 530: Tent 531: Tiara 532: Tick 533: Tie 534: Tiger 535: Tin can 536: Tire 537: Toaster 538: Toilet 539: Toilet paper 540: Tomato 541: Tool 542: Toothbrush 543: Torch 544: Tortoise 545: Towel 546: Tower 547: Toy 548: Traffic light 549: Traffic sign 550: Train 551: Training bench 552: Treadmill 553: Tree 554: Tree house 555: Tripod 556: Trombone 557: Trousers 558: Truck 559: Trumpet 560: Turkey 561: Turtle 562: Umbrella 563: Unicycle 564: Van 565: Vase 566: Vegetable 567: Vehicle 568: Vehicle registration plate 569: Violin 570: Volleyball (Ball) 571: Waffle 572: Waffle iron 573: Wall clock 574: Wardrobe 575: Washing machine 576: Waste container 577: Watch 578: Watercraft 579: Watermelon 580: Weapon 581: Whale 582: Wheel 583: Wheelchair 584: Whisk 585: Whiteboard 586: Willow 587: Window 588: Window blind 589: Wine 590: Wine glass 591: Wine rack 592: Winter melon 593: Wok 594: Woman 595: Wood-burning stove 596: Woodpecker 597: Worm 598: Wrench 599: Zebra 600: Zucchini # Download script/URL (optional) --------------------------------------------------------------------------------------- download: | from ultralytics.utils import LOGGER, SETTINGS, Path, is_ubuntu, get_ubuntu_version from ultralytics.utils.checks import check_requirements, check_version check_requirements('fiftyone') if is_ubuntu() and check_version(get_ubuntu_version(), '>=22.04'): # Ubuntu>=22.04 patch https://github.com/voxel51/fiftyone/issues/2961#issuecomment-1666519347 check_requirements('fiftyone-db-ubuntu2204') import fiftyone as fo import fiftyone.zoo as foz import warnings name = 'open-images-v7' fraction = 1.0 # fraction of full dataset to use LOGGER.warning('WARNING ⚠️ Open Images V7 dataset requires at least **561 GB of free space. Starting download...') for split in 'train', 'validation': # 1743042 train, 41620 val images train = split == 'train' # Load Open Images dataset dataset = foz.load_zoo_dataset(name, split=split, label_types=['detections'], dataset_dir=Path(SETTINGS['datasets_dir']) / 'fiftyone' / name, max_samples=round((1743042 if train else 41620) * fraction)) # Define classes if train: classes = dataset.default_classes # all classes # classes = dataset.distinct('ground_truth.detections.label') # only observed classes # Export to YOLO format with warnings.catch_warnings(): warnings.filterwarnings("ignore", category=UserWarning, module="fiftyone.utils.yolo") dataset.export(export_dir=str(Path(SETTINGS['datasets_dir']) / name), dataset_type=fo.types.YOLOv5Dataset, label_field='ground_truth', split='val' if split == 'validation' else split, classes=classes, overwrite=train)