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open_images_labels.md

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Open Images 600 labels (object detection / bounding box) in alphabetical order

Training set

Labels 0 to 59 [totals] Labels 60 to 119 [totals] Labels 180 to 239 [totals] Labels 300 to 359 [totals] Labels 360 to 419 [totals] Labels 420 to 479 [totals] Labels 480 to 539 [totals] Labels 540 to 599 [totals]
Accordion [955] Bowl [4507] Envelope [177] Ladybug [734] Oven [637] Remote control [236] Spatula [64] Tomato [6254]
Adhesive tape [255] Bowling equipment [3846] Eraser [53] Lamp [3663] Owl [1663] Reptile [578] Spice rack [131] Tool [2075]
Aircraft [1898] Box [5364] Face powder [80] Land vehicle [81108] Oyster [1038] Rhinoceros [724] Spider [2033] Toothbrush [219]
Airplane [21285] Boy [87555] Facial tissue holder [20] Lantern [5429] Paddle [6951] Rifle [2540] Spoon [1709] Torch [20]
Alarm clock [169] Brassiere [1694] Falcon [1717] Laptop [9327] Palm tree [42026] Ring binder [84] Sports equipment [44900] Towel [338]
Alpaca [829] Bread [3846] Fashion accessory [91024] Lavender (Plant) [6472] Pancake [775] Rocket [918] Sports uniform [19396] Tower [67945]
Ambulance [447] Briefcase [162] Fast food [24991] Lemon [1756] Panda [882] Roller skates [5476] Squash (Plant) [375] Toy [70963]
Animal [17442] Broccoli [1128] Fax [28] Leopard [811] Paper cutter [4] Rose [12053] Squid [221] Traffic light [7426]
Ant [925] Bronze sculpture [2748] Fedora [3660] Light bulb [1816] Paper towel [210] Rugby ball [294] Squirrel [1940] Traffic sign [6112]
Antelope [1568] Brown bear [647] Filing cabinet [374] Light switch [97] Parachute [2672] Ruler [253] Stairs [5981] Train [13050]
Apple [3898] Building [178634] Fire hydrant [432] Lighthouse [1518] Parking meter [209] Salad [3088] Stapler [59] Training bench [194]
Armadillo [56] Bull [1736] Fireplace [711] Lily [2252] Parrot [2388] Salt and pepper shakers [180] Starfish [639] Treadmill [247]
Artichoke [376] Burrito [262] Fish [23195] Limousine [366] Pasta [769] Sandal [2938] Stationary bicycle [338] Tree [1051344]
Auto part [13586] Bus [11927] Flag [29246] Lion [1653] Pastry [5852] Sandwich [1157] Stethoscope [78] Tree house [110]
Axe [148] Bust [1060] Flashlight [88] Lipstick [1343] Peach [756] Saucer [2819] Stool [1254] Tripod [1446]
Backpack [1216] Butterfly [10127] Flower [345296] Lizard [2120] Pear [923] Saxophone [1208] Stop sign [394] Trombone [953]
Bagel [640] Cabbage [435] Flowerpot [22760] Lobster [597] Pen [1705] Scale [139] Strawberry [7944] Trousers [8481]
Baked goods [23010] Cabinetry [9191] Flute [362] Loveseat [631] Pencil case [132] Scarf [2303] Street light [44697] Truck [12135]
Balance beam [326] Cake [5784] Flying disc [249] Luggage and bags [2220] Pencil sharpener [21] Scissors [399] Stretcher [174] Trumpet [1546]
Ball [6845] Cake stand [337] Food [88422] Lynx [237] Penguin [4197] Scoreboard [517] Studio couch [1889] Turkey [734]
Balloon [13505] Calculator [210] Food processor [192] Magpie [145] Perfume [363] Scorpion [204] Submarine [81] Turtle [205]
Banana [1612] Camel [1340] Football [5097] Mammal [156154] Person [1034721] Screwdriver [85] Submarine sandwich [273] Umbrella [7204]
Band-aid [36] Camera [6404] Football helmet [11705] Man [1418594] Personal care [409] Sculpture [34533] Suit [110848] Unicycle [194]
Banjo [264] Can opener [7] Footwear [744474] Mango [429] Personal flotation device [3678] Sea lion [1823] Suitcase [630] Van [7720]
Barge [983] Canary [387] Fork [1687] Maple [4923] Piano [1374] Sea turtle [1132] Sun hat [6979] Vase [2468]
Barrel [2086] Candle [5886] Fountain [3691] Maracas [10] Picnic basket [425] Seafood [3063] Sunglasses [23996] Vegetable [18621]
Baseball bat [1228] Candy [2261] Fox [565] Marine invertebrates [9112] Picture frame [11957] Seahorse [314] Surfboard [2594] Vehicle [50959]
Baseball glove [2529] Cannon [1087] French fries [2114] Marine mammal [1746] Pig [1613] Seat belt [461] Sushi [2088] Vehicle registration plate [7852]
Bat (Animal) [655] Canoe [4543] French horn [1239] Measuring cup [74] Pillow [3508] Segway [565] Swan [4523] Violin [2828]
Bathroom accessory [2678] Cantaloupe [166] Frog [1608] Mechanical fan [681] Pineapple [660] Serving tray [118] Swim cap [615] Volleyball (Ball) [661]
Bathroom cabinet [358] Car [248075] Fruit [26236] Medical equipment [2060] Pitcher (Container) [347] Sewing machine [453] Swimming pool [3881] Waffle [710]
Bathtub [545] Carnivore [3501] Frying pan [377] Microphone [27272] Pizza [2008] Shark [625] Swimwear [10079] Waffle iron [31]
Beaker [168] Carrot [1456] Furniture [38527] Microwave oven [485] Pizza cutter [20] Sheep [3438] Sword [567] Wall clock [1067]
Bear [427] Cart [2755] Garden Asparagus [387] Milk [214] Plant [267913] Shelf [22899] Syringe [127] Wardrobe [238]
Bed [3563] Cassette deck [74] Gas stove [526] Miniskirt [954] Plastic bag [986] Shellfish [1287] Table [85691] Washing machine [655]
Bee [11401] Castle [4310] Giraffe [1431] Mirror [1572] Plate [5416] Shirt [7465] Table tennis racket [849] Waste container [1807]
Beehive [511] Cat [15183] Girl [197155] Missile [603] Platter [3462] Shorts [16981] Tablet computer [975] Watch [1903]
Beer [9565] Cat furniture [208] Glasses [57946] Mixer [216] Plumbing fixture [481] Shotgun [580] Tableware [41086] Watercraft [5202]
Beetle [3523] Caterpillar [884] Glove [1198] Mixing bowl [1005] Polar bear [664] Shower [235] Taco [677] Watermelon [844]
Bell pepper [802] Cattle [11603] Goat [2075] Mobile phone [6365] Pomegranate [677] Shrimp [1856] Tank [1716] Weapon [2960]
Belt [422] Ceiling fan [478] Goggles [9636] Monkey [3026] Popcorn [362] Sink [1648] Tap [1695] Whale [1014]
Bench [7229] Cello [2004] Goldfish [2204] Moths and butterflies [1857] Porch [3854] Skateboard [1810] Tart [973] Wheel [340639]
Bicycle [40161] Centipede [280] Golf ball [434] Motorcycle [13382] Porcupine [229] Ski [3505] Taxi [4199] Wheelchair [1464]
Bicycle helmet [15952] Chainsaw [130] Golf cart [595] Mouse [857] Poster [23566] Skirt [1259] Tea [1342] Whisk [180]
Bicycle wheel [59521] Chair [132483] Gondola [1868] Muffin [4608] Potato [599] Skull [2661] Teapot [632] Whiteboard [1003]
Bidet [440] Cheese [1560] Goose [8436] Mug [2272] Power plugs and sockets [290] Skunk [56] Teddy bear [1587] Willow [735]
Billboard [9823] Cheetah [715] Grape [2787] Mule [1117] Pressure cooker [14] Skyscraper [81261] Telephone [274] Window [503467]
Billiard table [912] Chest of drawers [1526] Grapefruit [1283] Mushroom [4497] Pretzel [294] Slow cooker [125] Television [3789] Window blind [570]
Binoculars [123] Chicken [3059] Grinder [14] Musical instrument [16503] Printer [263] Snack [37374] Tennis ball [502] Wine [15400]
Bird [47921] Chime [41] Guacamole [224] Musical keyboard [1771] Pumpkin [6150] Snail [943] Tennis racket [985] Wine glass [12934]
Blender [235] Chisel [33] Guitar [25896] Nail (Construction) [491] Punching bag [336] Snake [1378] Tent [6907] Wine rack [254]
Blue jay [259] Chopsticks [617] Hair dryer [27] Necklace [2735] Rabbit [1641] Snowboard [944] Tiara [411] Winter melon [43]
Boat [79113] Christmas tree [4243] Hair spray [10] Nightstand [1125] Raccoon [381] Snowman [770] Tick [143] Wok [730]
Bomb [8] Clock [1222] Hamburger [1486] Oboe [162] Racket [281] Snowmobile [366] Tie [10545] Woman [767337]
Book [41280] Closet [661] Hammer [139] Office building [4986] Radish [688] Snowplow [300] Tiger [1260] Wood-burning stove [300]
Bookcase [5307] Clothing [1438128] Hamster [546] Office supplies [6198] Ratchet (Device) [327] Soap dispenser [78] Tin can [2988] Woodpecker [515]
Boot [3132] Coat [6523] Hand dryer [70] Orange [6195] Raven [567] Sock [1425] Tire [122615] Worm [270]
Bottle [40188] Cocktail [4458] Handbag [2495] Organ (Musical Instrument) [398] Rays and skates [485] Sofa bed [1501] Toaster [73] Wrench [204]
Bottle opener [21] Cocktail shaker [27] Handgun [727] Ostrich [640] Red panda [423] Sombrero [651] Toilet [1099] Zebra [1120]
Bow and arrow [594] Coconut [874] Harbor seal [2084] Otter [752] Refrigerator [592] Sparrow [1651] Toilet paper [377] Zucchini [1098]

Train your own model by following the steps on this notebook.

As some classes don't have a lot of samples available (e.g. "Cocktail shaker" has only 27, not sure why you would want a object detector trained on this, but I'm not here to judge :D), you may need to augment your dataset. One easy option is to use colab_utils augment_dataset. You can find a usage example on this notebook.