参考文件

GitHub上的json文件

Label Meaning
0 [‘n01440764’, ‘tench’]
1 [‘n01443537’, ‘goldfish’]
2 [‘n01484850’, ‘great_white_shark’]
3 [‘n01491361’, ‘tiger_shark’]
4 [‘n01494475’, ‘hammerhead’]
5 [‘n01496331’, ‘electric_ray’]
6 [‘n01498041’, ‘stingray’]
7 [‘n01514668’, ‘cock’]
8 [‘n01514859’, ‘hen’]
9 [‘n01518878’, ‘ostrich’]
10 [‘n01530575’, ‘brambling’]
11 [‘n01531178’, ‘goldfinch’]
12 [‘n01532829’, ‘house_finch’]
13 [‘n01534433’, ‘junco’]
14 [‘n01537544’, ‘indigo_bunting’]
15 [‘n01558993’, ‘robin’]
16 [‘n01560419’, ‘bulbul’]
17 [‘n01580077’, ‘jay’]
18 [‘n01582220’, ‘magpie’]
19 [‘n01592084’, ‘chickadee’]
20 [‘n01601694’, ‘water_ouzel’]
21 [‘n01608432’, ‘kite’]
22 [‘n01614925’, ‘bald_eagle’]
23 [‘n01616318’, ‘vulture’]
24 [‘n01622779’, ‘great_grey_owl’]
25 [‘n01629819’, ‘European_fire_salamander’]
26 [‘n01630670’, ‘common_newt’]
27 [‘n01631663’, ‘eft’]
28 [‘n01632458’, ‘spotted_salamander’]
29 [‘n01632777’, ‘axolotl’]
30 [‘n01641577’, ‘bullfrog’]
31 [‘n01644373’, ‘tree_frog’]
32 [‘n01644900’, ‘tailed_frog’]
33 [‘n01664065’, ‘loggerhead’]
34 [‘n01665541’, ‘leatherback_turtle’]
35 [‘n01667114’, ‘mud_turtle’]
36 [‘n01667778’, ‘terrapin’]
37 [‘n01669191’, ‘box_turtle’]
38 [‘n01675722’, ‘banded_gecko’]
39 [‘n01677366’, ‘common_iguana’]
40 [‘n01682714’, ‘American_chameleon’]
41 [‘n01685808’, ‘whiptail’]
42 [‘n01687978’, ‘agama’]
43 [‘n01688243’, ‘frilled_lizard’]
44 [‘n01689811’, ‘alligator_lizard’]
45 [‘n01692333’, ‘Gila_monster’]
46 [‘n01693334’, ‘green_lizard’]
47 [‘n01694178’, ‘African_chameleon’]
48 [‘n01695060’, ‘Komodo_dragon’]
49 [‘n01697457’, ‘African_crocodile’]
50 [‘n01698640’, ‘American_alligator’]
51 [‘n01704323’, ‘triceratops’]
52 [‘n01728572’, ‘thunder_snake’]
53 [‘n01728920’, ‘ringneck_snake’]
54 [‘n01729322’, ‘hognose_snake’]
55 [‘n01729977’, ‘green_snake’]
56 [‘n01734418’, ‘king_snake’]
57 [‘n01735189’, ‘garter_snake’]
58 [‘n01737021’, ‘water_snake’]
59 [‘n01739381’, ‘vine_snake’]
60 [‘n01740131’, ‘night_snake’]
61 [‘n01742172’, ‘boa_constrictor’]
62 [‘n01744401’, ‘rock_python’]
63 [‘n01748264’, ‘Indian_cobra’]
64 [‘n01749939’, ‘green_mamba’]
65 [‘n01751748’, ‘sea_snake’]
66 [‘n01753488’, ‘horned_viper’]
67 [‘n01755581’, ‘diamondback’]
68 [‘n01756291’, ‘sidewinder’]
69 [‘n01768244’, ‘trilobite’]
70 [‘n01770081’, ‘harvestman’]
71 [‘n01770393’, ‘scorpion’]
72 [‘n01773157’, ‘black_and_gold_garden_spider’]
73 [‘n01773549’, ‘barn_spider’]
74 [‘n01773797’, ‘garden_spider’]
75 [‘n01774384’, ‘black_widow’]
76 [‘n01774750’, ‘tarantula’]
77 [‘n01775062’, ‘wolf_spider’]
78 [‘n01776313’, ‘tick’]
79 [‘n01784675’, ‘centipede’]
80 [‘n01795545’, ‘black_grouse’]
81 [‘n01796340’, ‘ptarmigan’]
82 [‘n01797886’, ‘ruffed_grouse’]
83 [‘n01798484’, ‘prairie_chicken’]
84 [‘n01806143’, ‘peacock’]
85 [‘n01806567’, ‘quail’]
86 [‘n01807496’, ‘partridge’]
87 [‘n01817953’, ‘African_grey’]
88 [‘n01818515’, ‘macaw’]
89 [‘n01819313’, ‘sulphur-crested_cockatoo’]
90 [‘n01820546’, ‘lorikeet’]
91 [‘n01824575’, ‘coucal’]
92 [‘n01828970’, ‘bee_eater’]
93 [‘n01829413’, ‘hornbill’]
94 [‘n01833805’, ‘hummingbird’]
95 [‘n01843065’, ‘jacamar’]
96 [‘n01843383’, ‘toucan’]
97 [‘n01847000’, ‘drake’]
98 [‘n01855032’, ‘red-breasted_merganser’]
99 [‘n01855672’, ‘goose’]
100 [‘n01860187’, ‘black_swan’]
101 [‘n01871265’, ‘tusker’]
102 [‘n01872401’, ‘echidna’]
103 [‘n01873310’, ‘platypus’]
104 [‘n01877812’, ‘wallaby’]
105 [‘n01882714’, ‘koala’]
106 [‘n01883070’, ‘wombat’]
107 [‘n01910747’, ‘jellyfish’]
108 [‘n01914609’, ‘sea_anemone’]
109 [‘n01917289’, ‘brain_coral’]
110 [‘n01924916’, ‘flatworm’]
111 [‘n01930112’, ‘nematode’]
112 [‘n01943899’, ‘conch’]
113 [‘n01944390’, ‘snail’]
114 [‘n01945685’, ‘slug’]
115 [‘n01950731’, ‘sea_slug’]
116 [‘n01955084’, ‘chiton’]
117 [‘n01968897’, ‘chambered_nautilus’]
118 [‘n01978287’, ‘Dungeness_crab’]
119 [‘n01978455’, ‘rock_crab’]
120 [‘n01980166’, ‘fiddler_crab’]
121 [‘n01981276’, ‘king_crab’]
122 [‘n01983481’, ‘American_lobster’]
123 [‘n01984695’, ‘spiny_lobster’]
124 [‘n01985128’, ‘crayfish’]
125 [‘n01986214’, ‘hermit_crab’]
126 [‘n01990800’, ‘isopod’]
127 [‘n02002556’, ‘white_stork’]
128 [‘n02002724’, ‘black_stork’]
129 [‘n02006656’, ‘spoonbill’]
130 [‘n02007558’, ‘flamingo’]
131 [‘n02009229’, ‘little_blue_heron’]
132 [‘n02009912’, ‘American_egret’]
133 [‘n02011460’, ‘bittern’]
134 [‘n02012849’, ‘crane’]
135 [‘n02013706’, ‘limpkin’]
136 [‘n02017213’, ‘European_gallinule’]
137 [‘n02018207’, ‘American_coot’]
138 [‘n02018795’, ‘bustard’]
139 [‘n02025239’, ‘ruddy_turnstone’]
140 [‘n02027492’, ‘red-backed_sandpiper’]
141 [‘n02028035’, ‘redshank’]
142 [‘n02033041’, ‘dowitcher’]
143 [‘n02037110’, ‘oystercatcher’]
144 [‘n02051845’, ‘pelican’]
145 [‘n02056570’, ‘king_penguin’]
146 [‘n02058221’, ‘albatross’]
147 [‘n02066245’, ‘grey_whale’]
148 [‘n02071294’, ‘killer_whale’]
149 [‘n02074367’, ‘dugong’]
150 [‘n02077923’, ‘sea_lion’]
151 [‘n02085620’, ‘Chihuahua’]
152 [‘n02085782’, ‘Japanese_spaniel’]
153 [‘n02085936’, ‘Maltese_dog’]
154 [‘n02086079’, ‘Pekinese’]
155 [‘n02086240’, ‘Shih-Tzu’]
156 [‘n02086646’, ‘Blenheim_spaniel’]
157 [‘n02086910’, ‘papillon’]
158 [‘n02087046’, ‘toy_terrier’]
159 [‘n02087394’, ‘Rhodesian_ridgeback’]
160 [‘n02088094’, ‘Afghan_hound’]
161 [‘n02088238’, ‘basset’]
162 [‘n02088364’, ‘beagle’]
163 [‘n02088466’, ‘bloodhound’]
164 [‘n02088632’, ‘bluetick’]
165 [‘n02089078’, ‘black-and-tan_coonhound’]
166 [‘n02089867’, ‘Walker_hound’]
167 [‘n02089973’, ‘English_foxhound’]
168 [‘n02090379’, ‘redbone’]
169 [‘n02090622’, ‘borzoi’]
170 [‘n02090721’, ‘Irish_wolfhound’]
171 [‘n02091032’, ‘Italian_greyhound’]
172 [‘n02091134’, ‘whippet’]
173 [‘n02091244’, ‘Ibizan_hound’]
174 [‘n02091467’, ‘Norwegian_elkhound’]
175 [‘n02091635’, ‘otterhound’]
176 [‘n02091831’, ‘Saluki’]
177 [‘n02092002’, ‘Scottish_deerhound’]
178 [‘n02092339’, ‘Weimaraner’]
179 [‘n02093256’, ‘Staffordshire_bullterrier’]
180 [‘n02093428’, ‘American_Staffordshire_terrier’]
181 [‘n02093647’, ‘Bedlington_terrier’]
182 [‘n02093754’, ‘Border_terrier’]
183 [‘n02093859’, ‘Kerry_blue_terrier’]
184 [‘n02093991’, ‘Irish_terrier’]
185 [‘n02094114’, ‘Norfolk_terrier’]
186 [‘n02094258’, ‘Norwich_terrier’]
187 [‘n02094433’, ‘Yorkshire_terrier’]
188 [‘n02095314’, ‘wire-haired_fox_terrier’]
189 [‘n02095570’, ‘Lakeland_terrier’]
190 [‘n02095889’, ‘Sealyham_terrier’]
191 [‘n02096051’, ‘Airedale’]
192 [‘n02096177’, ‘cairn’]
193 [‘n02096294’, ‘Australian_terrier’]
194 [‘n02096437’, ‘Dandie_Dinmont’]
195 [‘n02096585’, ‘Boston_bull’]
196 [‘n02097047’, ‘miniature_schnauzer’]
197 [‘n02097130’, ‘giant_schnauzer’]
198 [‘n02097209’, ‘standard_schnauzer’]
199 [‘n02097298’, ‘Scotch_terrier’]
200 [‘n02097474’, ‘Tibetan_terrier’]
201 [‘n02097658’, ‘silky_terrier’]
202 [‘n02098105’, ‘soft-coated_wheaten_terrier’]
203 [‘n02098286’, ‘West_Highland_white_terrier’]
204 [‘n02098413’, ‘Lhasa’]
205 [‘n02099267’, ‘flat-coated_retriever’]
206 [‘n02099429’, ‘curly-coated_retriever’]
207 [‘n02099601’, ‘golden_retriever’]
208 [‘n02099712’, ‘Labrador_retriever’]
209 [‘n02099849’, ‘Chesapeake_Bay_retriever’]
210 [‘n02100236’, ‘German_short-haired_pointer’]
211 [‘n02100583’, ‘vizsla’]
212 [‘n02100735’, ‘English_setter’]
213 [‘n02100877’, ‘Irish_setter’]
214 [‘n02101006’, ‘Gordon_setter’]
215 [‘n02101388’, ‘Brittany_spaniel’]
216 [‘n02101556’, ‘clumber’]
217 [‘n02102040’, ‘English_springer’]
218 [‘n02102177’, ‘Welsh_springer_spaniel’]
219 [‘n02102318’, ‘cocker_spaniel’]
220 [‘n02102480’, ‘Sussex_spaniel’]
221 [‘n02102973’, ‘Irish_water_spaniel’]
222 [‘n02104029’, ‘kuvasz’]
223 [‘n02104365’, ‘schipperke’]
224 [‘n02105056’, ‘groenendael’]
225 [‘n02105162’, ‘malinois’]
226 [‘n02105251’, ‘briard’]
227 [‘n02105412’, ‘kelpie’]
228 [‘n02105505’, ‘komondor’]
229 [‘n02105641’, ‘Old_English_sheepdog’]
230 [‘n02105855’, ‘Shetland_sheepdog’]
231 [‘n02106030’, ‘collie’]
232 [‘n02106166’, ‘Border_collie’]
233 [‘n02106382’, ‘Bouvier_des_Flandres’]
234 [‘n02106550’, ‘Rottweiler’]
235 [‘n02106662’, ‘German_shepherd’]
236 [‘n02107142’, ‘Doberman’]
237 [‘n02107312’, ‘miniature_pinscher’]
238 [‘n02107574’, ‘Greater_Swiss_Mountain_dog’]
239 [‘n02107683’, ‘Bernese_mountain_dog’]
240 [‘n02107908’, ‘Appenzeller’]
241 [‘n02108000’, ‘EntleBucher’]
242 [‘n02108089’, ‘boxer’]
243 [‘n02108422’, ‘bull_mastiff’]
244 [‘n02108551’, ‘Tibetan_mastiff’]
245 [‘n02108915’, ‘French_bulldog’]
246 [‘n02109047’, ‘Great_Dane’]
247 [‘n02109525’, ‘Saint_Bernard’]
248 [‘n02109961’, ‘Eskimo_dog’]
249 [‘n02110063’, ‘malamute’]
250 [‘n02110185’, ‘Siberian_husky’]
251 [‘n02110341’, ‘dalmatian’]
252 [‘n02110627’, ‘affenpinscher’]
253 [‘n02110806’, ‘basenji’]
254 [‘n02110958’, ‘pug’]
255 [‘n02111129’, ‘Leonberg’]
256 [‘n02111277’, ‘Newfoundland’]
257 [‘n02111500’, ‘Great_Pyrenees’]
258 [‘n02111889’, ‘Samoyed’]
259 [‘n02112018’, ‘Pomeranian’]
260 [‘n02112137’, ‘chow’]
261 [‘n02112350’, ‘keeshond’]
262 [‘n02112706’, ‘Brabancon_griffon’]
263 [‘n02113023’, ‘Pembroke’]
264 [‘n02113186’, ‘Cardigan’]
265 [‘n02113624’, ‘toy_poodle’]
266 [‘n02113712’, ‘miniature_poodle’]
267 [‘n02113799’, ‘standard_poodle’]
268 [‘n02113978’, ‘Mexican_hairless’]
269 [‘n02114367’, ‘timber_wolf’]
270 [‘n02114548’, ‘white_wolf’]
271 [‘n02114712’, ‘red_wolf’]
272 [‘n02114855’, ‘coyote’]
273 [‘n02115641’, ‘dingo’]
274 [‘n02115913’, ‘dhole’]
275 [‘n02116738’, ‘African_hunting_dog’]
276 [‘n02117135’, ‘hyena’]
277 [‘n02119022’, ‘red_fox’]
278 [‘n02119789’, ‘kit_fox’]
279 [‘n02120079’, ‘Arctic_fox’]
280 [‘n02120505’, ‘grey_fox’]
281 [‘n02123045’, ‘tabby’]
282 [‘n02123159’, ‘tiger_cat’]
283 [‘n02123394’, ‘Persian_cat’]
284 [‘n02123597’, ‘Siamese_cat’]
285 [‘n02124075’, ‘Egyptian_cat’]
286 [‘n02125311’, ‘cougar’]
287 [‘n02127052’, ‘lynx’]
288 [‘n02128385’, ‘leopard’]
289 [‘n02128757’, ‘snow_leopard’]
290 [‘n02128925’, ‘jaguar’]
291 [‘n02129165’, ‘lion’]
292 [‘n02129604’, ‘tiger’]
293 [‘n02130308’, ‘cheetah’]
294 [‘n02132136’, ‘brown_bear’]
295 [‘n02133161’, ‘American_black_bear’]
296 [‘n02134084’, ‘ice_bear’]
297 [‘n02134418’, ‘sloth_bear’]
298 [‘n02137549’, ‘mongoose’]
299 [‘n02138441’, ‘meerkat’]
300 [‘n02165105’, ‘tiger_beetle’]
301 [‘n02165456’, ‘ladybug’]
302 [‘n02167151’, ‘ground_beetle’]
303 [‘n02168699’, ‘long-horned_beetle’]
304 [‘n02169497’, ‘leaf_beetle’]
305 [‘n02172182’, ‘dung_beetle’]
306 [‘n02174001’, ‘rhinoceros_beetle’]
307 [‘n02177972’, ‘weevil’]
308 [‘n02190166’, ‘fly’]
309 [‘n02206856’, ‘bee’]
310 [‘n02219486’, ‘ant’]
311 [‘n02226429’, ‘grasshopper’]
312 [‘n02229544’, ‘cricket’]
313 [‘n02231487’, ‘walking_stick’]
314 [‘n02233338’, ‘cockroach’]
315 [‘n02236044’, ‘mantis’]
316 [‘n02256656’, ‘cicada’]
317 [‘n02259212’, ‘leafhopper’]
318 [‘n02264363’, ‘lacewing’]
319 [‘n02268443’, ‘dragonfly’]
320 [‘n02268853’, ‘damselfly’]
321 [‘n02276258’, ‘admiral’]
322 [‘n02277742’, ‘ringlet’]
323 [‘n02279972’, ‘monarch’]
324 [‘n02280649’, ‘cabbage_butterfly’]
325 [‘n02281406’, ‘sulphur_butterfly’]
326 [‘n02281787’, ‘lycaenid’]
327 [‘n02317335’, ‘starfish’]
328 [‘n02319095’, ‘sea_urchin’]
329 [‘n02321529’, ‘sea_cucumber’]
330 [‘n02325366’, ‘wood_rabbit’]
331 [‘n02326432’, ‘hare’]
332 [‘n02328150’, ‘Angora’]
333 [‘n02342885’, ‘hamster’]
334 [‘n02346627’, ‘porcupine’]
335 [‘n02356798’, ‘fox_squirrel’]
336 [‘n02361337’, ‘marmot’]
337 [‘n02363005’, ‘beaver’]
338 [‘n02364673’, ‘guinea_pig’]
339 [‘n02389026’, ‘sorrel’]
340 [‘n02391049’, ‘zebra’]
341 [‘n02395406’, ‘hog’]
342 [‘n02396427’, ‘wild_boar’]
343 [‘n02397096’, ‘warthog’]
344 [‘n02398521’, ‘hippopotamus’]
345 [‘n02403003’, ‘ox’]
346 [‘n02408429’, ‘water_buffalo’]
347 [‘n02410509’, ‘bison’]
348 [‘n02412080’, ‘ram’]
349 [‘n02415577’, ‘bighorn’]
350 [‘n02417914’, ‘ibex’]
351 [‘n02422106’, ‘hartebeest’]
352 [‘n02422699’, ‘impala’]
353 [‘n02423022’, ‘gazelle’]
354 [‘n02437312’, ‘Arabian_camel’]
355 [‘n02437616’, ‘llama’]
356 [‘n02441942’, ‘weasel’]
357 [‘n02442845’, ‘mink’]
358 [‘n02443114’, ‘polecat’]
359 [‘n02443484’, ‘black-footed_ferret’]
360 [‘n02444819’, ‘otter’]
361 [‘n02445715’, ‘skunk’]
362 [‘n02447366’, ‘badger’]
363 [‘n02454379’, ‘armadillo’]
364 [‘n02457408’, ‘three-toed_sloth’]
365 [‘n02480495’, ‘orangutan’]
366 [‘n02480855’, ‘gorilla’]
367 [‘n02481823’, ‘chimpanzee’]
368 [‘n02483362’, ‘gibbon’]
369 [‘n02483708’, ‘siamang’]
370 [‘n02484975’, ‘guenon’]
371 [‘n02486261’, ‘patas’]
372 [‘n02486410’, ‘baboon’]
373 [‘n02487347’, ‘macaque’]
374 [‘n02488291’, ‘langur’]
375 [‘n02488702’, ‘colobus’]
376 [‘n02489166’, ‘proboscis_monkey’]
377 [‘n02490219’, ‘marmoset’]
378 [‘n02492035’, ‘capuchin’]
379 [‘n02492660’, ‘howler_monkey’]
380 [‘n02493509’, ‘titi’]
381 [‘n02493793’, ‘spider_monkey’]
382 [‘n02494079’, ‘squirrel_monkey’]
383 [‘n02497673’, ‘Madagascar_cat’]
384 [‘n02500267’, ‘indri’]
385 [‘n02504013’, ‘Indian_elephant’]
386 [‘n02504458’, ‘African_elephant’]
387 [‘n02509815’, ‘lesser_panda’]
388 [‘n02510455’, ‘giant_panda’]
389 [‘n02514041’, ‘barracouta’]
390 [‘n02526121’, ‘eel’]
391 [‘n02536864’, ‘coho’]
392 [‘n02606052’, ‘rock_beauty’]
393 [‘n02607072’, ‘anemone_fish’]
394 [‘n02640242’, ‘sturgeon’]
395 [‘n02641379’, ‘gar’]
396 [‘n02643566’, ‘lionfish’]
397 [‘n02655020’, ‘puffer’]
398 [‘n02666196’, ‘abacus’]
399 [‘n02667093’, ‘abaya’]
400 [‘n02669723’, ‘academic_gown’]
401 [‘n02672831’, ‘accordion’]
402 [‘n02676566’, ‘acoustic_guitar’]
403 [‘n02687172’, ‘aircraft_carrier’]
404 [‘n02690373’, ‘airliner’]
405 [‘n02692877’, ‘airship’]
406 [‘n02699494’, ‘altar’]
407 [‘n02701002’, ‘ambulance’]
408 [‘n02704792’, ‘amphibian’]
409 [‘n02708093’, ‘analog_clock’]
410 [‘n02727426’, ‘apiary’]
411 [‘n02730930’, ‘apron’]
412 [‘n02747177’, ‘ashcan’]
413 [‘n02749479’, ‘assault_rifle’]
414 [‘n02769748’, ‘backpack’]
415 [‘n02776631’, ‘bakery’]
416 [‘n02777292’, ‘balance_beam’]
417 [‘n02782093’, ‘balloon’]
418 [‘n02783161’, ‘ballpoint’]
419 [‘n02786058’, ‘Band_Aid’]
420 [‘n02787622’, ‘banjo’]
421 [‘n02788148’, ‘bannister’]
422 [‘n02790996’, ‘barbell’]
423 [‘n02791124’, ‘barber_chair’]
424 [‘n02791270’, ‘barbershop’]
425 [‘n02793495’, ‘barn’]
426 [‘n02794156’, ‘barometer’]
427 [‘n02795169’, ‘barrel’]
428 [‘n02797295’, ‘barrow’]
429 [‘n02799071’, ‘baseball’]
430 [‘n02802426’, ‘basketball’]
431 [‘n02804414’, ‘bassinet’]
432 [‘n02804610’, ‘bassoon’]
433 [‘n02807133’, ‘bathing_cap’]
434 [‘n02808304’, ‘bath_towel’]
435 [‘n02808440’, ‘bathtub’]
436 [‘n02814533’, ‘beach_wagon’]
437 [‘n02814860’, ‘beacon’]
438 [‘n02815834’, ‘beaker’]
439 [‘n02817516’, ‘bearskin’]
440 [‘n02823428’, ‘beer_bottle’]
441 [‘n02823750’, ‘beer_glass’]
442 [‘n02825657’, ‘bell_cote’]
443 [‘n02834397’, ‘bib’]
444 [‘n02835271’, ‘bicycle-built-for-two’]
445 [‘n02837789’, ‘bikini’]
446 [‘n02840245’, ‘binder’]
447 [‘n02841315’, ‘binoculars’]
448 [‘n02843684’, ‘birdhouse’]
449 [‘n02859443’, ‘boathouse’]
450 [‘n02860847’, ‘bobsled’]
451 [‘n02865351’, ‘bolo_tie’]
452 [‘n02869837’, ‘bonnet’]
453 [‘n02870880’, ‘bookcase’]
454 [‘n02871525’, ‘bookshop’]
455 [‘n02877765’, ‘bottlecap’]
456 [‘n02879718’, ‘bow’]
457 [‘n02883205’, ‘bow_tie’]
458 [‘n02892201’, ‘brass’]
459 [‘n02892767’, ‘brassiere’]
460 [‘n02894605’, ‘breakwater’]
461 [‘n02895154’, ‘breastplate’]
462 [‘n02906734’, ‘broom’]
463 [‘n02909870’, ‘bucket’]
464 [‘n02910353’, ‘buckle’]
465 [‘n02916936’, ‘bulletproof_vest’]
466 [‘n02917067’, ‘bullet_train’]
467 [‘n02927161’, ‘butcher_shop’]
468 [‘n02930766’, ‘cab’]
469 [‘n02939185’, ‘caldron’]
470 [‘n02948072’, ‘candle’]
471 [‘n02950826’, ‘cannon’]
472 [‘n02951358’, ‘canoe’]
473 [‘n02951585’, ‘can_opener’]
474 [‘n02963159’, ‘cardigan’]
475 [‘n02965783’, ‘car_mirror’]
476 [‘n02966193’, ‘carousel’]
477 [‘n02966687’, “carpenter’s_kit”]
478 [‘n02971356’, ‘carton’]
479 [‘n02974003’, ‘car_wheel’]
480 [‘n02977058’, ‘cash_machine’]
481 [‘n02978881’, ‘cassette’]
482 [‘n02979186’, ‘cassette_player’]
483 [‘n02980441’, ‘castle’]
484 [‘n02981792’, ‘catamaran’]
485 [‘n02988304’, ‘CD_player’]
486 [‘n02992211’, ‘cello’]
487 [‘n02992529’, ‘cellular_telephone’]
488 [‘n02999410’, ‘chain’]
489 [‘n03000134’, ‘chainlink_fence’]
490 [‘n03000247’, ‘chain_mail’]
491 [‘n03000684’, ‘chain_saw’]
492 [‘n03014705’, ‘chest’]
493 [‘n03016953’, ‘chiffonier’]
494 [‘n03017168’, ‘chime’]
495 [‘n03018349’, ‘china_cabinet’]
496 [‘n03026506’, ‘Christmas_stocking’]
497 [‘n03028079’, ‘church’]
498 [‘n03032252’, ‘cinema’]
499 [‘n03041632’, ‘cleaver’]
500 [‘n03042490’, ‘cliff_dwelling’]
501 [‘n03045698’, ‘cloak’]
502 [‘n03047690’, ‘clog’]
503 [‘n03062245’, ‘cocktail_shaker’]
504 [‘n03063599’, ‘coffee_mug’]
505 [‘n03063689’, ‘coffeepot’]
506 [‘n03065424’, ‘coil’]
507 [‘n03075370’, ‘combination_lock’]
508 [‘n03085013’, ‘computer_keyboard’]
509 [‘n03089624’, ‘confectionery’]
510 [‘n03095699’, ‘container_ship’]
511 [‘n03100240’, ‘convertible’]
512 [‘n03109150’, ‘corkscrew’]
513 [‘n03110669’, ‘cornet’]
514 [‘n03124043’, ‘cowboy_boot’]
515 [‘n03124170’, ‘cowboy_hat’]
516 [‘n03125729’, ‘cradle’]
517 [‘n03126707’, ‘crane’]
518 [‘n03127747’, ‘crash_helmet’]
519 [‘n03127925’, ‘crate’]
520 [‘n03131574’, ‘crib’]
521 [‘n03133878’, ‘Crock_Pot’]
522 [‘n03134739’, ‘croquet_ball’]
523 [‘n03141823’, ‘crutch’]
524 [‘n03146219’, ‘cuirass’]
525 [‘n03160309’, ‘dam’]
526 [‘n03179701’, ‘desk’]
527 [‘n03180011’, ‘desktop_computer’]
528 [‘n03187595’, ‘dial_telephone’]
529 [‘n03188531’, ‘diaper’]
530 [‘n03196217’, ‘digital_clock’]
531 [‘n03197337’, ‘digital_watch’]
532 [‘n03201208’, ‘dining_table’]
533 [‘n03207743’, ‘dishrag’]
534 [‘n03207941’, ‘dishwasher’]
535 [‘n03208938’, ‘disk_brake’]
536 [‘n03216828’, ‘dock’]
537 [‘n03218198’, ‘dogsled’]
538 [‘n03220513’, ‘dome’]
539 [‘n03223299’, ‘doormat’]
540 [‘n03240683’, ‘drilling_platform’]
541 [‘n03249569’, ‘drum’]
542 [‘n03250847’, ‘drumstick’]
543 [‘n03255030’, ‘dumbbell’]
544 [‘n03259280’, ‘Dutch_oven’]
545 [‘n03271574’, ‘electric_fan’]
546 [‘n03272010’, ‘electric_guitar’]
547 [‘n03272562’, ‘electric_locomotive’]
548 [‘n03290653’, ‘entertainment_center’]
549 [‘n03291819’, ‘envelope’]
550 [‘n03297495’, ‘espresso_maker’]
551 [‘n03314780’, ‘face_powder’]
552 [‘n03325584’, ‘feather_boa’]
553 [‘n03337140’, ‘file’]
554 [‘n03344393’, ‘fireboat’]
555 [‘n03345487’, ‘fire_engine’]
556 [‘n03347037’, ‘fire_screen’]
557 [‘n03355925’, ‘flagpole’]
558 [‘n03372029’, ‘flute’]
559 [‘n03376595’, ‘folding_chair’]
560 [‘n03379051’, ‘football_helmet’]
561 [‘n03384352’, ‘forklift’]
562 [‘n03388043’, ‘fountain’]
563 [‘n03388183’, ‘fountain_pen’]
564 [‘n03388549’, ‘four-poster’]
565 [‘n03393912’, ‘freight_car’]
566 [‘n03394916’, ‘French_horn’]
567 [‘n03400231’, ‘frying_pan’]
568 [‘n03404251’, ‘fur_coat’]
569 [‘n03417042’, ‘garbage_truck’]
570 [‘n03424325’, ‘gasmask’]
571 [‘n03425413’, ‘gas_pump’]
572 [‘n03443371’, ‘goblet’]
573 [‘n03444034’, ‘go-kart’]
574 [‘n03445777’, ‘golf_ball’]
575 [‘n03445924’, ‘golfcart’]
576 [‘n03447447’, ‘gondola’]
577 [‘n03447721’, ‘gong’]
578 [‘n03450230’, ‘gown’]
579 [‘n03452741’, ‘grand_piano’]
580 [‘n03457902’, ‘greenhouse’]
581 [‘n03459775’, ‘grille’]
582 [‘n03461385’, ‘grocery_store’]
583 [‘n03467068’, ‘guillotine’]
584 [‘n03476684’, ‘hair_slide’]
585 [‘n03476991’, ‘hair_spray’]
586 [‘n03478589’, ‘half_track’]
587 [‘n03481172’, ‘hammer’]
588 [‘n03482405’, ‘hamper’]
589 [‘n03483316’, ‘hand_blower’]
590 [‘n03485407’, ‘hand-held_computer’]
591 [‘n03485794’, ‘handkerchief’]
592 [‘n03492542’, ‘hard_disc’]
593 [‘n03494278’, ‘harmonica’]
594 [‘n03495258’, ‘harp’]
595 [‘n03496892’, ‘harvester’]
596 [‘n03498962’, ‘hatchet’]
597 [‘n03527444’, ‘holster’]
598 [‘n03529860’, ‘home_theater’]
599 [‘n03530642’, ‘honeycomb’]
600 [‘n03532672’, ‘hook’]
601 [‘n03534580’, ‘hoopskirt’]
602 [‘n03535780’, ‘horizontal_bar’]
603 [‘n03538406’, ‘horse_cart’]
604 [‘n03544143’, ‘hourglass’]
605 [‘n03584254’, ‘iPod’]
606 [‘n03584829’, ‘iron’]
607 [‘n03590841’, “jack-o’-lantern”]
608 [‘n03594734’, ‘jean’]
609 [‘n03594945’, ‘jeep’]
610 [‘n03595614’, ‘jersey’]
611 [‘n03598930’, ‘jigsaw_puzzle’]
612 [‘n03599486’, ‘jinrikisha’]
613 [‘n03602883’, ‘joystick’]
614 [‘n03617480’, ‘kimono’]
615 [‘n03623198’, ‘knee_pad’]
616 [‘n03627232’, ‘knot’]
617 [‘n03630383’, ‘lab_coat’]
618 [‘n03633091’, ‘ladle’]
619 [‘n03637318’, ‘lampshade’]
620 [‘n03642806’, ‘laptop’]
621 [‘n03649909’, ‘lawn_mower’]
622 [‘n03657121’, ‘lens_cap’]
623 [‘n03658185’, ‘letter_opener’]
624 [‘n03661043’, ‘library’]
625 [‘n03662601’, ‘lifeboat’]
626 [‘n03666591’, ‘lighter’]
627 [‘n03670208’, ‘limousine’]
628 [‘n03673027’, ‘liner’]
629 [‘n03676483’, ‘lipstick’]
630 [‘n03680355’, ‘Loafer’]
631 [‘n03690938’, ‘lotion’]
632 [‘n03691459’, ‘loudspeaker’]
633 [‘n03692522’, ‘loupe’]
634 [‘n03697007’, ‘lumbermill’]
635 [‘n03706229’, ‘magnetic_compass’]
636 [‘n03709823’, ‘mailbag’]
637 [‘n03710193’, ‘mailbox’]
638 [‘n03710637’, ‘maillot’]
639 [‘n03710721’, ‘maillot’]
640 [‘n03717622’, ‘manhole_cover’]
641 [‘n03720891’, ‘maraca’]
642 [‘n03721384’, ‘marimba’]
643 [‘n03724870’, ‘mask’]
644 [‘n03729826’, ‘matchstick’]
645 [‘n03733131’, ‘maypole’]
646 [‘n03733281’, ‘maze’]
647 [‘n03733805’, ‘measuring_cup’]
648 [‘n03742115’, ‘medicine_chest’]
649 [‘n03743016’, ‘megalith’]
650 [‘n03759954’, ‘microphone’]
651 [‘n03761084’, ‘microwave’]
652 [‘n03763968’, ‘military_uniform’]
653 [‘n03764736’, ‘milk_can’]
654 [‘n03769881’, ‘minibus’]
655 [‘n03770439’, ‘miniskirt’]
656 [‘n03770679’, ‘minivan’]
657 [‘n03773504’, ‘missile’]
658 [‘n03775071’, ‘mitten’]
659 [‘n03775546’, ‘mixing_bowl’]
660 [‘n03776460’, ‘mobile_home’]
661 [‘n03777568’, ‘Model_T’]
662 [‘n03777754’, ‘modem’]
663 [‘n03781244’, ‘monastery’]
664 [‘n03782006’, ‘monitor’]
665 [‘n03785016’, ‘moped’]
666 [‘n03786901’, ‘mortar’]
667 [‘n03787032’, ‘mortarboard’]
668 [‘n03788195’, ‘mosque’]
669 [‘n03788365’, ‘mosquito_net’]
670 [‘n03791053’, ‘motor_scooter’]
671 [‘n03792782’, ‘mountain_bike’]
672 [‘n03792972’, ‘mountain_tent’]
673 [‘n03793489’, ‘mouse’]
674 [‘n03794056’, ‘mousetrap’]
675 [‘n03796401’, ‘moving_van’]
676 [‘n03803284’, ‘muzzle’]
677 [‘n03804744’, ‘nail’]
678 [‘n03814639’, ‘neck_brace’]
679 [‘n03814906’, ‘necklace’]
680 [‘n03825788’, ‘nipple’]
681 [‘n03832673’, ‘notebook’]
682 [‘n03837869’, ‘obelisk’]
683 [‘n03838899’, ‘oboe’]
684 [‘n03840681’, ‘ocarina’]
685 [‘n03841143’, ‘odometer’]
686 [‘n03843555’, ‘oil_filter’]
687 [‘n03854065’, ‘organ’]
688 [‘n03857828’, ‘oscilloscope’]
689 [‘n03866082’, ‘overskirt’]
690 [‘n03868242’, ‘oxcart’]
691 [‘n03868863’, ‘oxygen_mask’]
692 [‘n03871628’, ‘packet’]
693 [‘n03873416’, ‘paddle’]
694 [‘n03874293’, ‘paddlewheel’]
695 [‘n03874599’, ‘padlock’]
696 [‘n03876231’, ‘paintbrush’]
697 [‘n03877472’, ‘pajama’]
698 [‘n03877845’, ‘palace’]
699 [‘n03884397’, ‘panpipe’]
700 [‘n03887697’, ‘paper_towel’]
701 [‘n03888257’, ‘parachute’]
702 [‘n03888605’, ‘parallel_bars’]
703 [‘n03891251’, ‘park_bench’]
704 [‘n03891332’, ‘parking_meter’]
705 [‘n03895866’, ‘passenger_car’]
706 [‘n03899768’, ‘patio’]
707 [‘n03902125’, ‘pay-phone’]
708 [‘n03903868’, ‘pedestal’]
709 [‘n03908618’, ‘pencil_box’]
710 [‘n03908714’, ‘pencil_sharpener’]
711 [‘n03916031’, ‘perfume’]
712 [‘n03920288’, ‘Petri_dish’]
713 [‘n03924679’, ‘photocopier’]
714 [‘n03929660’, ‘pick’]
715 [‘n03929855’, ‘pickelhaube’]
716 [‘n03930313’, ‘picket_fence’]
717 [‘n03930630’, ‘pickup’]
718 [‘n03933933’, ‘pier’]
719 [‘n03935335’, ‘piggy_bank’]
720 [‘n03937543’, ‘pill_bottle’]
721 [‘n03938244’, ‘pillow’]
722 [‘n03942813’, ‘ping-pong_ball’]
723 [‘n03944341’, ‘pinwheel’]
724 [‘n03947888’, ‘pirate’]
725 [‘n03950228’, ‘pitcher’]
726 [‘n03954731’, ‘plane’]
727 [‘n03956157’, ‘planetarium’]
728 [‘n03958227’, ‘plastic_bag’]
729 [‘n03961711’, ‘plate_rack’]
730 [‘n03967562’, ‘plow’]
731 [‘n03970156’, ‘plunger’]
732 [‘n03976467’, ‘Polaroid_camera’]
733 [‘n03976657’, ‘pole’]
734 [‘n03977966’, ‘police_van’]
735 [‘n03980874’, ‘poncho’]
736 [‘n03982430’, ‘pool_table’]
737 [‘n03983396’, ‘pop_bottle’]
738 [‘n03991062’, ‘pot’]
739 [‘n03992509’, “potter’s_wheel”]
740 [‘n03995372’, ‘power_drill’]
741 [‘n03998194’, ‘prayer_rug’]
742 [‘n04004767’, ‘printer’]
743 [‘n04005630’, ‘prison’]
744 [‘n04008634’, ‘projectile’]
745 [‘n04009552’, ‘projector’]
746 [‘n04019541’, ‘puck’]
747 [‘n04023962’, ‘punching_bag’]
748 [‘n04026417’, ‘purse’]
749 [‘n04033901’, ‘quill’]
750 [‘n04033995’, ‘quilt’]
751 [‘n04037443’, ‘racer’]
752 [‘n04039381’, ‘racket’]
753 [‘n04040759’, ‘radiator’]
754 [‘n04041544’, ‘radio’]
755 [‘n04044716’, ‘radio_telescope’]
756 [‘n04049303’, ‘rain_barrel’]
757 [‘n04065272’, ‘recreational_vehicle’]
758 [‘n04067472’, ‘reel’]
759 [‘n04069434’, ‘reflex_camera’]
760 [‘n04070727’, ‘refrigerator’]
761 [‘n04074963’, ‘remote_control’]
762 [‘n04081281’, ‘restaurant’]
763 [‘n04086273’, ‘revolver’]
764 [‘n04090263’, ‘rifle’]
765 [‘n04099969’, ‘rocking_chair’]
766 [‘n04111531’, ‘rotisserie’]
767 [‘n04116512’, ‘rubber_eraser’]
768 [‘n04118538’, ‘rugby_ball’]
769 [‘n04118776’, ‘rule’]
770 [‘n04120489’, ‘running_shoe’]
771 [‘n04125021’, ‘safe’]
772 [‘n04127249’, ‘safety_pin’]
773 [‘n04131690’, ‘saltshaker’]
774 [‘n04133789’, ‘sandal’]
775 [‘n04136333’, ‘sarong’]
776 [‘n04141076’, ‘sax’]
777 [‘n04141327’, ‘scabbard’]
778 [‘n04141975’, ‘scale’]
779 [‘n04146614’, ‘school_bus’]
780 [‘n04147183’, ‘schooner’]
781 [‘n04149813’, ‘scoreboard’]
782 [‘n04152593’, ‘screen’]
783 [‘n04153751’, ‘screw’]
784 [‘n04154565’, ‘screwdriver’]
785 [‘n04162706’, ‘seat_belt’]
786 [‘n04179913’, ‘sewing_machine’]
787 [‘n04192698’, ‘shield’]
788 [‘n04200800’, ‘shoe_shop’]
789 [‘n04201297’, ‘shoji’]
790 [‘n04204238’, ‘shopping_basket’]
791 [‘n04204347’, ‘shopping_cart’]
792 [‘n04208210’, ‘shovel’]
793 [‘n04209133’, ‘shower_cap’]
794 [‘n04209239’, ‘shower_curtain’]
795 [‘n04228054’, ‘ski’]
796 [‘n04229816’, ‘ski_mask’]
797 [‘n04235860’, ‘sleeping_bag’]
798 [‘n04238763’, ‘slide_rule’]
799 [‘n04239074’, ‘sliding_door’]
800 [‘n04243546’, ‘slot’]
801 [‘n04251144’, ‘snorkel’]
802 [‘n04252077’, ‘snowmobile’]
803 [‘n04252225’, ‘snowplow’]
804 [‘n04254120’, ‘soap_dispenser’]
805 [‘n04254680’, ‘soccer_ball’]
806 [‘n04254777’, ‘sock’]
807 [‘n04258138’, ‘solar_dish’]
808 [‘n04259630’, ‘sombrero’]
809 [‘n04263257’, ‘soup_bowl’]
810 [‘n04264628’, ‘space_bar’]
811 [‘n04265275’, ‘space_heater’]
812 [‘n04266014’, ‘space_shuttle’]
813 [‘n04270147’, ‘spatula’]
814 [‘n04273569’, ‘speedboat’]
815 [‘n04275548’, ‘spider_web’]
816 [‘n04277352’, ‘spindle’]
817 [‘n04285008’, ‘sports_car’]
818 [‘n04286575’, ‘spotlight’]
819 [‘n04296562’, ‘stage’]
820 [‘n04310018’, ‘steam_locomotive’]
821 [‘n04311004’, ‘steel_arch_bridge’]
822 [‘n04311174’, ‘steel_drum’]
823 [‘n04317175’, ‘stethoscope’]
824 [‘n04325704’, ‘stole’]
825 [‘n04326547’, ‘stone_wall’]
826 [‘n04328186’, ‘stopwatch’]
827 [‘n04330267’, ‘stove’]
828 [‘n04332243’, ‘strainer’]
829 [‘n04335435’, ‘streetcar’]
830 [‘n04336792’, ‘stretcher’]
831 [‘n04344873’, ‘studio_couch’]
832 [‘n04346328’, ‘stupa’]
833 [‘n04347754’, ‘submarine’]
834 [‘n04350905’, ‘suit’]
835 [‘n04355338’, ‘sundial’]
836 [‘n04355933’, ‘sunglass’]
837 [‘n04356056’, ‘sunglasses’]
838 [‘n04357314’, ‘sunscreen’]
839 [‘n04366367’, ‘suspension_bridge’]
840 [‘n04367480’, ‘swab’]
841 [‘n04370456’, ‘sweatshirt’]
842 [‘n04371430’, ‘swimming_trunks’]
843 [‘n04371774’, ‘swing’]
844 [‘n04372370’, ‘switch’]
845 [‘n04376876’, ‘syringe’]
846 [‘n04380533’, ‘table_lamp’]
847 [‘n04389033’, ‘tank’]
848 [‘n04392985’, ‘tape_player’]
849 [‘n04398044’, ‘teapot’]
850 [‘n04399382’, ‘teddy’]
851 [‘n04404412’, ‘television’]
852 [‘n04409515’, ‘tennis_ball’]
853 [‘n04417672’, ‘thatch’]
854 [‘n04418357’, ‘theater_curtain’]
855 [‘n04423845’, ‘thimble’]
856 [‘n04428191’, ‘thresher’]
857 [‘n04429376’, ‘throne’]
858 [‘n04435653’, ‘tile_roof’]
859 [‘n04442312’, ‘toaster’]
860 [‘n04443257’, ‘tobacco_shop’]
861 [‘n04447861’, ‘toilet_seat’]
862 [‘n04456115’, ‘torch’]
863 [‘n04458633’, ‘totem_pole’]
864 [‘n04461696’, ‘tow_truck’]
865 [‘n04462240’, ‘toyshop’]
866 [‘n04465501’, ‘tractor’]
867 [‘n04467665’, ‘trailer_truck’]
868 [‘n04476259’, ‘tray’]
869 [‘n04479046’, ‘trench_coat’]
870 [‘n04482393’, ‘tricycle’]
871 [‘n04483307’, ‘trimaran’]
872 [‘n04485082’, ‘tripod’]
873 [‘n04486054’, ‘triumphal_arch’]
874 [‘n04487081’, ‘trolleybus’]
875 [‘n04487394’, ‘trombone’]
876 [‘n04493381’, ‘tub’]
877 [‘n04501370’, ‘turnstile’]
878 [‘n04505470’, ‘typewriter_keyboard’]
879 [‘n04507155’, ‘umbrella’]
880 [‘n04509417’, ‘unicycle’]
881 [‘n04515003’, ‘upright’]
882 [‘n04517823’, ‘vacuum’]
883 [‘n04522168’, ‘vase’]
884 [‘n04523525’, ‘vault’]
885 [‘n04525038’, ‘velvet’]
886 [‘n04525305’, ‘vending_machine’]
887 [‘n04532106’, ‘vestment’]
888 [‘n04532670’, ‘viaduct’]
889 [‘n04536866’, ‘violin’]
890 [‘n04540053’, ‘volleyball’]
891 [‘n04542943’, ‘waffle_iron’]
892 [‘n04548280’, ‘wall_clock’]
893 [‘n04548362’, ‘wallet’]
894 [‘n04550184’, ‘wardrobe’]
895 [‘n04552348’, ‘warplane’]
896 [‘n04553703’, ‘washbasin’]
897 [‘n04554684’, ‘washer’]
898 [‘n04557648’, ‘water_bottle’]
899 [‘n04560804’, ‘water_jug’]
900 [‘n04562935’, ‘water_tower’]
901 [‘n04579145’, ‘whiskey_jug’]
902 [‘n04579432’, ‘whistle’]
903 [‘n04584207’, ‘wig’]
904 [‘n04589890’, ‘window_screen’]
905 [‘n04590129’, ‘window_shade’]
906 [‘n04591157’, ‘Windsor_tie’]
907 [‘n04591713’, ‘wine_bottle’]
908 [‘n04592741’, ‘wing’]
909 [‘n04596742’, ‘wok’]
910 [‘n04597913’, ‘wooden_spoon’]
911 [‘n04599235’, ‘wool’]
912 [‘n04604644’, ‘worm_fence’]
913 [‘n04606251’, ‘wreck’]
914 [‘n04612504’, ‘yawl’]
915 [‘n04613696’, ‘yurt’]
916 [‘n06359193’, ‘web_site’]
917 [‘n06596364’, ‘comic_book’]
918 [‘n06785654’, ‘crossword_puzzle’]
919 [‘n06794110’, ‘street_sign’]
920 [‘n06874185’, ‘traffic_light’]
921 [‘n07248320’, ‘book_jacket’]
922 [‘n07565083’, ‘menu’]
923 [‘n07579787’, ‘plate’]
924 [‘n07583066’, ‘guacamole’]
925 [‘n07584110’, ‘consomme’]
926 [‘n07590611’, ‘hot_pot’]
927 [‘n07613480’, ‘trifle’]
928 [‘n07614500’, ‘ice_cream’]
929 [‘n07615774’, ‘ice_lolly’]
930 [‘n07684084’, ‘French_loaf’]
931 [‘n07693725’, ‘bagel’]
932 [‘n07695742’, ‘pretzel’]
933 [‘n07697313’, ‘cheeseburger’]
934 [‘n07697537’, ‘hotdog’]
935 [‘n07711569’, ‘mashed_potato’]
936 [‘n07714571’, ‘head_cabbage’]
937 [‘n07714990’, ‘broccoli’]
938 [‘n07715103’, ‘cauliflower’]
939 [‘n07716358’, ‘zucchini’]
940 [‘n07716906’, ‘spaghetti_squash’]
941 [‘n07717410’, ‘acorn_squash’]
942 [‘n07717556’, ‘butternut_squash’]
943 [‘n07718472’, ‘cucumber’]
944 [‘n07718747’, ‘artichoke’]
945 [‘n07720875’, ‘bell_pepper’]
946 [‘n07730033’, ‘cardoon’]
947 [‘n07734744’, ‘mushroom’]
948 [‘n07742313’, ‘Granny_Smith’]
949 [‘n07745940’, ‘strawberry’]
950 [‘n07747607’, ‘orange’]
951 [‘n07749582’, ‘lemon’]
952 [‘n07753113’, ‘fig’]
953 [‘n07753275’, ‘pineapple’]
954 [‘n07753592’, ‘banana’]
955 [‘n07754684’, ‘jackfruit’]
956 [‘n07760859’, ‘custard_apple’]
957 [‘n07768694’, ‘pomegranate’]
958 [‘n07802026’, ‘hay’]
959 [‘n07831146’, ‘carbonara’]
960 [‘n07836838’, ‘chocolate_sauce’]
961 [‘n07860988’, ‘dough’]
962 [‘n07871810’, ‘meat_loaf’]
963 [‘n07873807’, ‘pizza’]
964 [‘n07875152’, ‘potpie’]
965 [‘n07880968’, ‘burrito’]
966 [‘n07892512’, ‘red_wine’]
967 [‘n07920052’, ‘espresso’]
968 [‘n07930864’, ‘cup’]
969 [‘n07932039’, ‘eggnog’]
970 [‘n09193705’, ‘alp’]
971 [‘n09229709’, ‘bubble’]
972 [‘n09246464’, ‘cliff’]
973 [‘n09256479’, ‘coral_reef’]
974 [‘n09288635’, ‘geyser’]
975 [‘n09332890’, ‘lakeside’]
976 [‘n09399592’, ‘promontory’]
977 [‘n09421951’, ‘sandbar’]
978 [‘n09428293’, ‘seashore’]
979 [‘n09468604’, ‘valley’]
980 [‘n09472597’, ‘volcano’]
981 [‘n09835506’, ‘ballplayer’]
982 [‘n10148035’, ‘groom’]
983 [‘n10565667’, ‘scuba_diver’]
984 [‘n11879895’, ‘rapeseed’]
985 [‘n11939491’, ‘daisy’]
986 [‘n12057211’, “yellow_lady’s_slipper”]
987 [‘n12144580’, ‘corn’]
988 [‘n12267677’, ‘acorn’]
989 [‘n12620546’, ‘hip’]
990 [‘n12768682’, ‘buckeye’]
991 [‘n12985857’, ‘coral_fungus’]
992 [‘n12998815’, ‘agaric’]
993 [‘n13037406’, ‘gyromitra’]
994 [‘n13040303’, ‘stinkhorn’]
995 [‘n13044778’, ‘earthstar’]
996 [‘n13052670’, ‘hen-of-the-woods’]
997 [‘n13054560’, ‘bolete’]
998 [‘n13133613’, ‘ear’]
999 [‘n15075141’, ‘toilet_tissue’]

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