├── .gitignore ├── .gitmodules ├── README.md ├── imagenet_classes.txt ├── imgs └── test_img │ ├── apple.jpg │ ├── dog.jpg │ ├── frog.jpg │ └── website.jpg ├── post.py ├── readme_media ├── uc1.gif └── uc2.gif └── resnext.py /.gitignore: -------------------------------------------------------------------------------- 1 | pswd.json 2 | *.env 3 | imgs/posted/ 4 | imgs/submissions/ 5 | auth.py 6 | __pycache__/ 7 | fan_submit/ 8 | submissions/ 9 | submissions_completed/ 10 | submissions_unmoderated/ 11 | testimg/ 12 | *.log 13 | PostFanSubmitImage.sh 14 | PostImageUserSubmit.sh 15 | twitterBotAPI.pyc 16 | PostImage.sh 17 | -------------------------------------------------------------------------------- /.gitmodules: -------------------------------------------------------------------------------- 1 | #[submodule "cookbook"] 2 | # path = cookbook 3 | # url = https://github.com/bluesky-social/cookbook.git 4 | -------------------------------------------------------------------------------- /README.md: -------------------------------------------------------------------------------- 1 | # Neural Net Guesses Memes V2: Bluesky 2 | 3 | The bot is up and running! 4 | 5 | https://bsky.app/profile/resnextguesser.bsky.social 6 | 7 | ![](readme_media/uc1.gif) 8 | 9 | ![](readme_media/uc2.gif) 10 | -------------------------------------------------------------------------------- /imagenet_classes.txt: -------------------------------------------------------------------------------- 1 | tench 2 | goldfish 3 | great white shark 4 | tiger shark 5 | hammerhead 6 | electric ray 7 | stingray 8 | cock 9 | hen 10 | ostrich 11 | brambling 12 | goldfinch 13 | house finch 14 | junco 15 | indigo bunting 16 | robin 17 | bulbul 18 | jay 19 | magpie 20 | chickadee 21 | water ouzel 22 | kite 23 | bald eagle 24 | vulture 25 | great grey owl 26 | European fire salamander 27 | common newt 28 | eft 29 | spotted salamander 30 | axolotl 31 | bullfrog 32 | tree frog 33 | tailed frog 34 | loggerhead 35 | leatherback turtle 36 | mud turtle 37 | terrapin 38 | box turtle 39 | banded gecko 40 | common iguana 41 | American chameleon 42 | whiptail 43 | agama 44 | frilled lizard 45 | alligator lizard 46 | Gila monster 47 | green lizard 48 | African chameleon 49 | Komodo dragon 50 | African crocodile 51 | American alligator 52 | triceratops 53 | thunder snake 54 | ringneck snake 55 | hognose snake 56 | green snake 57 | king snake 58 | garter snake 59 | water snake 60 | vine snake 61 | night snake 62 | boa constrictor 63 | rock python 64 | Indian cobra 65 | green mamba 66 | sea snake 67 | horned viper 68 | diamondback 69 | sidewinder 70 | trilobite 71 | harvestman 72 | scorpion 73 | black and gold garden spider 74 | barn spider 75 | garden spider 76 | black widow 77 | tarantula 78 | wolf spider 79 | tick 80 | centipede 81 | black grouse 82 | ptarmigan 83 | ruffed grouse 84 | prairie chicken 85 | peacock 86 | quail 87 | partridge 88 | African grey 89 | macaw 90 | sulphur-crested cockatoo 91 | lorikeet 92 | coucal 93 | bee eater 94 | hornbill 95 | hummingbird 96 | jacamar 97 | toucan 98 | drake 99 | red-breasted merganser 100 | goose 101 | black swan 102 | tusker 103 | echidna 104 | platypus 105 | wallaby 106 | koala 107 | wombat 108 | jellyfish 109 | sea anemone 110 | brain coral 111 | flatworm 112 | nematode 113 | conch 114 | snail 115 | slug 116 | sea slug 117 | chiton 118 | chambered nautilus 119 | Dungeness crab 120 | rock crab 121 | fiddler crab 122 | king crab 123 | American lobster 124 | spiny lobster 125 | crayfish 126 | hermit crab 127 | isopod 128 | white stork 129 | black stork 130 | spoonbill 131 | flamingo 132 | little blue heron 133 | American egret 134 | bittern 135 | crane 136 | limpkin 137 | European gallinule 138 | American coot 139 | bustard 140 | ruddy turnstone 141 | red-backed sandpiper 142 | redshank 143 | dowitcher 144 | oystercatcher 145 | pelican 146 | king penguin 147 | albatross 148 | grey whale 149 | killer whale 150 | dugong 151 | sea lion 152 | Chihuahua 153 | Japanese spaniel 154 | Maltese dog 155 | Pekinese 156 | Shih-Tzu 157 | Blenheim spaniel 158 | papillon 159 | toy terrier 160 | Rhodesian ridgeback 161 | Afghan hound 162 | basset 163 | beagle 164 | bloodhound 165 | bluetick 166 | black-and-tan coonhound 167 | Walker hound 168 | English foxhound 169 | redbone 170 | borzoi 171 | Irish wolfhound 172 | Italian greyhound 173 | whippet 174 | Ibizan hound 175 | Norwegian elkhound 176 | otterhound 177 | Saluki 178 | Scottish deerhound 179 | Weimaraner 180 | Staffordshire bullterrier 181 | American Staffordshire terrier 182 | Bedlington terrier 183 | Border terrier 184 | Kerry blue terrier 185 | Irish terrier 186 | Norfolk terrier 187 | Norwich terrier 188 | Yorkshire terrier 189 | wire-haired fox terrier 190 | Lakeland terrier 191 | Sealyham terrier 192 | Airedale 193 | cairn 194 | Australian terrier 195 | Dandie Dinmont 196 | Boston bull 197 | miniature schnauzer 198 | giant schnauzer 199 | standard schnauzer 200 | Scotch terrier 201 | Tibetan terrier 202 | silky terrier 203 | soft-coated wheaten terrier 204 | West Highland white terrier 205 | Lhasa 206 | flat-coated retriever 207 | curly-coated retriever 208 | golden retriever 209 | Labrador retriever 210 | Chesapeake Bay retriever 211 | German short-haired pointer 212 | vizsla 213 | English setter 214 | Irish setter 215 | Gordon setter 216 | Brittany spaniel 217 | clumber 218 | English springer 219 | Welsh springer spaniel 220 | cocker spaniel 221 | Sussex spaniel 222 | Irish water spaniel 223 | kuvasz 224 | schipperke 225 | groenendael 226 | malinois 227 | briard 228 | kelpie 229 | komondor 230 | Old English sheepdog 231 | Shetland sheepdog 232 | collie 233 | Border collie 234 | Bouvier des Flandres 235 | Rottweiler 236 | German shepherd 237 | Doberman 238 | miniature pinscher 239 | Greater Swiss Mountain dog 240 | Bernese mountain dog 241 | Appenzeller 242 | EntleBucher 243 | boxer 244 | bull mastiff 245 | Tibetan mastiff 246 | French bulldog 247 | Great Dane 248 | Saint Bernard 249 | Eskimo dog 250 | malamute 251 | Siberian husky 252 | dalmatian 253 | affenpinscher 254 | basenji 255 | pug 256 | Leonberg 257 | Newfoundland 258 | Great Pyrenees 259 | Samoyed 260 | Pomeranian 261 | chow 262 | keeshond 263 | Brabancon griffon 264 | Pembroke 265 | Cardigan 266 | toy poodle 267 | miniature poodle 268 | standard poodle 269 | Mexican hairless 270 | timber wolf 271 | white wolf 272 | red wolf 273 | coyote 274 | dingo 275 | dhole 276 | African hunting dog 277 | hyena 278 | red fox 279 | kit fox 280 | Arctic fox 281 | grey fox 282 | tabby 283 | tiger cat 284 | Persian cat 285 | Siamese cat 286 | Egyptian cat 287 | cougar 288 | lynx 289 | leopard 290 | snow leopard 291 | jaguar 292 | lion 293 | tiger 294 | cheetah 295 | brown bear 296 | American black bear 297 | ice bear 298 | sloth bear 299 | mongoose 300 | meerkat 301 | tiger beetle 302 | ladybug 303 | ground beetle 304 | long-horned beetle 305 | leaf beetle 306 | dung beetle 307 | rhinoceros beetle 308 | weevil 309 | fly 310 | bee 311 | ant 312 | grasshopper 313 | cricket 314 | walking stick 315 | cockroach 316 | mantis 317 | cicada 318 | leafhopper 319 | lacewing 320 | dragonfly 321 | damselfly 322 | admiral 323 | ringlet 324 | monarch 325 | cabbage butterfly 326 | sulphur butterfly 327 | lycaenid 328 | starfish 329 | sea urchin 330 | sea cucumber 331 | wood rabbit 332 | hare 333 | Angora 334 | hamster 335 | porcupine 336 | fox squirrel 337 | marmot 338 | beaver 339 | guinea pig 340 | sorrel 341 | zebra 342 | hog 343 | wild boar 344 | warthog 345 | hippopotamus 346 | ox 347 | water buffalo 348 | bison 349 | ram 350 | bighorn 351 | ibex 352 | hartebeest 353 | impala 354 | gazelle 355 | Arabian camel 356 | llama 357 | weasel 358 | mink 359 | polecat 360 | black-footed ferret 361 | otter 362 | skunk 363 | badger 364 | armadillo 365 | three-toed sloth 366 | orangutan 367 | gorilla 368 | chimpanzee 369 | gibbon 370 | siamang 371 | guenon 372 | patas 373 | baboon 374 | macaque 375 | langur 376 | colobus 377 | proboscis monkey 378 | marmoset 379 | capuchin 380 | howler monkey 381 | titi 382 | spider monkey 383 | squirrel monkey 384 | Madagascar cat 385 | indri 386 | Indian elephant 387 | African elephant 388 | lesser panda 389 | giant panda 390 | barracouta 391 | eel 392 | coho 393 | rock beauty 394 | anemone fish 395 | sturgeon 396 | gar 397 | lionfish 398 | puffer 399 | abacus 400 | abaya 401 | academic gown 402 | accordion 403 | acoustic guitar 404 | aircraft carrier 405 | airliner 406 | airship 407 | altar 408 | ambulance 409 | amphibian 410 | analog clock 411 | apiary 412 | apron 413 | ashcan 414 | assault rifle 415 | backpack 416 | bakery 417 | balance beam 418 | balloon 419 | ballpoint 420 | Band Aid 421 | banjo 422 | bannister 423 | barbell 424 | barber chair 425 | barbershop 426 | barn 427 | barometer 428 | barrel 429 | barrow 430 | baseball 431 | basketball 432 | bassinet 433 | bassoon 434 | bathing cap 435 | bath towel 436 | bathtub 437 | beach wagon 438 | beacon 439 | beaker 440 | bearskin 441 | beer bottle 442 | beer glass 443 | bell cote 444 | bib 445 | bicycle-built-for-two 446 | bikini 447 | binder 448 | binoculars 449 | birdhouse 450 | boathouse 451 | bobsled 452 | bolo tie 453 | bonnet 454 | bookcase 455 | bookshop 456 | bottlecap 457 | bow 458 | bow tie 459 | brass 460 | brassiere 461 | breakwater 462 | breastplate 463 | broom 464 | bucket 465 | buckle 466 | bulletproof vest 467 | bullet train 468 | butcher shop 469 | cab 470 | caldron 471 | candle 472 | cannon 473 | canoe 474 | can opener 475 | cardigan 476 | car mirror 477 | carousel 478 | carpenter's kit 479 | carton 480 | car wheel 481 | cash machine 482 | cassette 483 | cassette player 484 | castle 485 | catamaran 486 | CD player 487 | cello 488 | cellular telephone 489 | chain 490 | chainlink fence 491 | chain mail 492 | chain saw 493 | chest 494 | chiffonier 495 | chime 496 | china cabinet 497 | Christmas stocking 498 | church 499 | cinema 500 | cleaver 501 | cliff dwelling 502 | cloak 503 | clog 504 | cocktail shaker 505 | coffee mug 506 | coffeepot 507 | coil 508 | combination lock 509 | computer keyboard 510 | confectionery 511 | container ship 512 | convertible 513 | corkscrew 514 | cornet 515 | cowboy boot 516 | cowboy hat 517 | cradle 518 | crane 519 | crash helmet 520 | crate 521 | crib 522 | Crock Pot 523 | croquet ball 524 | crutch 525 | cuirass 526 | dam 527 | desk 528 | desktop computer 529 | dial telephone 530 | diaper 531 | digital clock 532 | digital watch 533 | dining table 534 | dishrag 535 | dishwasher 536 | disk brake 537 | dock 538 | dogsled 539 | dome 540 | doormat 541 | drilling platform 542 | drum 543 | drumstick 544 | dumbbell 545 | Dutch oven 546 | electric fan 547 | electric guitar 548 | electric locomotive 549 | entertainment center 550 | envelope 551 | espresso maker 552 | face powder 553 | feather boa 554 | file 555 | fireboat 556 | fire engine 557 | fire screen 558 | flagpole 559 | flute 560 | folding chair 561 | football helmet 562 | forklift 563 | fountain 564 | fountain pen 565 | four-poster 566 | freight car 567 | French horn 568 | frying pan 569 | fur coat 570 | garbage truck 571 | gasmask 572 | gas pump 573 | goblet 574 | go-kart 575 | golf ball 576 | golfcart 577 | gondola 578 | gong 579 | gown 580 | grand piano 581 | greenhouse 582 | grille 583 | grocery store 584 | guillotine 585 | hair slide 586 | hair spray 587 | half track 588 | hammer 589 | hamper 590 | hand blower 591 | hand-held computer 592 | handkerchief 593 | hard disc 594 | harmonica 595 | harp 596 | harvester 597 | hatchet 598 | holster 599 | home theater 600 | honeycomb 601 | hook 602 | hoopskirt 603 | horizontal bar 604 | horse cart 605 | hourglass 606 | iPod 607 | iron 608 | jack-o'-lantern 609 | jean 610 | jeep 611 | jersey 612 | jigsaw puzzle 613 | jinrikisha 614 | joystick 615 | kimono 616 | knee pad 617 | knot 618 | lab coat 619 | ladle 620 | lampshade 621 | laptop 622 | lawn mower 623 | lens cap 624 | letter opener 625 | library 626 | lifeboat 627 | lighter 628 | limousine 629 | liner 630 | lipstick 631 | Loafer 632 | lotion 633 | loudspeaker 634 | loupe 635 | lumbermill 636 | magnetic compass 637 | mailbag 638 | mailbox 639 | maillot 640 | maillot 641 | manhole cover 642 | maraca 643 | marimba 644 | mask 645 | matchstick 646 | maypole 647 | maze 648 | measuring cup 649 | medicine chest 650 | megalith 651 | microphone 652 | microwave 653 | military uniform 654 | milk can 655 | minibus 656 | miniskirt 657 | minivan 658 | missile 659 | mitten 660 | mixing bowl 661 | mobile home 662 | Model T 663 | modem 664 | monastery 665 | monitor 666 | moped 667 | mortar 668 | mortarboard 669 | mosque 670 | mosquito net 671 | motor scooter 672 | mountain bike 673 | mountain tent 674 | mouse 675 | mousetrap 676 | moving van 677 | muzzle 678 | nail 679 | neck brace 680 | necklace 681 | nipple 682 | notebook 683 | obelisk 684 | oboe 685 | ocarina 686 | odometer 687 | oil filter 688 | organ 689 | oscilloscope 690 | overskirt 691 | oxcart 692 | oxygen mask 693 | packet 694 | paddle 695 | paddlewheel 696 | padlock 697 | paintbrush 698 | pajama 699 | palace 700 | panpipe 701 | paper towel 702 | parachute 703 | parallel bars 704 | park bench 705 | parking meter 706 | passenger car 707 | patio 708 | pay-phone 709 | pedestal 710 | pencil box 711 | pencil sharpener 712 | perfume 713 | Petri dish 714 | photocopier 715 | pick 716 | pickelhaube 717 | picket fence 718 | pickup 719 | pier 720 | piggy bank 721 | pill bottle 722 | pillow 723 | ping-pong ball 724 | pinwheel 725 | pirate 726 | pitcher 727 | plane 728 | planetarium 729 | plastic bag 730 | plate rack 731 | plow 732 | plunger 733 | Polaroid camera 734 | pole 735 | police van 736 | poncho 737 | pool table 738 | pop bottle 739 | pot 740 | potter's wheel 741 | power drill 742 | prayer rug 743 | printer 744 | prison 745 | projectile 746 | projector 747 | puck 748 | punching bag 749 | purse 750 | quill 751 | quilt 752 | racer 753 | racket 754 | radiator 755 | radio 756 | radio telescope 757 | rain barrel 758 | recreational vehicle 759 | reel 760 | reflex camera 761 | refrigerator 762 | remote control 763 | restaurant 764 | revolver 765 | rifle 766 | rocking chair 767 | rotisserie 768 | rubber eraser 769 | rugby ball 770 | rule 771 | running shoe 772 | safe 773 | safety pin 774 | saltshaker 775 | sandal 776 | sarong 777 | sax 778 | scabbard 779 | scale 780 | school bus 781 | schooner 782 | scoreboard 783 | screen 784 | screw 785 | screwdriver 786 | seat belt 787 | sewing machine 788 | shield 789 | shoe shop 790 | shoji 791 | shopping basket 792 | shopping cart 793 | shovel 794 | shower cap 795 | shower curtain 796 | ski 797 | ski mask 798 | sleeping bag 799 | slide rule 800 | sliding door 801 | slot 802 | snorkel 803 | snowmobile 804 | snowplow 805 | soap dispenser 806 | soccer ball 807 | sock 808 | solar dish 809 | sombrero 810 | soup bowl 811 | space bar 812 | space heater 813 | space shuttle 814 | spatula 815 | speedboat 816 | spider web 817 | spindle 818 | sports car 819 | spotlight 820 | stage 821 | steam locomotive 822 | steel arch bridge 823 | steel drum 824 | stethoscope 825 | stole 826 | stone wall 827 | stopwatch 828 | stove 829 | strainer 830 | streetcar 831 | stretcher 832 | studio couch 833 | stupa 834 | submarine 835 | suit 836 | sundial 837 | sunglass 838 | sunglasses 839 | sunscreen 840 | suspension bridge 841 | swab 842 | sweatshirt 843 | swimming trunks 844 | swing 845 | switch 846 | syringe 847 | table lamp 848 | tank 849 | tape player 850 | teapot 851 | teddy 852 | television 853 | tennis ball 854 | thatch 855 | theater curtain 856 | thimble 857 | thresher 858 | throne 859 | tile roof 860 | toaster 861 | tobacco shop 862 | toilet seat 863 | torch 864 | totem pole 865 | tow truck 866 | toyshop 867 | tractor 868 | trailer truck 869 | tray 870 | trench coat 871 | tricycle 872 | trimaran 873 | tripod 874 | triumphal arch 875 | trolleybus 876 | trombone 877 | tub 878 | turnstile 879 | typewriter keyboard 880 | umbrella 881 | unicycle 882 | upright 883 | vacuum 884 | vase 885 | vault 886 | velvet 887 | vending machine 888 | vestment 889 | viaduct 890 | violin 891 | volleyball 892 | waffle iron 893 | wall clock 894 | wallet 895 | wardrobe 896 | warplane 897 | washbasin 898 | washer 899 | water bottle 900 | water jug 901 | water tower 902 | whiskey jug 903 | whistle 904 | wig 905 | window screen 906 | window shade 907 | Windsor tie 908 | wine bottle 909 | wing 910 | wok 911 | wooden spoon 912 | wool 913 | worm fence 914 | wreck 915 | yawl 916 | yurt 917 | web site 918 | comic book 919 | crossword puzzle 920 | street sign 921 | traffic light 922 | book jacket 923 | menu 924 | plate 925 | guacamole 926 | consomme 927 | hot pot 928 | trifle 929 | ice cream 930 | ice lolly 931 | French loaf 932 | bagel 933 | pretzel 934 | cheeseburger 935 | hotdog 936 | mashed potato 937 | head cabbage 938 | broccoli 939 | cauliflower 940 | zucchini 941 | spaghetti squash 942 | acorn squash 943 | butternut squash 944 | cucumber 945 | artichoke 946 | bell pepper 947 | cardoon 948 | mushroom 949 | Granny Smith 950 | strawberry 951 | orange 952 | lemon 953 | fig 954 | pineapple 955 | banana 956 | jackfruit 957 | custard apple 958 | pomegranate 959 | hay 960 | carbonara 961 | chocolate sauce 962 | dough 963 | meat loaf 964 | pizza 965 | potpie 966 | burrito 967 | red wine 968 | espresso 969 | cup 970 | eggnog 971 | alp 972 | bubble 973 | cliff 974 | coral reef 975 | geyser 976 | lakeside 977 | promontory 978 | sandbar 979 | seashore 980 | valley 981 | volcano 982 | ballplayer 983 | groom 984 | scuba diver 985 | rapeseed 986 | daisy 987 | yellow lady's slipper 988 | corn 989 | acorn 990 | hip 991 | buckeye 992 | coral fungus 993 | agaric 994 | gyromitra 995 | stinkhorn 996 | earthstar 997 | hen-of-the-woods 998 | bolete 999 | ear 1000 | toilet tissue -------------------------------------------------------------------------------- /imgs/test_img/apple.jpg: -------------------------------------------------------------------------------- https://raw.githubusercontent.com/riscmkv/NNTwitterBot/001e96e25ac8b2bf8e145c67b3091809e297df93/imgs/test_img/apple.jpg -------------------------------------------------------------------------------- /imgs/test_img/dog.jpg: -------------------------------------------------------------------------------- https://raw.githubusercontent.com/riscmkv/NNTwitterBot/001e96e25ac8b2bf8e145c67b3091809e297df93/imgs/test_img/dog.jpg -------------------------------------------------------------------------------- /imgs/test_img/frog.jpg: -------------------------------------------------------------------------------- https://raw.githubusercontent.com/riscmkv/NNTwitterBot/001e96e25ac8b2bf8e145c67b3091809e297df93/imgs/test_img/frog.jpg -------------------------------------------------------------------------------- /imgs/test_img/website.jpg: -------------------------------------------------------------------------------- https://raw.githubusercontent.com/riscmkv/NNTwitterBot/001e96e25ac8b2bf8e145c67b3091809e297df93/imgs/test_img/website.jpg -------------------------------------------------------------------------------- /post.py: -------------------------------------------------------------------------------- 1 | from atproto import Client 2 | import json 3 | import resnext as resnext 4 | import os 5 | import random 6 | 7 | pwd_f = "pswd.json" 8 | source_img_folder = "./imgs/submissions/" 9 | done_img_folder = "./imgs/posted/" 10 | 11 | # follows example from 12 | # https://github.com/MarshalX/atproto/blob/main/examples/send_images.py 13 | def post_single_image(img_f, text) -> None: 14 | login = json.load(open(pwd_f)) 15 | 16 | client = Client() 17 | client.login(login['uname'], login['pwd']) 18 | imgs = [ open(img_f, 'rb').read() ] 19 | client.send_images(text=text, images=imgs) 20 | 21 | def gen_tweet_string(prediction, img_path): 22 | tweet_str = "top 5 guesses:" 23 | for i in range(5): 24 | tweet_str += "\n%s [ %.3f ]"%(prediction[0][i], prediction[1][i]) 25 | return tweet_str 26 | 27 | def main() -> None: 28 | #1. Grab a random image 29 | img_list = os.listdir(source_img_folder) 30 | img_f = random.choice(img_list) 31 | img_path = source_img_folder + img_f 32 | 33 | #2. Run it through resnext 34 | prediction = resnext.resnext_classify(img_path) 35 | 36 | #3. Generate the tweet string 37 | text = gen_tweet_string(prediction, img_path) 38 | print(text) 39 | 40 | #4. Post the image 41 | post_single_image(img_path, text) 42 | 43 | #5. Move the image to the posted folder 44 | os.rename(img_path, done_img_folder + img_f) 45 | 46 | if __name__ == '__main__': 47 | main() -------------------------------------------------------------------------------- /readme_media/uc1.gif: -------------------------------------------------------------------------------- https://raw.githubusercontent.com/riscmkv/NNTwitterBot/001e96e25ac8b2bf8e145c67b3091809e297df93/readme_media/uc1.gif -------------------------------------------------------------------------------- /readme_media/uc2.gif: -------------------------------------------------------------------------------- https://raw.githubusercontent.com/riscmkv/NNTwitterBot/001e96e25ac8b2bf8e145c67b3091809e297df93/readme_media/uc2.gif -------------------------------------------------------------------------------- /resnext.py: -------------------------------------------------------------------------------- 1 | import torch 2 | 3 | model = torch.hub.load('pytorch/vision:v0.6.0', 'resnext50_32x4d', pretrained=True) 4 | model.eval() 5 | 6 | from PIL import Image 7 | from torchvision import transforms 8 | 9 | preprocess_default = transforms.Compose([ 10 | transforms.Resize(256), 11 | transforms.CenterCrop(224), 12 | transforms.ToTensor(), 13 | transforms.Normalize(mean=[0.485, 0.456, 0.406], std=[0.229, 0.224, 0.225]), 14 | ]) 15 | 16 | preprocess_random_perspective = transforms.Compose([ 17 | transforms.Resize(256), 18 | transforms.CenterCrop(224), 19 | transforms.RandomPerspective(distortion_scale=0.6, p=1.0), 20 | transforms.ToTensor(), 21 | transforms.Normalize(mean=[0.485, 0.456, 0.406], std=[0.229, 0.224, 0.225]), 22 | ]) 23 | 24 | preprocess_flip_horizontal = transforms.Compose([ 25 | transforms.Resize(256), 26 | transforms.CenterCrop(224), 27 | transforms.RandomHorizontalFlip(p=1.0), 28 | transforms.ToTensor(), 29 | transforms.Normalize(mean=[0.485, 0.456, 0.406], std=[0.229, 0.224, 0.225]), 30 | ]) 31 | 32 | preprocess_tilt = transforms.Compose([ 33 | transforms.Resize(256), 34 | transforms.CenterCrop(224), 35 | transforms.RandomRotation(degrees=(-15, 15)), 36 | transforms.ToTensor(), 37 | transforms.Normalize(mean=[0.485, 0.456, 0.406], std=[0.229, 0.224, 0.225]), 38 | ]) 39 | 40 | def resnext_run(filename, preprocess=preprocess_default): 41 | # sample execution (requires torchvision) 42 | input_image = Image.open(filename).convert('RGB') 43 | input_tensor = preprocess(input_image) 44 | input_batch = input_tensor.unsqueeze(0) # create a mini-batch as expected by the model 45 | 46 | # move the input and model to GPU for speed if available 47 | #if torch.cuda.is_available(): 48 | # input_batch = input_batch.to('cuda') 49 | # model.to('cuda') 50 | 51 | with torch.no_grad(): 52 | output = model(input_batch) 53 | # Tensor of shape 1000, with confidence scores over Imagenet's 1000 classes 54 | # The output has unnormalized scores. To get probabilities, you can run a softmax on it. 55 | probabilities = torch.nn.functional.softmax(output[0], dim=0) 56 | 57 | return probabilities 58 | 59 | def resnext_classify(filename, printout=False): 60 | 61 | probabilities = resnext_run(filename) 62 | 63 | print(probabilities.size()) 64 | 65 | with open("imagenet_classes.txt", "r") as f: 66 | categories = [s.strip() for s in f.readlines()] 67 | # Show top categories per image 68 | top5_prob, top5_catid = torch.topk(probabilities, 5) 69 | 70 | if printout: 71 | for i in range(top5_prob.size(0)): 72 | print(categories[top5_catid[i]], top5_prob[i].item()) 73 | 74 | topfive_cats = [] 75 | topfive_probs = [] 76 | 77 | for i in range(top5_prob.size(0)): 78 | topfive_cats.append(categories[top5_catid[i]]) 79 | topfive_probs.append(top5_prob[i].item()) 80 | 81 | return [topfive_cats, topfive_probs, top5_catid] 82 | 83 | def test(): 84 | print(resnext_classify("testimg/dog.jpg", printout=True)) 85 | 86 | if __name__ == '__main__': 87 | test() --------------------------------------------------------------------------------