| | import torch |
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| | EXP_NAME = "IAM-339-15-E3D3-LR0.00005-bs8"; RESUME = False |
| |
|
| | DATASET = 'IAM' |
| | if DATASET == 'IAM': |
| | DATASET_PATHS = 'files/IAM-32.pickle' |
| | NUM_WRITERS = 339 |
| | if DATASET == 'CVL': |
| | DATASET_PATHS = 'files/CVL-32.pickle' |
| | NUM_WRITERS = 283 |
| | ENGLISH_WORDS_PATH = 'files/english_words.txt' |
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| | |
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|
| | IMG_HEIGHT = 32 |
| | resolution = 16 |
| | batch_size = 8 |
| | NUM_EXAMPLES = 15 |
| | TN_HIDDEN_DIM = 512 |
| | TN_DROPOUT = 0.1 |
| | TN_NHEADS = 8 |
| | TN_DIM_FEEDFORWARD = 512 |
| | TN_ENC_LAYERS = 3 |
| | TN_DEC_LAYERS = 3 |
| | ALPHABET = 'Only thewigsofrcvdampbkuq.A-210xT5\'MDL,RYHJ"ISPWENj&BC93VGFKz();#:!7U64Q8?+*ZX/%' |
| | VOCAB_SIZE = len(ALPHABET) |
| | G_LR = 0.00005 |
| | D_LR = 0.00005 |
| | W_LR = 0.00005 |
| | OCR_LR = 0.00005 |
| | EPOCHS = 100000 |
| | NUM_CRITIC_GOCR_TRAIN = 2 |
| | NUM_CRITIC_DOCR_TRAIN = 1 |
| | NUM_CRITIC_GWL_TRAIN = 2 |
| | NUM_CRITIC_DWL_TRAIN = 1 |
| | NUM_FID_FREQ = 100 |
| |
|
| | DEVICE = torch.device("cuda" if torch.cuda.is_available() else "cpu") |
| | IS_SEQ = True |
| | NUM_WORDS = 3 |
| | if not IS_SEQ: NUM_WORDS = NUM_EXAMPLES |
| | IS_CYCLE = False |
| | IS_KLD = False |
| | ADD_NOISE = False |
| | ALL_CHARS = False |
| | SAVE_MODEL = 5 |
| | SAVE_MODEL_HISTORY = 100 |
| |
|
| | def init_project(): |
| | import os, shutil |
| | if not os.path.isdir('saved_images'): os.mkdir('saved_images') |
| | if os.path.isdir(os.path.join('saved_images', EXP_NAME)): shutil.rmtree(os.path.join('saved_images', EXP_NAME)) |
| | os.mkdir(os.path.join('saved_images', EXP_NAME)) |
| | os.mkdir(os.path.join('saved_images', EXP_NAME, 'Real')) |
| | os.mkdir(os.path.join('saved_images', EXP_NAME, 'Fake')) |
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