"""IAM original and sythetic dataset class.""" from typing import Dict, List import attr from torch.utils.data import ConcatDataset from text_recognizer.data.base_dataset import BaseDataset from text_recognizer.data.base_data_module import BaseDataModule, load_and_print_info from text_recognizer.data.iam_paragraphs import IAMParagraphs from text_recognizer.data.iam_synthetic_paragraphs import IAMSyntheticParagraphs @attr.s(auto_attribs=True) class IAMExtendedParagraphs(BaseDataModule): augment: bool = attr.ib(default=True) train_fraction: float = attr.ib(default=0.8) word_pieces: bool = attr.ib(default=False) def __attrs_post_init__(self) -> None: self.iam_paragraphs = IAMParagraphs( batch_size=self.batch_size, num_workers=self.num_workers, train_fraction=self.train_fraction, augment=self.augment, word_pieces=self.word_pieces, ) self.iam_synthetic_paragraphs = IAMSyntheticParagraphs( batch_size=self.batch_size, num_workers=self.num_workers, train_fraction=self.train_fraction, augment=self.augment, word_pieces=self.word_pieces, ) self.dims = self.iam_paragraphs.dims self.output_dims = self.iam_paragraphs.output_dims self.mapping = self.iam_paragraphs.mapping self.inverse_mapping = self.iam_paragraphs.inverse_mapping def prepare_data(self) -> None: """Prepares the paragraphs data.""" self.iam_paragraphs.prepare_data() self.iam_synthetic_paragraphs.prepare_data() def setup(self, stage: str = None) -> None: """Loads data for training/testing.""" self.iam_paragraphs.setup(stage) self.iam_synthetic_paragraphs.setup(stage) self.data_train = ConcatDataset( [self.iam_paragraphs.data_train, self.iam_synthetic_paragraphs.data_train] ) self.data_val = self.iam_paragraphs.data_val self.data_test = self.iam_paragraphs.data_test def __repr__(self) -> str: """Returns info about the dataset.""" basic = ( "IAM Original and Synthetic Paragraphs Dataset\n" # pylint: disable=no-member f"Num classes: {len(self.mapping)}\n" f"Dims: {self.dims}\n" f"Output dims: {self.output_dims}\n" ) if self.data_train is None and self.data_val is None and self.data_test is None: return basic x, y = next(iter(self.train_dataloader())) xt, yt = next(iter(self.test_dataloader())) data = ( f"Train/val/test sizes: {len(self.data_train)}, {len(self.data_val)}, {len(self.data_test)}\n" f"Train Batch x stats: {(x.shape, x.dtype, x.min(), x.mean(), x.std(), x.max())}\n" f"Train Batch y stats: {(y.shape, y.dtype, y.min(), y.max())}\n" f"Test Batch x stats: {(xt.shape, xt.dtype, xt.min(), xt.mean(), xt.std(), xt.max())}\n" f"Test Batch y stats: {(yt.shape, yt.dtype, yt.min(), yt.max())}\n" ) return basic + data def show_dataset_info() -> None: load_and_print_info(IAMExtendedParagraphs)