import datasets from datasets.data_files import DataFilesDict from datasets.packaged_modules.imagefolder.imagefolder import ImageFolder, ImageFolderConfig logger = datasets.logging.get_logger(__name__) class GTSRB(ImageFolder): R""" DTD dataset for image classification. """ BUILDER_CONFIG_CLASS = ImageFolderConfig BUILDER_CONFIGS = [ ImageFolderConfig( name="default", features=("images", "labels"), data_files=DataFilesDict({split: f"data/{split}.zip" for split in ["train", "test"]}), ) ] classnames = [ "banded", "blotchy", "braided", "bubbly", "bumpy", "chequered", "cobwebbed", "cracked", "crosshatched", "crystalline", "dotted", "fibrous", "flecked", "freckled", "frilly", "gauzy", "grid", "grooved", "honeycombed", "interlaced", "knitted", "lacelike", "lined", "marbled", "matted", "meshed", "paisley", "perforated", "pitted", "pleated", "polka-dotted", "porous", "potholed", "scaly", "smeared", "spiralled", "sprinkled", "stained", "stratified", "striped", "studded", "swirly", "veined", "waffled", "woven", "wrinkled", "zigzagged", ] clip_templates = [ lambda c: f"a photo of a {c} texture.", lambda c: f"a photo of a {c} pattern.", lambda c: f"a photo of a {c} thing.", lambda c: f"a photo of a {c} object.", lambda c: f"a photo of the {c} texture.", lambda c: f"a photo of the {c} pattern.", lambda c: f"a photo of the {c} thing.", lambda c: f"a photo of the {c} object.", ] def _info(self): return datasets.DatasetInfo( description="DTD dataset for image classification.", features=datasets.Features( { "image": datasets.Image(), "label": datasets.ClassLabel(names=self.classnames), } ), supervised_keys=("image", "label"), task_templates=[datasets.ImageClassification(image_column="image", label_column="label")], )