Augmentations
Vision
Contains augmentations for computer vision tasks.
PixMix
- class pytorch_ood.augment.img.PixMixDataset(dataset, mixing_set, beta=3, aug_severity=3, k=4, std=(1.0, 1.0, 1.0), mean=(1.0, 1.0, 1.0))[source]
Dataset wrapper to perform PixMix, from the paper PixMix: Dreamlike Pictures Comprehensively Improve Safety Measures.
- See Paper:
Note
Some of the augmentations primitives used in the paper are not yet implemented.
- Parameters:
dataset – original dataset
mixing_set – dataset used for mixing
beta – mixing coefficient
aug_severity – severity used for augmentation primitives
k – number of mixing iterations
mean – used for normalization
std – used for normalization
InsertCOCO
- class pytorch_ood.augment.img.InsertCOCO(coco_dir: str, p: float = 0.1, n: int = 1, exclude_classes: List[str] | str | None = None, annotation_per_image: int = 1, ood_mask_value: int = -1, upscale: float = 1.4150357439499515, year: int = 2017, min_img_size: int = 480, download: bool = False)[source]
Transformation that inserts cropped COCO objects into images, marking the corresponding pixels of a segmentation mask as OOD.
The inserted objects can be used as synthetic OOD objects for supervised training of OOD detectors.
This was proposed in the paper Entropy Maximization and Meta Classification for Out-Of-Distribution Detection in Semantic Segmentation.
insert_coco = InsertCOCO( coco_dir="data/coco", exclude_classes=["train", "bicycle"], p=0.1 ) img, mask = insert_coco(img, mask)
- See Paper:
- Parameters:
coco_dir – Directory to store the coco dataset
p – Probability of inserting an OOD object to the image
n – Number of inserted OOD objects per image
exclude_classes – List of classes that should not be used for the OOD generation. Can also be one of
bddAnomalyorStreethazards.annotation_per_image – Number of different annotation that are used for the ood object per coco image. (E.g. if there are 2 elephants on a COCO image, if this parameter is 1, only 1 elephant is inserted)
ood_mask_value – Value of the OOD segmentation mask pixels
upscale – Upscale factor for the OOD object
year – Year of the coco dataset
min_img_size – Minimum size of the used coco image
download – Set
Trueto automatically download the COCO dataset