"""Tests for physics-aware augmentations.""" from __future__ import annotations import numpy as np import pytest from dipauglib.transforms.physics import ( CastShadow, ColourFade, ColourTempShift, DefocusBlur, DustOverlay, IlluminationGradient, MotionBlur, SensorNoise, ) TRANSFORMS = [ IlluminationGradient, CastShadow, MotionBlur, DefocusBlur, ColourTempShift, ColourFade, DustOverlay, SensorNoise, ] @pytest.mark.parametrize("transform_cls", TRANSFORMS) def test_transform_preserves_shape_and_mask(transform_cls): image = np.full((32, 32, 3), 128, dtype=np.uint8) mask = np.zeros((32, 32), dtype=np.uint8) mask[8:20, 10:22] = 1 transform = transform_cls(intensity=0.5, p=1.0) output = transform(image=image, mask=mask) assert output["image"].shape == image.shape assert output["mask"].shape == mask.shape assert np.array_equal(output["mask"], mask) @pytest.mark.parametrize("transform_cls", TRANSFORMS) def test_transform_handles_all_black_image(transform_cls): image = np.zeros((24, 24, 3), dtype=np.uint8) mask = np.zeros((24, 24), dtype=np.uint8) transform = transform_cls(intensity=1.0, p=1.0) output = transform(image=image, mask=mask) assert output["image"].shape == image.shape assert output["mask"].shape == mask.shape @pytest.mark.parametrize("transform_cls", TRANSFORMS) def test_transform_handles_single_pixel_image(transform_cls): image = np.array([[[255, 0, 0]]], dtype=np.uint8) mask = np.array([[1]], dtype=np.uint8) transform = transform_cls(intensity=0.2, p=1.0) output = transform(image=image, mask=mask) assert output["image"].shape == image.shape assert output["mask"].shape == mask.shape