"""Tests for the universal region eraser.""" from __future__ import annotations import numpy as np import pytest from remove_ai_watermarks.region_eraser import boxes_to_mask, erase, lama_available, migan_available class TestBoxesToMask: def test_mask_set_inside_box(self): mask = boxes_to_mask((100, 100), [(10, 20, 30, 40)], dilate=0) assert mask[25, 15] == 255 # inside assert mask[0, 0] == 0 # outside assert mask.shape == (100, 100) def test_multiple_boxes(self): mask = boxes_to_mask((100, 100), [(0, 0, 10, 10), (90, 90, 10, 10)], dilate=0) assert mask[5, 5] == 255 assert mask[95, 95] == 255 assert mask[50, 50] == 0 def test_dilate_grows_mask(self): m0 = boxes_to_mask((100, 100), [(40, 40, 10, 10)], dilate=0) m5 = boxes_to_mask((100, 100), [(40, 40, 10, 10)], dilate=5) assert m5.sum() > m0.sum() def test_box_clipped_to_bounds(self): # box partly outside the image must not raise and stays in-bounds mask = boxes_to_mask((50, 50), [(40, 40, 100, 100)], dilate=0) assert mask[45, 45] == 255 class TestEraseCv2: def _image_with_logo(self) -> tuple[np.ndarray, tuple[int, int, int, int]]: img = np.full((200, 200, 3), 120, np.uint8) # flat gray background box = (140, 160, 50, 30) x, y, w, h = box img[y : y + h, x : x + w] = (255, 255, 255) # bright "logo" return img, box def test_erase_changes_region(self): img, box = self._image_with_logo() out = erase(img, boxes=[box], backend="cv2") x, y, w, h = box # on a flat background the logo region should be repainted near gray region = out[y : y + h, x : x + w] assert abs(float(region.mean()) - 120) < 20 assert not np.array_equal(out, img) def test_pixels_outside_box_untouched(self): img, box = self._image_with_logo() out = erase(img, boxes=[box], backend="cv2", dilate=0) # a far corner must be identical assert np.array_equal(img[:50, :50], out[:50, :50]) def test_no_boxes_returns_copy(self): img = np.full((100, 100, 3), 50, np.uint8) out = erase(img, boxes=[], backend="cv2") assert np.array_equal(img, out) def test_empty_mask_returns_copy(self): img = np.full((100, 100, 3), 50, np.uint8) out = erase(img, mask=np.zeros((100, 100), np.uint8), backend="cv2") assert np.array_equal(img, out) class TestNonBgrInputs: """cv2.inpaint rejects 4-channel BGRA and 2D-only entry points must work.""" def test_grayscale_2d_does_not_raise(self): gray = np.full((100, 100), 120, np.uint8) out = erase(gray, boxes=[(40, 40, 20, 20)], backend="cv2") assert out.shape == gray.shape def test_bgra_preserves_alpha_and_does_not_raise(self): bgra = np.full((100, 100, 4), 120, np.uint8) bgra[..., 3] = 200 # opaque-ish alpha plane out = erase(bgra, boxes=[(40, 40, 20, 20)], backend="cv2", dilate=0) assert out.shape == bgra.shape # alpha plane is carried through unchanged assert np.array_equal(out[..., 3], bgra[..., 3]) class TestLamaBackend: def test_lama_raises_when_unavailable(self): img = np.full((100, 100, 3), 50, np.uint8) if lama_available(): pytest.skip("onnxruntime installed; cannot test the unavailable path") with pytest.raises(RuntimeError, match="onnxruntime"): erase(img, boxes=[(10, 10, 20, 20)], backend="lama") class TestLamaChannelHandling: """erase_lama must accept grayscale (2D) and BGRA (4-channel) like erase_cv2. The real ONNX model is never loaded -- the session is faked to an identity inpaint, so this exercises only the channel promote/split wrapper (the fix for LaMa crashing on grayscale and dropping alpha on BGRA). """ @pytest.fixture def _fake_lama(self, monkeypatch: pytest.MonkeyPatch): from remove_ai_watermarks import region_eraser class _In: def __init__(self, name: str, shape: list[int]): self.name = name self.shape = shape class _FakeSession: def get_inputs(self): return [_In("image", [1, 3, 512, 512]), _In("mask", [1, 1, 512, 512])] def run(self, _outputs, feeds): # Identity inpaint: echo the image tensor (1,3,size,size) back. return [feeds["image"]] monkeypatch.setattr(region_eraser, "lama_available", lambda: True) monkeypatch.setattr(region_eraser, "_get_lama_session", lambda: _FakeSession()) @pytest.mark.usefixtures("_fake_lama") def test_grayscale_2d_does_not_raise(self): gray = np.full((100, 100), 120, np.uint8) out = erase(gray, boxes=[(40, 40, 20, 20)], backend="lama") assert out.ndim == 2 assert out.shape == gray.shape @pytest.mark.usefixtures("_fake_lama") def test_bgra_preserves_alpha(self): bgra = np.full((100, 100, 4), 120, np.uint8) bgra[..., 3] = 200 # opaque-ish alpha plane out = erase(bgra, boxes=[(40, 40, 20, 20)], backend="lama") assert out.shape == bgra.shape assert np.array_equal(out[..., 3], bgra[..., 3]) # alpha carried through unchanged class TestMiganBackend: def test_migan_raises_when_unavailable(self): img = np.full((100, 100, 3), 50, np.uint8) if migan_available(): pytest.skip("onnxruntime installed; cannot test the unavailable path") with pytest.raises(RuntimeError, match="onnxruntime"): erase(img, boxes=[(10, 10, 20, 20)], backend="migan") class TestMiganWrapper: """erase_migan without the real model: fake session returns a solid-red field and captures the fed mask. Exercises the mask-polarity inversion, masked-only compositing, and grayscale/BGRA channel handling.""" captured: dict @pytest.fixture def _fake_migan(self, monkeypatch: pytest.MonkeyPatch): from remove_ai_watermarks import region_eraser self.captured = {} class _In: def __init__(self, name: str): self.name = name class _FakeSession: def __init__(self, outer): self.outer = outer def get_inputs(self): return [_In("image"), _In("mask")] def run(self, _outputs, feeds): self.outer.captured["mask"] = feeds["mask"] img = feeds["image"] # (1,3,H,W) RGB red = np.zeros_like(img) red[:, 0] = 255 # pure red in RGB return [red] monkeypatch.setattr(region_eraser, "migan_available", lambda: True) monkeypatch.setattr(region_eraser, "_get_migan_session", lambda: _FakeSession(self)) @pytest.mark.usefixtures("_fake_migan") def test_composites_only_masked_region_and_inverts_mask(self): img = np.full((100, 100, 3), 120, np.uint8) # BGR out = erase(img, boxes=[(40, 40, 20, 20)], backend="migan", dilate=0) # inside the box -> red (BGR (0,0,255)); outside -> untouched assert tuple(int(v) for v in out[50, 50]) == (0, 0, 255) assert np.array_equal(out[:30, :30], img[:30, :30]) # mask fed to MI-GAN is inverted: 0 (hole) inside the box, 255 (known) outside m = self.captured["mask"][0, 0] assert m[50, 50] == 0 assert m[10, 10] == 255 @pytest.mark.usefixtures("_fake_migan") def test_grayscale_2d_does_not_raise(self): gray = np.full((100, 100), 120, np.uint8) out = erase(gray, boxes=[(40, 40, 20, 20)], backend="migan", dilate=0) assert out.ndim == 2 assert out.shape == gray.shape @pytest.mark.usefixtures("_fake_migan") def test_bgra_preserves_alpha(self): bgra = np.full((100, 100, 4), 120, np.uint8) bgra[..., 3] = 200 out = erase(bgra, boxes=[(40, 40, 20, 20)], backend="migan", dilate=0) assert out.shape == bgra.shape assert np.array_equal(out[..., 3], bgra[..., 3])