Files
remove-ai-watermarks/tests/test_pill_engine.py
T
Victor Kuznetsov 178fed69a7 fix(visible): thread detection into mask + guard removal/IO edge cases
Resolve 10 code-review findings on the v0.14.0 localize->fill path, several
release-blocking:

- gemini: build the removal mask from the decision's provenance-aware region
  instead of a strict internal re-detect. A relaxed/assume_ai sparkle was
  re-demoted by the FP gate into a None mask and reported removed while left in
  the image; this also drops the redundant double-detect.
- registry: report a mark removed only when a fill actually happened (remove()
  returns a None region for an empty mask), so a no-op is never claimed.
- api/cli: add write_noop so the CLI `visible` no-mark path writes nothing and
  cannot clobber a pre-existing -o file (was write-then-unlink -> data loss);
  create output.parent; skip the same-file copy (SameFileError on in-place).
- cli: catch the missing migan/lama backend RuntimeError on the visible/all
  paths (matches `erase`); route the single-mark relaxation through the shared
  resolve_relax instead of an inline copy.
- metadata: keep_standard=False no longer takes the AI-only lossless JPEG
  short-circuit (it left standard metadata); defer a malformed-marker JPEG to
  the PIL fallback instead of reporting a partial strip as complete.
- invisible: register the HEIF opener before Image.open (HEIC --force) and
  RGB-convert before the PNG temp (CMYK JPEG).
- pill: normalize via to_bgr so a 4-channel BGRA array cannot crash cvtColor.

Regression tests for each; docs synced (resolve_relax, write_noop,
best_auto_mark -> detect_marks).

Co-Authored-By: Claude Opus 4.8 <noreply@anthropic.com>
2026-07-09 16:14:46 +03:00

187 lines
8.6 KiB
Python

"""Jimeng-basic 'AI生成' pill: capture-less mark (detect via synthetic silhouette
edge-NCC, remove via inpaint). No model download -- cv2 fallback / pure logic only."""
from __future__ import annotations
import numpy as np
import pytest
from PIL import Image, ImageDraw, ImageFont
from remove_ai_watermarks import watermark_registry as registry
from remove_ai_watermarks.pill_engine import _DETECT_THRESHOLD, PillEngine
_FONT = "/System/Library/Fonts/STHeiti Medium.ttc"
def _font_ok() -> bool:
try:
ImageFont.truetype(_FONT, 20)
return True
except Exception:
return False
_HAS_FONT = _font_ok()
_needs_font = pytest.mark.skipif(
not _HAS_FONT, reason="CJK font unavailable (compose helper needs it; asset is committed)"
)
def _compose_pill(w: int = 1200, h: int = 1600, bg: int = 150) -> np.ndarray:
"""Composite a semi-transparent 'AI生成' pill top-left onto a flat BGR frame."""
img = Image.new("RGB", (w, h), (bg, bg, bg))
ov = Image.new("RGBA", (w, h), (0, 0, 0, 0))
d = ImageDraw.Draw(ov)
mw, mh = int(0.167 * w), int(0.09 * w)
mx, my = int(0.03 * w), int(0.02 * w)
d.rounded_rectangle([mx, my, mx + mw, my + mh], radius=mh // 3, outline=(255, 255, 255, 150), width=3)
font = ImageFont.truetype(_FONT, int(mh * 0.5))
d.text((mx + mw // 6, my + mh // 5), "AI生成", font=font, fill=(255, 255, 255, 170))
out = Image.alpha_composite(img.convert("RGBA"), ov).convert("RGB")
return np.asarray(out)[:, :, ::-1].copy() # RGB->BGR
class TestPillDetect:
@_needs_font
def test_detects_composited_pill(self) -> None:
det = PillEngine().detect(_compose_pill())
assert det.detected
assert det.confidence >= _DETECT_THRESHOLD
def test_clean_frame_does_not_fire(self) -> None:
clean = np.full((1600, 1200, 3), 150, np.uint8)
assert not PillEngine().detect(clean).detected
def test_small_image_no_fire(self) -> None:
assert not PillEngine().detect(np.full((40, 40, 3), 150, np.uint8)).detected
def _textured_frame(w: int = 300, h: int = 400, bg: int = 150) -> np.ndarray:
"""Flat frame with a high-frequency checkerboard over the top-left footprint,
so the pill footprint reads as TEXTURED (an inpaint there would smear)."""
img = np.full((h, w, 3), bg, np.uint8)
fx, fy, fw, fh = int(0.012 * w), int(0.006 * h), int(0.205 * w), int(0.115 * w)
yy, xx = np.mgrid[0:fh, 0:fw]
checker = (((xx // 3) + (yy // 3)) % 2 * 255).astype(np.uint8)
img[fy : fy + fh, fx : fx + fw] = checker[:, :, None]
return img
class TestPillMask:
def test_footprint_mask_top_left_geometry(self) -> None:
mask = PillEngine().footprint_mask(np.full((1600, 1200, 3), 150, np.uint8))
assert mask is not None
assert mask.shape == (1600, 1200)
assert mask.any()
ys, xs = np.where(mask > 0)
# pill sits top-left: mask mass in the top-left quadrant
assert ys.mean() < 800
assert xs.mean() < 600
class TestFootprintFlatness:
"""The metadata-only pill arm removes only on a flat footprint (safe inpaint)."""
def test_flat_frame_is_flat(self) -> None:
assert PillEngine().footprint_is_flat(np.full((1600, 1200, 3), 150, np.uint8))
def test_textured_frame_is_not_flat(self) -> None:
eng = PillEngine()
assert not eng.footprint_is_flat(_textured_frame(1200, 1600))
# median-Sobel texture is well above the flat threshold on the checkerboard
assert eng.footprint_texture(_textured_frame(1200, 1600)) > 6.0
class TestPillRegistry:
def test_pill_registered_top_left(self) -> None:
m = registry.get_mark("jimeng_pill")
assert m.location == "top-left"
assert m.in_auto is True
def test_pill_mask_is_top_left_via_registry(self) -> None:
# The registry mask callable delegates to the pill engine's top-left footprint.
mask = registry.get_mark("jimeng_pill")._mask(np.full((1600, 1200, 3), 150, np.uint8))
assert mask is not None
assert mask.any()
class TestPillGate:
"""Pill removal is gated (``_keep_pill``): the reliable bottom-right wordmark
removes it unrestricted, the metadata (``"jimeng"`` provenance) / assume_ai arm
removes it ONLY on a flat footprint (safe fill), Doubao/no-confirmation never
remove it. Fakes each mark's detect so no image content is needed; cv2 backend so
nothing downloads. Frame flatness matters, so tests pass a flat or textured frame."""
@staticmethod
def _fakes(monkeypatch: pytest.MonkeyPatch, keys: set[str]) -> None:
from remove_ai_watermarks.watermark_registry import KnownMark, MarkDetection
labels = {
"doubao": "Doubao 豆包AI生成 text",
"jimeng": "Jimeng 即梦AI wordmark",
"jimeng_pill": "Jimeng AI生成 pill",
}
monkeypatch.setattr(registry, "preferred_inpaint_backend", lambda: "cv2")
def fake_detect(self: KnownMark, image: object, *, provenance: bool = False) -> MarkDetection:
return MarkDetection(
self.key, labels.get(self.key, self.key), "loc", self.key in keys, 0.6, (10, 10, 40, 40)
)
monkeypatch.setattr(registry.KnownMark, "detect", fake_detect)
def test_pill_kept_with_metadata_on_flat_footprint(self, monkeypatch: pytest.MonkeyPatch) -> None:
# jimeng provenance (TC260) + flat background -> safe fill, remove
self._fakes(monkeypatch, {"jimeng_pill"})
_, removed = registry.remove_auto_marks(np.full((400, 300, 3), 150, np.uint8), provenance=frozenset({"jimeng"}))
assert "Jimeng AI生成 pill" in removed
def test_pill_dropped_with_metadata_on_textured_footprint(self, monkeypatch: pytest.MonkeyPatch) -> None:
# jimeng provenance + textured background (ceiling-like) -> fill would smear, skip
self._fakes(monkeypatch, {"jimeng_pill"})
_, removed = registry.remove_auto_marks(_textured_frame(), provenance=frozenset({"jimeng"}))
assert "Jimeng AI生成 pill" not in removed
def test_pill_kept_via_wordmark_ignores_texture(self, monkeypatch: pytest.MonkeyPatch) -> None:
# wordmark confirmation (~94% precise, survives metadata stripping) is NOT
# texture-gated: a wordmark-confirmed pill is removed even on a textured frame
self._fakes(monkeypatch, {"jimeng", "jimeng_pill"})
_, removed = registry.remove_auto_marks(_textured_frame())
assert "Jimeng AI生成 pill" in removed
def test_pill_kept_via_assume_ai_on_flat_footprint(self, monkeypatch: pytest.MonkeyPatch) -> None:
# assume_ai (no metadata) removes the pill on a flat footprint (safe fill)...
self._fakes(monkeypatch, {"jimeng_pill"})
_, removed = registry.remove_auto_marks(np.full((400, 300, 3), 150, np.uint8), sensitivity="assume_ai")
assert "Jimeng AI生成 pill" in removed
def test_pill_dropped_via_assume_ai_on_textured_footprint(self, monkeypatch: pytest.MonkeyPatch) -> None:
# ...but even assume_ai keeps the flatness guard (textured false fires smear).
self._fakes(monkeypatch, {"jimeng_pill"})
_, removed = registry.remove_auto_marks(_textured_frame(), sensitivity="assume_ai")
assert "Jimeng AI生成 pill" not in removed
def test_pill_dropped_without_metadata_or_wordmark(self, monkeypatch: pytest.MonkeyPatch) -> None:
self._fakes(monkeypatch, {"jimeng_pill"})
_, removed = registry.remove_auto_marks(np.full((400, 300, 3), 150, np.uint8))
assert "Jimeng AI生成 pill" not in removed
def test_pill_dropped_on_doubao_even_with_metadata(self, monkeypatch: pytest.MonkeyPatch) -> None:
# doubao is faked as detected, which drives the pill gate (pill never rides on a
# Doubao detection). The same flat + jimeng-metadata setup WITHOUT doubao keeps the
# pill (test_pill_kept_with_metadata_on_flat_footprint), so doubao is the
# differentiator. Doubao itself is not asserted in `removed` here: this synthetic
# frame is flat with no real glyph, so the text mask has nothing to fill (its real
# removal is covered by TestRealSample on the committed doubao sample).
self._fakes(monkeypatch, {"doubao", "jimeng_pill"})
_, removed = registry.remove_auto_marks(np.full((400, 300, 3), 150, np.uint8), provenance=frozenset({"jimeng"}))
assert "Jimeng AI生成 pill" not in removed
def test_detect_bgra_no_crash() -> None:
# A 4-channel BGRA array must be normalized, not crash cv2.cvtColor(BGR2GRAY) (#10).
bgra = np.zeros((256, 256, 4), np.uint8)
det = PillEngine().detect(bgra)
assert det.detected in (True, False)
assert PillEngine().footprint_texture(bgra) >= 0.0