mirror of
https://github.com/wiltodelta/remove-ai-watermarks.git
synced 2026-07-12 19:16:32 +02:00
1a955b096a
- Replace reverse-alpha removal with localize -> fill (template-free mask + one shared cv2/MI-GAN/big-LaMa fill) for every mark; drops the colour-shift / dark-pit failure modes, version-robust to a moved or re-rendered mark - Separate perception/decision/action: engines report Candidates, a pure decide(candidates, Context) arbiter owns all policy (sensitivity + provenance + pill gate), remove_auto_marks orchestrates -- behavior-preserving (corpus 46/46/92) - Three orthogonal knobs replace --method: --backend cv2|migan|lama, --sensitivity auto|strict|assume-ai, provenance (auto from metadata) - Add high-level api.remove_visible / visible_provenance (lazy top-level re-export); visible --mark auto delegates to it so CLI and library share ONE path - Read+write HEIC/AVIF on the pixel path via pillow-heif; imwrite preserves the input format at max quality (JPEG q100/4:4:4); a no-op copies the original bytes verbatim - Lossless byte-level JPEG metadata strip (no DCT re-encode); consolidate the two remove_ai_metadata into one, delete legacy noai/cleaner + best_auto_mark - Bump 0.13.0 -> 0.14.0 Co-Authored-By: Claude Opus 4.8 <noreply@anthropic.com>
169 lines
6.7 KiB
Python
169 lines
6.7 KiB
Python
"""Tests for the Jimeng (即梦AI) visible-watermark engine.
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No real Jimeng sample is committed (the captures are gitignored, repo is public),
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so detection/removal is exercised against a watermark synthesized from the bundled
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alpha asset itself -- self-consistent and download-free.
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"""
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from __future__ import annotations
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import cv2
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import numpy as np
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import pytest
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from remove_ai_watermarks import watermark_registry as registry
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from remove_ai_watermarks.jimeng_engine import (
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_ALPHA_HEIGHT_FRAC,
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_ALPHA_NATIVE_WIDTH,
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_ALPHA_WIDTH_FRAC,
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DETECT_NCC_THRESHOLD,
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JimengEngine,
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_alpha_template,
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_glyph_silhouette,
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_template_match_score,
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)
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def _compose(w: int, h: int, bg: float = 100.0):
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"""Composite the real alpha (scaled to width ``w``) onto a flat bg by the
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engine's fixed geometry. Returns ``(watermarked_uint8, mark_bool_mask)``."""
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img = np.full((h, w, 3), bg, np.float32)
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at = _alpha_template()
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gw, gh = int(_ALPHA_WIDTH_FRAC * w), int(_ALPHA_HEIGHT_FRAC * w)
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margin = int(0.015 * w)
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ax = w - margin - gw
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ay = h - margin - gh
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amap = np.zeros((h, w), np.float32)
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amap[ay : ay + gh, ax : ax + gw] = cv2.resize(at, (gw, gh))
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a3 = amap[:, :, None]
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wm = (a3 * 255.0 + (1 - a3) * img).clip(0, 255).astype(np.uint8)
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return wm, amap > 0.2
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class TestLocate:
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def test_box_anchored_bottom_right(self):
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eng = JimengEngine()
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img = np.zeros((2048, 2048, 3), np.uint8)
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loc = eng.locate(img)
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assert 2048 - (loc.x + loc.w) < int(2048 * 0.03)
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assert 2048 - (loc.y + loc.h) < int(2048 * 0.03)
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def test_box_scales_with_width(self):
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eng = JimengEngine()
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small = eng.locate(np.zeros((1024, 1024, 3), np.uint8))
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large = eng.locate(np.zeros((2048, 2048, 3), np.uint8))
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assert large.w == pytest.approx(small.w * 2, rel=0.1)
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class TestDetect:
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def test_clean_gradient_not_detected(self):
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eng = JimengEngine()
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ramp = np.tile(np.linspace(0, 255, 1024, dtype=np.uint8), (1024, 1))
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img = cv2.cvtColor(ramp, cv2.COLOR_GRAY2BGR)
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assert not eng.detect(img).detected
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def test_solid_blob_corner_not_detected(self):
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"""A bright blob is not the glyph shape -> low correlation, not detected."""
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eng = JimengEngine()
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img = np.zeros((1024, 1024, 3), np.uint8)
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x, y, bw, bh = eng.locate(img).bbox
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img[y + bh // 4 : y + bh * 3 // 4, x : x + bw // 2] = 200
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assert not eng.detect(img).detected
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def test_silhouette_loads(self):
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sil = _glyph_silhouette()
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assert sil is not None
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assert set(np.unique(sil)).issubset({0, 255})
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def test_match_score_shape_sensitive(self):
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"""The glyph silhouette correlates with itself, not with a filled block."""
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sil = _glyph_silhouette()
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h, w = sil.shape
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box = np.zeros((h + 8, int(w / _ALPHA_WIDTH_FRAC * 0.2) + w), np.uint8)
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box[4 : 4 + h, 4 : 4 + w] = sil
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assert _template_match_score(box, _ALPHA_NATIVE_WIDTH) >= DETECT_NCC_THRESHOLD
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solid = np.full_like(box, 255)
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assert _template_match_score(solid, _ALPHA_NATIVE_WIDTH) < DETECT_NCC_THRESHOLD
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def test_small_image_guarded_from_false_positive(self):
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"""Below the minimum short side a tiny geometric shape spuriously NCC-matches
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the CJK silhouette (2026-06-26 FP: a 48x48 app-icon chevron scored 0.47). The
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size guard suppresses detection there. Bracket it: a real mark is detected at
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native size, but the same content downscaled below the guard is not."""
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wm, _mark = _compose(_ALPHA_NATIVE_WIDTH, _ALPHA_NATIVE_WIDTH)
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eng = JimengEngine()
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assert eng.detect(wm).detected # native: real mark detected
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assert not eng.detect(cv2.resize(wm, (150, 150))).detected # below guard: suppressed
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def test_synthetic_mark_detected(self):
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"""A watermark composed from the real alpha is detected at its threshold."""
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eng = JimengEngine()
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wm, _mark = _compose(_ALPHA_NATIVE_WIDTH, _ALPHA_NATIVE_WIDTH)
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det = eng.detect(wm)
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assert det.detected
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assert det.confidence >= DETECT_NCC_THRESHOLD
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class TestAlphaAssetAndRemoval:
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def test_alpha_asset_loads(self):
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at = _alpha_template()
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assert at is not None
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assert at.dtype.kind == "f"
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assert float(at.min()) >= 0.0
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assert float(at.max()) <= 1.0
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def test_footprint_mask_in_bottom_right(self):
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wm, _mark = _compose(_ALPHA_NATIVE_WIDTH, _ALPHA_NATIVE_WIDTH)
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mask = JimengEngine().footprint_mask(wm)
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assert mask is not None
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assert mask.shape == wm.shape[:2]
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ys, xs = np.where(mask > 0)
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assert ys.mean() > wm.shape[0] / 2
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assert xs.mean() > wm.shape[1] / 2
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def test_removes_synthetic_mark(self):
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"""localize -> cv2 fill clears the composed mark (re-detect no longer fires)."""
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wm, _mark = _compose(_ALPHA_NATIVE_WIDTH, _ALPHA_NATIVE_WIDTH)
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assert JimengEngine().detect(wm).detected
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out, region = registry.get_mark("jimeng").remove(wm, backend="cv2")
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assert region is not None
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assert not JimengEngine().detect(out).detected
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@pytest.mark.parametrize(
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("w", "h"),
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[
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(_ALPHA_NATIVE_WIDTH, _ALPHA_NATIVE_WIDTH), # captured width
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(1440, 2560), # off-native -> template-free footprint generalizes
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],
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)
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def test_fill_removes_and_leaves_far_region(self, w, h):
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wm, mark = _compose(w, h)
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assert float(np.abs(wm.astype(np.float32)[mark] - 100.0).mean()) > 15 # mark visible
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before = JimengEngine().detect(wm)
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out, _ = registry.get_mark("jimeng").remove(wm, backend="cv2")
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assert JimengEngine().detect(out).confidence < before.confidence
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assert np.array_equal(out[: h // 2, : w // 2], wm[: h // 2, : w // 2])
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class TestDegenerateAndChannelInputs:
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"""footprint_mask must not crash on degenerate sizes or non-3-channel inputs."""
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@pytest.mark.parametrize(("w", "h"), [(2048, 1), (1, 2048), (2048, 8)])
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def test_wide_short_does_not_raise(self, w, h):
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eng = JimengEngine()
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img = np.zeros((h, w, 3), np.uint8)
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mask = eng.footprint_mask(img, force=True)
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assert mask is None or mask.shape == (h, w)
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def test_grayscale_2d_does_not_raise(self):
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eng = JimengEngine()
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gray = np.zeros((2048, 2048), np.uint8)
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mask = eng.footprint_mask(gray, force=True)
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assert mask is None or mask.shape == (2048, 2048)
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def test_bgra_4channel_does_not_raise(self):
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eng = JimengEngine()
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bgra = np.zeros((2048, 2048, 4), np.uint8)
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mask = eng.footprint_mask(bgra, force=True)
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assert mask is None or mask.shape == (2048, 2048)
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