"""Tests for the invisible watermark engine (unit tests, no GPU required).""" from __future__ import annotations from remove_ai_watermarks.invisible_engine import InvisibleEngine, _target_size, is_available class TestIsAvailable: """Tests for dependency checking.""" def test_returns_bool(self): result = is_available() assert isinstance(result, bool) def test_available_reflects_dependencies(self): """is_available() is True iff torch + diffusers (the gpu extra) import. Must not assume the full stack: the core+dev CI env has no diffusers. """ import importlib.util expected = all(importlib.util.find_spec(m) is not None for m in ("torch", "diffusers")) assert is_available() is expected class TestInvisibleEngineInit: """Tests for InvisibleEngine construction (no GPU required).""" def test_default_model_id(self): # SDXL base became the default in May 2026 (defeats SynthID v2). assert InvisibleEngine.DEFAULT_MODEL_ID == "stabilityai/stable-diffusion-xl-base-1.0" class TestTargetSize: """Regression guard for the native-resolution decision (issues #10 / #15). max_resolution=0 must NOT downscale -- the forced downscale->upscale round-trip was the quality loss in #10, and downscaling at all let SynthID survive in #15 (the native SDXL pass at strength ~0.05 is what defeats it). """ def test_native_default_no_downscale(self): # The default (0) means native resolution: no resize, regardless of size. assert _target_size(4096, 4096, 0) is None assert _target_size(123, 456, 0) is None def test_negative_cap_treated_as_native(self): assert _target_size(4096, 4096, -1) is None def test_cap_below_long_side_downscales(self): # 2000x1000, cap 1024 -> long side scaled to 1024, aspect preserved. assert _target_size(2000, 1000, 1024) == (1024, 512) def test_cap_uses_long_side_for_portrait(self): # Portrait: height is the long side, so it drives the ratio. assert _target_size(1000, 2000, 1024) == (512, 1024) def test_cap_at_or_above_long_side_no_downscale(self): # Already within the cap (and exactly equal) -> no resize. assert _target_size(800, 600, 1024) is None assert _target_size(1024, 768, 1024) is None def test_integer_truncation_matches_pil_call_site(self): # 1254x1254 (the gpt-image sample) capped at 1000: int(1254*1000/1254)=1000. assert _target_size(1254, 1254, 1000) == (1000, 1000) # Non-divisible ratio truncates toward zero like int() at the call site. assert _target_size(1000, 333, 500) == (500, 166) def test_extreme_aspect_ratio_clamps_short_side_to_one(self): # 5000x3 capped at 1024: int(3 * 1024/5000) = 0 would crash resize(); # the short side must clamp to 1, never 0. assert _target_size(5000, 3, 1024) == (1024, 1) assert _target_size(3, 5000, 1024) == (1, 1024) # ── min_resolution floor (small inputs upscaled so SDXL runs near 1024) ── def test_floor_default_off(self): # min_resolution defaults to 0 -> no upscale, preserving legacy behavior. assert _target_size(381, 512, 0) is None def test_floor_upscales_small_input(self): # 381x512 portrait, floor 1024 -> long side 512 scaled up to 1024 (x2). assert _target_size(381, 512, 0, 1024) == (762, 1024) # Landscape: width is the long side. assert _target_size(512, 381, 0, 1024) == (1024, 762) def test_floor_rounds_short_side(self): # 333x500, floor 1024: ratio 2.048 -> 333*2.048=681.98 rounds to 682. assert _target_size(333, 500, 0, 1024) == (682, 1024) def test_floor_no_op_at_or_above_floor(self): # Long side already >= floor -> no upscale (and no cap set -> native). assert _target_size(1024, 768, 0, 1024) is None assert _target_size(2000, 1000, 0, 1024) is None def test_cap_takes_precedence_over_floor(self): # A huge input with both set: the cap downscales; the floor never fires. assert _target_size(2000, 1000, 1024, 1024) == (1024, 512) def test_floor_skipped_on_min_above_max_misconfig(self): # min(1024) > max(800) is a misconfig: the floor must not upscale above the # cap, so it is skipped and the (within-cap) input stays native. assert _target_size(500, 400, 800, 1024) is None