feat(generator): add 5-point gaussian smoothing on lateral
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@@ -10,6 +10,7 @@ Pipeline:
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a. Endpoint snapping: force first=(0,0), last=(1,0), lerp last 6 points.
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a. Endpoint snapping: force first=(0,0), last=(1,0), lerp last 6 points.
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b. Smooth start: dampen lateral near start (first 4 points).
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b. Smooth start: dampen lateral near start (first 4 points).
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c. Enforce forward monotonicity (prevent x-axis jitter).
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c. Enforce forward monotonicity (prevent x-axis jitter).
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d. 5-point gaussian smooth on lateral (preserve endpoints).
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6. Temporal post-processing:
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6. Temporal post-processing:
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a. Clip log_dt to [0, 5] to prevent exponential explosion.
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a. Clip log_dt to [0, 5] to prevent exponential explosion.
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(speed profile and median±1.1 hard clip removed in 2026-05 refactor —
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(speed profile and median±1.1 hard clip removed in 2026-05 refactor —
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@@ -73,6 +74,35 @@ def _sample_duration(duration_dist: dict, dist: float) -> float:
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return float(np.exp(np.random.normal(mu_log, sigma_log)))
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return float(np.exp(np.random.normal(mu_log, sigma_log)))
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# ---------------------------------------------------------------------------
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# Smoothing helper
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# ---------------------------------------------------------------------------
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def _gaussian_smooth(x: np.ndarray, sigma: float = 1.0) -> np.ndarray:
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"""5-point gaussian smoothing along a 1-D array, preserving endpoints.
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Args:
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x: 1-D input array.
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sigma: Gaussian std (px); larger = more smoothing. Default 1.0 gives
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weights ≈ [0.054, 0.244, 0.403, 0.244, 0.054].
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Returns:
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Smoothed array of the same shape. x[0] and x[-1] are unchanged.
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If len(x) < 5, returns x unchanged (kernel won't fit).
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"""
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if len(x) < 5:
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return x.copy()
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kernel = np.exp(-0.5 * (np.arange(-2, 3) / sigma) ** 2)
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kernel /= kernel.sum()
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# Pad with edge values to avoid boundary artifacts, then slice back
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padded = np.pad(x, pad_width=2, mode="edge")
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smoothed = np.convolve(padded, kernel, mode="valid")
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smoothed[0] = x[0]
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smoothed[-1] = x[-1]
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return smoothed
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# ---------------------------------------------------------------------------
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# ---------------------------------------------------------------------------
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# Main generate function
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# Main generate function
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# ---------------------------------------------------------------------------
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# ---------------------------------------------------------------------------
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@@ -245,6 +275,9 @@ def generate(
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forward[0] = 0.0
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forward[0] = 0.0
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forward[-1] = 1.0
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forward[-1] = 1.0
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# Lateral 5-point gaussian smoothing (endpoints preserved)
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lateral = _gaussian_smooth(lateral, sigma=1.0)
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# ------------------------------------------------------------------
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# ------------------------------------------------------------------
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# Temporal post-processing (log_dt)
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# Temporal post-processing (log_dt)
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# ------------------------------------------------------------------
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# ------------------------------------------------------------------
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@@ -124,3 +124,35 @@ class TestPostProcessing:
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if len(values) > 1:
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if len(values) > 1:
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return # at least one position has variation — pass
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return # at least one position has variation — pass
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pytest.fail("All 5 Δt sequences are identical at every position — diversity collapsed")
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pytest.fail("All 5 Δt sequences are identical at every position — diversity collapsed")
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class TestGaussianSmooth:
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def test_endpoints_preserved(self):
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from ai_mouse.generator import _gaussian_smooth
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x = np.array([1.0, 5.0, 3.0, 7.0, 2.0], dtype=np.float64)
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smoothed = _gaussian_smooth(x, sigma=1.0)
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assert smoothed[0] == 1.0
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assert smoothed[-1] == 2.0
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def test_smooths_high_frequency(self):
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"""A high-frequency square wave should have reduced amplitude after smoothing."""
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from ai_mouse.generator import _gaussian_smooth
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x = np.array([0, 1, 0, 1, 0, 1, 0, 1, 0, 1], dtype=np.float64)
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smoothed = _gaussian_smooth(x, sigma=1.0)
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# Interior amplitude should be reduced
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interior_orig = x[2:-2]
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interior_smooth = smoothed[2:-2]
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assert interior_smooth.std() < interior_orig.std()
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def test_constant_signal_unchanged(self):
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from ai_mouse.generator import _gaussian_smooth
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x = np.full(20, 0.5, dtype=np.float64)
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smoothed = _gaussian_smooth(x, sigma=1.0)
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np.testing.assert_allclose(smoothed, x, rtol=1e-6)
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def test_short_array_returns_unchanged(self):
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"""Arrays shorter than the kernel are returned unchanged."""
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from ai_mouse.generator import _gaussian_smooth
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x = np.array([1.0, 2.0, 3.0], dtype=np.float64)
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smoothed = _gaussian_smooth(x, sigma=1.0)
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np.testing.assert_allclose(smoothed, x, rtol=1e-6)
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