update blind estimate to output a confidence map as a mask

This commit is contained in:
2026-03-29 22:10:19 -07:00
parent 1df4df2811
commit e84b6c033e
2 changed files with 13 additions and 14 deletions

View File

@@ -480,7 +480,7 @@ class BlindTipEstimate:
OUTPUTS = ( OUTPUTS = (
('DATA_FIELD', 'tip'), ('DATA_FIELD', 'tip'),
('DATA_FIELD', 'certainty'), ('IMAGE', 'certainty'),
) )
FUNCTION = "process" FUNCTION = "process"
@@ -574,9 +574,7 @@ class BlindTipEstimate:
cmap_thresh = 50.0 * step cmap_thresh = 50.0 * step
cmap_data = _certainty_map_fast(surf, tip_data, rsurf, xc, yc, cmap_thresh) cmap_data = _certainty_map_fast(surf, tip_data, rsurf, xc, yc, cmap_thresh)
cmap_field = field.replace( # Convert the binary 0/1 float map to a uint8 mask (0 = uncertain, 255 = certain).
data=cmap_data, cmap_mask = (cmap_data * 255).astype(np.uint8)
si_unit_z="", # certainty is dimensionless
)
return (tip_field, cmap_field) return (tip_field, cmap_mask)

View File

@@ -16,11 +16,12 @@ def run_blind(field, n_pixels=17, threshold=0.0, method="partial", use_edges=Fal
# ── Output types and dimensions ────────────────────────────────────────────── # ── Output types and dimensions ──────────────────────────────────────────────
def test_outputs_are_data_fields(): def test_outputs_are_correct_types():
field = make_field(shape=(32, 32), xreal=32e-9, yreal=32e-9) field = make_field(shape=(32, 32), xreal=32e-9, yreal=32e-9)
tip, certainty = run_blind(field, n_pixels=9) tip, certainty = run_blind(field, n_pixels=9)
assert isinstance(tip, DataField) assert isinstance(tip, DataField)
assert isinstance(certainty, DataField) assert isinstance(certainty, np.ndarray)
assert certainty.dtype == np.uint8
def test_tip_output_shape(): def test_tip_output_shape():
@@ -40,16 +41,16 @@ def test_tip_n_pixels_even_bumped():
def test_certainty_output_matches_field_shape(): def test_certainty_output_matches_field_shape():
field = make_field(shape=(48, 64)) field = make_field(shape=(48, 64))
_, certainty = run_blind(field, n_pixels=9) _, certainty = run_blind(field, n_pixels=9)
assert certainty.data.shape == field.data.shape assert certainty.shape == field.data.shape
def test_certainty_is_binary(): def test_certainty_is_binary():
"""Certainty map values must all be 0.0 or 1.0.""" """Certainty mask values must all be 0 or 255."""
field = make_field(shape=(32, 32), xreal=32e-9, yreal=32e-9) field = make_field(shape=(32, 32), xreal=32e-9, yreal=32e-9)
_, certainty = run_blind(field, n_pixels=9) _, certainty = run_blind(field, n_pixels=9)
vals = np.unique(certainty.data) vals = np.unique(certainty)
for v in vals: for v in vals:
assert v in (0.0, 1.0), f"Non-binary certainty value: {v}" assert v in (0, 255), f"Non-binary certainty value: {v}"
# ── Tip conventions ─────────────────────────────────────────────────────────── # ── Tip conventions ───────────────────────────────────────────────────────────
@@ -137,7 +138,7 @@ def test_full_method_runs():
field = make_field(shape=(24, 24), xreal=24e-9, yreal=24e-9) field = make_field(shape=(24, 24), xreal=24e-9, yreal=24e-9)
tip, certainty = run_blind(field, n_pixels=7, method="full") tip, certainty = run_blind(field, n_pixels=7, method="full")
assert isinstance(tip, DataField) assert isinstance(tip, DataField)
assert isinstance(certainty, DataField) assert isinstance(certainty, np.ndarray)
# ── Certainty increases with sharp features ─────────────────────────────────── # ── Certainty increases with sharp features ───────────────────────────────────
@@ -165,4 +166,4 @@ def test_certainty_nonzero_for_sharp_image():
measured = make_field(data=measured_data, xreal=n * pixel_size, yreal=n * pixel_size) measured = make_field(data=measured_data, xreal=n * pixel_size, yreal=n * pixel_size)
_, certainty = run_blind(measured, n_pixels=17, method="partial") _, certainty = run_blind(measured, n_pixels=17, method="partial")
assert certainty.data.sum() > 0, "No certain pixels found for a sharp image" assert certainty.sum() > 0, "No certain pixels found for a sharp image"