Wire CameraModel/CameraModelTolerance through BeamReconstructor

BeamReconstructor now requires camera/camera_tolerance, threading them
into ModalFitter.fit_auto and PhaseRetriever.retrieve, and uses
GeometryCalibration.effective_pixel_scale for deconvolution instead of
the removed MeasurementPlane.pixel_scale.

Co-Authored-By: Claude Sonnet 5 <noreply@anthropic.com>
This commit is contained in:
Martino Ferrari
2026-07-03 12:26:18 +02:00
parent 1d399ccc9b
commit 57dc7d743e
2 changed files with 145 additions and 28 deletions
+19 -10
View File
@@ -9,6 +9,7 @@ import numpy as np
from .data import MeasurementPlane, ReconstructionResult, validate_planes
from .deconvolution import DiffusionDeconvolver
from .fitting import ModalFitter, generate_mode_shells
from .geometry import CameraModel, CameraModelTolerance, GeometryCalibration
from .modes import LGBasis
from .noise import NoiseEstimator
from .phase_retrieval import PhaseRetriever
@@ -25,12 +26,15 @@ class BeamReconstructor:
Parameters
----------
w0, z0, wavelength : known reference beam parameters (see `LGBasis`).
camera : nominal shared CameraModel (position/orientation/intrinsics).
camera_tolerance : per-field +/- refinement bound for `camera`; a
zero-tolerance field is held fixed at its nominal value.
max_order : cap on automatic candidate-mode-set growth (see
`ModalFitter.fit_auto`), and also the mode set used to project the
phase-retrieval fallback's recovered field onto the LG basis.
noise_estimator : shared noise model; defaults to `NoiseEstimator()`.
deconvolver : if given, each plane's flux is deblurred (its
`pixel_scale` must be known) before fitting.
deconvolver : if given, each plane's flux is deblurred (using
`GeometryCalibration(camera).effective_pixel_scale`) before fitting.
force_phase_retrieval : if True, always run the phase-retrieval fallback
instead of the modal fit.
phase_retrieval_residual_threshold : if set (and `force_phase_retrieval`
@@ -43,6 +47,8 @@ class BeamReconstructor:
w0: float,
z0: float,
wavelength: float,
camera: CameraModel,
camera_tolerance: CameraModelTolerance,
max_order: int = 4,
noise_estimator: NoiseEstimator | None = None,
deconvolver: DiffusionDeconvolver | None = None,
@@ -51,6 +57,8 @@ class BeamReconstructor:
):
self.basis = LGBasis(w0=w0, z0=z0, wavelength=wavelength)
self.wavelength = wavelength
self.camera = camera
self.camera_tolerance = camera_tolerance
self.max_order = max_order
self.noise_estimator = noise_estimator or NoiseEstimator()
self.deconvolver = deconvolver
@@ -63,7 +71,9 @@ class BeamReconstructor:
planes = self._deconvolve(planes)
fitter = ModalFitter(self.basis, self.noise_estimator)
result = fitter.fit_auto(planes, max_order=self.max_order)
result = fitter.fit_auto(
planes, self.camera, self.camera_tolerance, max_order=self.max_order
)
if self.force_phase_retrieval or self._residual_too_high(result, planes):
result = self._phase_retrieval_fallback(planes)
@@ -73,13 +83,11 @@ class BeamReconstructor:
def _deconvolve(self, planes: list[MeasurementPlane]) -> list[MeasurementPlane]:
if self.deconvolver is None:
return planes
calib = GeometryCalibration(self.camera)
deblurred = []
for plane in planes:
if plane.pixel_scale is None:
raise ValueError(
"Deconvolution requires a known pixel_scale on every MeasurementPlane."
)
flux = self.deconvolver.deconvolve(plane.flux, plane.pixel_scale)
pixel_scale = calib.effective_pixel_scale(plane.flux.shape, plane.z)
flux = self.deconvolver.deconvolve(plane.flux, pixel_scale)
deblurred.append(replace(plane, flux=flux))
return deblurred
@@ -101,7 +109,7 @@ class BeamReconstructor:
self, planes: list[MeasurementPlane]
) -> ReconstructionResult:
retriever = PhaseRetriever(self.wavelength)
pr_result = retriever.retrieve(planes)
pr_result = retriever.retrieve(planes, self.camera)
modes = [mode for shell in generate_mode_shells(self.max_order) for mode in shell]
dx = float(pr_result.x[0, 1] - pr_result.x[0, 0])
@@ -116,7 +124,8 @@ class BeamReconstructor:
purity=purity,
reconstructed_field=pr_result.field,
centers=[pr_result.center for _ in planes],
pointing_angle_deg=float("nan"),
pointing_angle_horizontal_deg=float("nan"),
pointing_angle_vertical_deg=float("nan"),
geometry={},
residuals=[],
coefficient_uncertainty={mode: float("nan") for mode in modes},
+126 -18
View File
@@ -4,6 +4,7 @@ import pytest
from he11lib.deconvolution import DiffusionDeconvolver
from he11lib.fitting import ModalFitter
from he11lib.geometry import CameraModel, CameraModelTolerance, GeometryCalibration
from he11lib.modes import LGBasis
from he11lib.reconstruct import BeamReconstructor
from he11lib.synthetic import SyntheticBeamGenerator
@@ -12,6 +13,7 @@ W0 = 5e-3
Z0 = 0.5
WAVELENGTH = 1.76e-3
PIXEL_SCALE = 4e-4
CAMERA_DISTANCE = 5.0
IMAGE_SHAPE = (61, 61)
Z_LIST = [0.35, 0.5, 0.65, 0.8]
@@ -20,16 +22,36 @@ def make_basis():
return LGBasis(w0=W0, z0=Z0, wavelength=WAVELENGTH)
def make_generator(basis):
return SyntheticBeamGenerator(basis=basis, image_shape=IMAGE_SHAPE, pixel_scale=PIXEL_SCALE)
def make_camera():
focal_length_px = (CAMERA_DISTANCE + Z0) / PIXEL_SCALE
return CameraModel(
focal_length_px=focal_length_px,
position=(0.0, 0.0, -CAMERA_DISTANCE),
orientation_deg=(0.0, 0.0, 0.0),
)
def zero_tolerance():
return CameraModelTolerance(
focal_length_px=0.0, position=(0.0, 0.0, 0.0), orientation_deg=(0.0, 0.0, 0.0)
)
def make_generator(basis, camera):
return SyntheticBeamGenerator(basis=basis, camera=camera)
def test_reconstruct_recovers_pure_mode_purity():
basis = make_basis()
gen = make_generator(basis)
planes = gen.generate(coefficients={(0, 0): 1.0 + 0j}, z_list=Z_LIST, noise_std=1e-4, seed=0)
camera = make_camera()
gen = make_generator(basis, camera)
planes = gen.generate(
coefficients={(0, 0): 1.0 + 0j}, z_list=Z_LIST, image_shape=IMAGE_SHAPE, noise_std=1e-4, seed=0
)
reconstructor = BeamReconstructor(w0=W0, z0=Z0, wavelength=WAVELENGTH, max_order=2)
reconstructor = BeamReconstructor(
w0=W0, z0=Z0, wavelength=WAVELENGTH, camera=camera, camera_tolerance=zero_tolerance(), max_order=2
)
result = reconstructor.reconstruct(planes)
power_fraction, _ = result.purity[(0, 0)]
@@ -39,13 +61,21 @@ def test_reconstruct_recovers_pure_mode_purity():
def test_reconstruct_recovers_center_offset():
basis = make_basis()
gen = make_generator(basis)
camera = make_camera()
gen = make_generator(basis, camera)
true_center = (10 * PIXEL_SCALE, -5 * PIXEL_SCALE)
planes = gen.generate(
coefficients={(0, 0): 1.0 + 0j}, z_list=Z_LIST, center=true_center, noise_std=1e-4, seed=1
coefficients={(0, 0): 1.0 + 0j},
z_list=Z_LIST,
image_shape=IMAGE_SHAPE,
center=true_center,
noise_std=1e-4,
seed=1,
)
reconstructor = BeamReconstructor(w0=W0, z0=Z0, wavelength=WAVELENGTH, max_order=2)
reconstructor = BeamReconstructor(
w0=W0, z0=Z0, wavelength=WAVELENGTH, camera=camera, camera_tolerance=zero_tolerance(), max_order=2
)
result = reconstructor.reconstruct(planes)
for cx, cy in result.centers:
@@ -55,21 +85,34 @@ def test_reconstruct_recovers_center_offset():
def test_reconstruct_with_deconvolution_corrects_blur():
basis = make_basis()
gen = make_generator(basis)
planes = gen.generate(coefficients={(0, 0): 1.0 + 0j}, z_list=Z_LIST, noise_std=1e-4, seed=2)
camera = make_camera()
gen = make_generator(basis, camera)
planes = gen.generate(
coefficients={(0, 0): 1.0 + 0j}, z_list=Z_LIST, image_shape=IMAGE_SHAPE, noise_std=1e-4, seed=2
)
deconvolver = DiffusionDeconvolver(thermal_diffusivity=1e-6, dwell_time=30.0)
calib = GeometryCalibration(camera)
blurred_planes = [
replace(p, flux=deconvolver.blur(p.flux, p.pixel_scale)) for p in planes
replace(p, flux=deconvolver.blur(p.flux, calib.effective_pixel_scale(p.flux.shape, p.z)))
for p in planes
]
# Without deconvolution, blur should measurably hurt purity recovery.
fitter = ModalFitter(basis)
result_no_deconv = fitter.fit(blurred_planes, modes=[(0, 0), (1, 0), (0, 1)])
result_no_deconv = fitter.fit(
blurred_planes, modes=[(0, 0), (1, 0), (0, 1)], camera=camera, camera_tolerance=zero_tolerance()
)
purity_no_deconv, _ = result_no_deconv.purity[(0, 0)]
reconstructor = BeamReconstructor(
w0=W0, z0=Z0, wavelength=WAVELENGTH, max_order=2, deconvolver=deconvolver
w0=W0,
z0=Z0,
wavelength=WAVELENGTH,
camera=camera,
camera_tolerance=zero_tolerance(),
max_order=2,
deconvolver=deconvolver,
)
result = reconstructor.reconstruct(blurred_planes)
purity_with_deconv, _ = result.purity[(0, 0)]
@@ -80,12 +123,21 @@ def test_reconstruct_with_deconvolution_corrects_blur():
def test_reconstruct_forces_phase_retrieval_fallback():
basis = make_basis()
gen = SyntheticBeamGenerator(basis=basis, image_shape=(121, 121), pixel_scale=3e-4)
camera = make_camera()
gen = SyntheticBeamGenerator(basis=basis, camera=camera)
z_list = [0.47, 0.5, 0.53]
planes = gen.generate(coefficients={(0, 0): 1.0 + 0j}, z_list=z_list, noise_std=1e-5, seed=3)
planes = gen.generate(
coefficients={(0, 0): 1.0 + 0j}, z_list=z_list, image_shape=IMAGE_SHAPE, noise_std=1e-5, seed=3
)
reconstructor = BeamReconstructor(
w0=W0, z0=Z0, wavelength=WAVELENGTH, max_order=2, force_phase_retrieval=True
w0=W0,
z0=Z0,
wavelength=WAVELENGTH,
camera=camera,
camera_tolerance=zero_tolerance(),
max_order=2,
force_phase_retrieval=True,
)
result = reconstructor.reconstruct(planes)
@@ -96,17 +148,73 @@ def test_reconstruct_forces_phase_retrieval_fallback():
def test_reconstruct_falls_back_automatically_on_high_residual():
basis = make_basis()
gen = SyntheticBeamGenerator(basis=basis, image_shape=(121, 121), pixel_scale=3e-4)
camera = make_camera()
gen = SyntheticBeamGenerator(basis=basis, camera=camera)
z_list = [0.47, 0.5, 0.53]
planes = gen.generate(coefficients={(0, 0): 1.0 + 0j}, z_list=z_list, noise_std=1e-5, seed=4)
planes = gen.generate(
coefficients={(0, 0): 1.0 + 0j}, z_list=z_list, image_shape=IMAGE_SHAPE, noise_std=1e-5, seed=4
)
reconstructor = BeamReconstructor(
w0=W0,
z0=Z0,
wavelength=WAVELENGTH,
camera=camera,
camera_tolerance=zero_tolerance(),
max_order=2,
phase_retrieval_residual_threshold=1e-8,
)
result = reconstructor.reconstruct(planes)
assert result.used_phase_retrieval is True
def test_reconstruct_recovers_camera_and_z_offset_from_nominal():
# End-to-end: ground truth is offset from the nominal camera/z inputs
# (within their tolerances), simulating realistic calibration error.
basis = make_basis()
true_camera = make_camera()
gen = make_generator(basis, true_camera)
true_z_list = Z_LIST
z_offsets = {z: 0.01 for z in true_z_list}
planes = gen.generate(
coefficients={(0, 0): 1.0 + 0j},
z_list=true_z_list,
image_shape=IMAGE_SHAPE,
nominal_z_offsets=z_offsets,
z_tolerance=0.03,
pointing_angle_horizontal_deg=0.2,
pointing_angle_vertical_deg=-0.1,
noise_std=1e-4,
seed=13,
)
nominal_focal_offset = true_camera.focal_length_px * 0.03
nominal_camera = CameraModel(
focal_length_px=true_camera.focal_length_px + nominal_focal_offset,
position=true_camera.position,
orientation_deg=true_camera.orientation_deg,
)
tolerance = CameraModelTolerance(
focal_length_px=true_camera.focal_length_px * 0.1,
position=(0.0, 0.0, 0.0),
orientation_deg=(0.0, 0.0, 0.0),
)
reconstructor = BeamReconstructor(
w0=W0,
z0=Z0,
wavelength=WAVELENGTH,
camera=nominal_camera,
camera_tolerance=tolerance,
max_order=1,
)
result = reconstructor.reconstruct(planes)
power_fraction, _ = result.purity[(0, 0)]
assert power_fraction > 0.95
assert result.pointing_angle_horizontal_deg == pytest.approx(0.2, abs=0.1)
assert result.pointing_angle_vertical_deg == pytest.approx(-0.1, abs=0.1)
assert result.geometry["focal_length_px"] == pytest.approx(true_camera.focal_length_px, rel=0.03)
for i, true_z in enumerate(true_z_list):
assert result.geometry[f"z_{i}"] == pytest.approx(true_z, abs=0.005)