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							139 lines
						
					
					
						
							5.2 KiB
						
					
					
				
			
		
		
	
	
							139 lines
						
					
					
						
							5.2 KiB
						
					
					
				import numpy as np
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from typing import Any
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from cereal import log
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from openpilot.common.transformations.orientation import rot_from_euler, euler_from_rot
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def rotate_cov(rot_matrix, cov_in):
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  return rot_matrix @ cov_in @ rot_matrix.T
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def rotate_std(rot_matrix, std_in):
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  return np.sqrt(np.diag(rotate_cov(rot_matrix, np.diag(std_in**2))))
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class NPQueue:
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  def __init__(self, maxlen: int, rowsize: int) -> None:
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    self.maxlen = maxlen
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    self.arr = np.empty((0, rowsize))
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  def __len__(self) -> int:
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    return len(self.arr)
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  def append(self, pt: list[float]) -> None:
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    if len(self.arr) < self.maxlen:
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      self.arr = np.append(self.arr, [pt], axis=0)
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    else:
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      self.arr[:-1] = self.arr[1:]
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      self.arr[-1] = pt
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class PointBuckets:
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  def __init__(self, x_bounds: list[tuple[float, float]], min_points: list[float], min_points_total: int, points_per_bucket: int, rowsize: int) -> None:
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    self.x_bounds = x_bounds
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    self.buckets = {bounds: NPQueue(maxlen=points_per_bucket, rowsize=rowsize) for bounds in x_bounds}
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    self.buckets_min_points = dict(zip(x_bounds, min_points, strict=True))
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    self.min_points_total = min_points_total
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  def __len__(self) -> int:
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    return sum([len(v) for v in self.buckets.values()])
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  def is_valid(self) -> bool:
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    individual_buckets_valid = all(len(v) >= min_pts for v, min_pts in zip(self.buckets.values(), self.buckets_min_points.values(), strict=True))
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    total_points_valid = self.__len__() >= self.min_points_total
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    return individual_buckets_valid and total_points_valid
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  def is_calculable(self) -> bool:
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    return all(len(v) > 0 for v in self.buckets.values())
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  def add_point(self, x: float, y: float) -> None:
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    raise NotImplementedError
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  def get_points(self, num_points: int = None) -> Any:
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    points = np.vstack([x.arr for x in self.buckets.values()])
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    if num_points is None:
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      return points
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    return points[np.random.choice(np.arange(len(points)), min(len(points), num_points), replace=False)]
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  def load_points(self, points: list[list[float]]) -> None:
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    for point in points:
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      self.add_point(*point)
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class ParameterEstimator:
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  """ Base class for parameter estimators """
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  def reset(self) -> None:
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    raise NotImplementedError
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  def handle_log(self, t: int, which: str, msg: log.Event) -> None:
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    raise NotImplementedError
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  def get_msg(self, valid: bool, with_points: bool) -> log.Event:
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    raise NotImplementedError
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class Measurement:
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  x, y, z = (property(lambda self: self.xyz[0]), property(lambda self: self.xyz[1]), property(lambda self: self.xyz[2]))
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  x_std, y_std, z_std = (property(lambda self: self.xyz_std[0]), property(lambda self: self.xyz_std[1]), property(lambda self: self.xyz_std[2]))
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  roll, pitch, yaw = x, y, z
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  roll_std, pitch_std, yaw_std = x_std, y_std, z_std
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  def __init__(self, xyz: np.ndarray, xyz_std: np.ndarray):
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    self.xyz: np.ndarray = xyz
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    self.xyz_std: np.ndarray = xyz_std
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  @classmethod
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  def from_measurement_xyz(cls, measurement: log.LivePose.XYZMeasurement) -> 'Measurement':
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    return cls(
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      xyz=np.array([measurement.x, measurement.y, measurement.z]),
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      xyz_std=np.array([measurement.xStd, measurement.yStd, measurement.zStd])
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    )
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class Pose:
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  def __init__(self, orientation: Measurement, velocity: Measurement, acceleration: Measurement, angular_velocity: Measurement):
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    self.orientation = orientation
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    self.velocity = velocity
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    self.acceleration = acceleration
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    self.angular_velocity = angular_velocity
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  @classmethod
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  def from_live_pose(cls, live_pose: log.LivePose) -> 'Pose':
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    return Pose(
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      orientation=Measurement.from_measurement_xyz(live_pose.orientationNED),
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      velocity=Measurement.from_measurement_xyz(live_pose.velocityDevice),
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      acceleration=Measurement.from_measurement_xyz(live_pose.accelerationDevice),
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      angular_velocity=Measurement.from_measurement_xyz(live_pose.angularVelocityDevice)
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    )
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class PoseCalibrator:
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  def __init__(self):
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    self.calib_valid = False
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    self.calib_from_device = np.eye(3)
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  def _transform_calib_from_device(self, meas: Measurement):
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    new_xyz = self.calib_from_device @ meas.xyz
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    new_xyz_std = rotate_std(self.calib_from_device, meas.xyz_std)
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    return Measurement(new_xyz, new_xyz_std)
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  def _ned_from_calib(self, orientation: Measurement):
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    ned_from_device = rot_from_euler(orientation.xyz)
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    ned_from_calib = ned_from_device @ self.calib_from_device.T
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    ned_from_calib_euler_meas = Measurement(euler_from_rot(ned_from_calib), np.full(3, np.nan))
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    return ned_from_calib_euler_meas
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  def build_calibrated_pose(self, pose: Pose) -> Pose:
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    ned_from_calib_euler = self._ned_from_calib(pose.orientation)
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    angular_velocity_calib = self._transform_calib_from_device(pose.angular_velocity)
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    acceleration_calib = self._transform_calib_from_device(pose.acceleration)
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    velocity_calib = self._transform_calib_from_device(pose.angular_velocity)
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    return Pose(ned_from_calib_euler, velocity_calib, acceleration_calib, angular_velocity_calib)
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  def feed_live_calib(self, live_calib: log.LiveCalibrationData):
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    calib_rpy = np.array(live_calib.rpyCalib)
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    device_from_calib = rot_from_euler(calib_rpy)
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    self.calib_from_device = device_from_calib.T
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    self.calib_valid = live_calib.calStatus == log.LiveCalibrationData.Status.calibrated
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