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							340 lines
						
					
					
						
							14 KiB
						
					
					
				
			
		
		
	
	
							340 lines
						
					
					
						
							14 KiB
						
					
					
				#!/usr/bin/env python3
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import numpy as np
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import sympy as sp
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import cereal.messaging as messaging
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import common.transformations.coordinates as coord
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from common.transformations.orientation import ecef_euler_from_ned, \
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                                               euler_from_quat, \
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                                               ned_euler_from_ecef, \
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                                               quat_from_euler, \
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                                               rot_from_quat, rot_from_euler
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from rednose.helpers import KalmanError
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from selfdrive.locationd.models.live_kf import LiveKalman, States, ObservationKind
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from selfdrive.locationd.models.constants import GENERATED_DIR
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from selfdrive.swaglog import cloudlog
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#from datetime import datetime
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#from laika.gps_time import GPSTime
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from sympy.utilities.lambdify import lambdify
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from rednose.helpers.sympy_helpers import euler_rotate
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OUTPUT_DECIMATION = 2
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VISION_DECIMATION = 2
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SENSOR_DECIMATION = 10
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def to_float(arr):
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  return [float(arr[0]), float(arr[1]), float(arr[2])]
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def get_H():
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  # this returns a function to eval the jacobian
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  # of the observation function of the local vel
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  roll = sp.Symbol('roll')
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  pitch = sp.Symbol('pitch')
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  yaw = sp.Symbol('yaw')
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  vx = sp.Symbol('vx')
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  vy = sp.Symbol('vy')
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  vz = sp.Symbol('vz')
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  h = euler_rotate(roll, pitch, yaw).T*(sp.Matrix([vx, vy, vz]))
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  H = h.jacobian(sp.Matrix([roll, pitch, yaw, vx, vy, vz]))
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  H_f = lambdify([roll, pitch, yaw, vx, vy, vz], H)
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  return H_f
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class Localizer():
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  def __init__(self, disabled_logs=None, dog=None):
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    if disabled_logs is None:
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      disabled_logs = []
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    self.kf = LiveKalman(GENERATED_DIR)
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    self.reset_kalman()
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    self.max_age = .2  # seconds
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    self.disabled_logs = disabled_logs
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    self.calib = np.zeros(3)
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    self.device_from_calib = np.eye(3)
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    self.calib_from_device = np.eye(3)
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    self.calibrated = 0
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    self.H = get_H()
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    self.posenet_invalid_count = 0
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    self.posenet_speed = 0
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    self.car_speed = 0
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    self.converter = coord.LocalCoord.from_ecef(self.kf.x[States.ECEF_POS])
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    self.unix_timestamp_millis = 0
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    self.last_gps_fix = 0
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  @staticmethod
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  def msg_from_state(converter, calib_from_device, H, predicted_state, predicted_cov):
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    predicted_std = np.sqrt(np.diagonal(predicted_cov))
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    fix_ecef = predicted_state[States.ECEF_POS]
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    fix_ecef_std = predicted_std[States.ECEF_POS_ERR]
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    vel_ecef = predicted_state[States.ECEF_VELOCITY]
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    vel_ecef_std = predicted_std[States.ECEF_VELOCITY_ERR]
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    fix_pos_geo = coord.ecef2geodetic(fix_ecef)
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    #fix_pos_geo_std = np.abs(coord.ecef2geodetic(fix_ecef + fix_ecef_std) - fix_pos_geo)
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    orientation_ecef = euler_from_quat(predicted_state[States.ECEF_ORIENTATION])
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    orientation_ecef_std = predicted_std[States.ECEF_ORIENTATION_ERR]
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    acc_calib = calib_from_device.dot(predicted_state[States.ACCELERATION])
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    acc_calib_std = np.sqrt(np.diagonal(calib_from_device.dot(
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      predicted_cov[States.ACCELERATION_ERR, States.ACCELERATION_ERR]).dot(
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        calib_from_device.T)))
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    ang_vel_calib = calib_from_device.dot(predicted_state[States.ANGULAR_VELOCITY])
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    ang_vel_calib_std = np.sqrt(np.diagonal(calib_from_device.dot(
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      predicted_cov[States.ANGULAR_VELOCITY_ERR, States.ANGULAR_VELOCITY_ERR]).dot(
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        calib_from_device.T)))
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    device_from_ecef = rot_from_quat(predicted_state[States.ECEF_ORIENTATION]).T
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    vel_device = device_from_ecef.dot(vel_ecef)
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    device_from_ecef_eul = euler_from_quat(predicted_state[States.ECEF_ORIENTATION]).T
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    idxs = list(range(States.ECEF_ORIENTATION_ERR.start, States.ECEF_ORIENTATION_ERR.stop)) + \
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           list(range(States.ECEF_VELOCITY_ERR.start, States.ECEF_VELOCITY_ERR.stop))
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    condensed_cov = predicted_cov[idxs][:, idxs]
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    HH = H(*list(np.concatenate([device_from_ecef_eul, vel_ecef])))
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    vel_device_cov = HH.dot(condensed_cov).dot(HH.T)
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    vel_device_std = np.sqrt(np.diagonal(vel_device_cov))
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    vel_calib = calib_from_device.dot(vel_device)
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    vel_calib_std = np.sqrt(np.diagonal(calib_from_device.dot(
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      vel_device_cov).dot(calib_from_device.T)))
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    orientation_ned = ned_euler_from_ecef(fix_ecef, orientation_ecef)
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    #orientation_ned_std = ned_euler_from_ecef(fix_ecef, orientation_ecef + orientation_ecef_std) - orientation_ned
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    ned_vel = converter.ecef2ned(fix_ecef + vel_ecef) - converter.ecef2ned(fix_ecef)
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    #ned_vel_std = self.converter.ecef2ned(fix_ecef + vel_ecef + vel_ecef_std) - self.converter.ecef2ned(fix_ecef + vel_ecef)
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    fix = messaging.log.LiveLocationKalman.new_message()
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    fix.positionGeodetic.value = to_float(fix_pos_geo)
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    #fix.positionGeodetic.std = to_float(fix_pos_geo_std)
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    #fix.positionGeodetic.valid = True
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    fix.positionECEF.value = to_float(fix_ecef)
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    fix.positionECEF.std = to_float(fix_ecef_std)
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    fix.positionECEF.valid = True
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    fix.velocityECEF.value = to_float(vel_ecef)
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    fix.velocityECEF.std = to_float(vel_ecef_std)
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    fix.velocityECEF.valid = True
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    fix.velocityNED.value = to_float(ned_vel)
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    #fix.velocityNED.std = to_float(ned_vel_std)
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    #fix.velocityNED.valid = True
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    fix.velocityDevice.value = to_float(vel_device)
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    fix.velocityDevice.std = to_float(vel_device_std)
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    fix.velocityDevice.valid = True
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    fix.accelerationDevice.value = to_float(predicted_state[States.ACCELERATION])
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    fix.accelerationDevice.std = to_float(predicted_std[States.ACCELERATION_ERR])
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    fix.accelerationDevice.valid = True
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    fix.orientationECEF.value = to_float(orientation_ecef)
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    fix.orientationECEF.std = to_float(orientation_ecef_std)
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    fix.orientationECEF.valid = True
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    fix.orientationNED.value = to_float(orientation_ned)
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    #fix.orientationNED.std = to_float(orientation_ned_std)
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    #fix.orientationNED.valid = True
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    fix.angularVelocityDevice.value = to_float(predicted_state[States.ANGULAR_VELOCITY])
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    fix.angularVelocityDevice.std = to_float(predicted_std[States.ANGULAR_VELOCITY_ERR])
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    fix.angularVelocityDevice.valid = True
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    fix.velocityCalibrated.value = to_float(vel_calib)
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    fix.velocityCalibrated.std = to_float(vel_calib_std)
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    fix.velocityCalibrated.valid = True
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    fix.angularVelocityCalibrated.value = to_float(ang_vel_calib)
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    fix.angularVelocityCalibrated.std = to_float(ang_vel_calib_std)
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    fix.angularVelocityCalibrated.valid = True
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    fix.accelerationCalibrated.value = to_float(acc_calib)
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    fix.accelerationCalibrated.std = to_float(acc_calib_std)
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    fix.accelerationCalibrated.valid = True
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    return fix
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  def liveLocationMsg(self, time):
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    fix = self.msg_from_state(self.converter, self.calib_from_device, self.H, self.kf.x, self.kf.P)
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    if abs(self.posenet_speed - self.car_speed) > max(0.4 * self.car_speed, 5.0):
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      self.posenet_invalid_count += 1
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    else:
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      self.posenet_invalid_count = 0
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    fix.posenetOK = self.posenet_invalid_count < 4
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    #fix.gpsWeek = self.time.week
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    #fix.gpsTimeOfWeek = self.time.tow
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    fix.unixTimestampMillis = self.unix_timestamp_millis
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    if np.linalg.norm(fix.positionECEF.std) < 50 and self.calibrated:
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      fix.status = 'valid'
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    elif np.linalg.norm(fix.positionECEF.std) < 50:
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      fix.status = 'uncalibrated'
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    else:
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      fix.status = 'uninitialized'
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    return fix
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  def update_kalman(self, time, kind, meas, R=None):
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    try:
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      self.kf.predict_and_observe(time, kind, meas, R=R)
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    except KalmanError:
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      cloudlog.error("Error in predict and observe, kalman reset")
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      self.reset_kalman()
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    #idx = bisect_right([x[0] for x in self.observation_buffer], time)
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    #self.observation_buffer.insert(idx, (time, kind, meas))
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    #while len(self.observation_buffer) > 0 and self.observation_buffer[-1][0] - self.observation_buffer[0][0] > self.max_age:
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    #  else:
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    #    self.observation_buffer.pop(0)
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  def handle_gps(self, current_time, log):
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    # ignore the message if the fix is invalid
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    if log.flags % 2 == 0:
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      return
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    self.last_gps_fix = current_time
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    self.converter = coord.LocalCoord.from_geodetic([log.latitude, log.longitude, log.altitude])
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    ecef_pos = self.converter.ned2ecef([0, 0, 0])
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    ecef_vel = self.converter.ned2ecef_matrix.dot(np.array(log.vNED))
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    ecef_pos_R = np.diag([(3*log.verticalAccuracy)**2]*3)
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    ecef_vel_R = np.diag([(log.speedAccuracy)**2]*3)
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    #self.time = GPSTime.from_datetime(datetime.utcfromtimestamp(log.timestamp*1e-3))
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    self.unix_timestamp_millis = log.timestamp
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    gps_est_error = np.sqrt((self.kf.x[0] - ecef_pos[0])**2 +
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                            (self.kf.x[1] - ecef_pos[1])**2 +
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                            (self.kf.x[2] - ecef_pos[2])**2)
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    orientation_ecef = euler_from_quat(self.kf.x[States.ECEF_ORIENTATION])
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    orientation_ned = ned_euler_from_ecef(ecef_pos, orientation_ecef)
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    orientation_ned_gps = np.array([0, 0, np.radians(log.bearing)])
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    orientation_error = np.mod(orientation_ned - orientation_ned_gps - np.pi, 2*np.pi) - np.pi
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    if np.linalg.norm(ecef_vel) > 5 and np.linalg.norm(orientation_error) > 1:
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      cloudlog.error("Locationd vs ubloxLocation orientation difference too large, kalman reset")
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      initial_pose_ecef_quat = quat_from_euler(ecef_euler_from_ned(ecef_pos, orientation_ned_gps))
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      self.reset_kalman(init_orient=initial_pose_ecef_quat)
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      self.update_kalman(current_time, ObservationKind.ECEF_ORIENTATION_FROM_GPS, initial_pose_ecef_quat)
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    elif gps_est_error > 50:
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      cloudlog.error("Locationd vs ubloxLocation position difference too large, kalman reset")
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      self.reset_kalman()
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    self.update_kalman(current_time, ObservationKind.ECEF_POS, ecef_pos, R=ecef_pos_R)
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    self.update_kalman(current_time, ObservationKind.ECEF_VEL, ecef_vel, R=ecef_vel_R)
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  def handle_car_state(self, current_time, log):
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    self.speed_counter += 1
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    if self.speed_counter % SENSOR_DECIMATION == 0:
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      self.update_kalman(current_time, ObservationKind.ODOMETRIC_SPEED, [log.vEgo])
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      self.car_speed = abs(log.vEgo)
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      if log.vEgo == 0:
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        self.update_kalman(current_time, ObservationKind.NO_ROT, [0, 0, 0])
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  def handle_cam_odo(self, current_time, log):
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    self.cam_counter += 1
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    if self.cam_counter % VISION_DECIMATION == 0:
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      rot_device = self.device_from_calib.dot(log.rot)
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      rot_device_std = self.device_from_calib.dot(log.rotStd)
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      self.update_kalman(current_time,
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                         ObservationKind.CAMERA_ODO_ROTATION,
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                         np.concatenate([rot_device, 10*rot_device_std]))
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      trans_device = self.device_from_calib.dot(log.trans)
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      trans_device_std = self.device_from_calib.dot(log.transStd)
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      self.posenet_speed = np.linalg.norm(trans_device)
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      self.update_kalman(current_time,
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                         ObservationKind.CAMERA_ODO_TRANSLATION,
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                         np.concatenate([trans_device, 10*trans_device_std]))
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  def handle_sensors(self, current_time, log):
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    # TODO does not yet account for double sensor readings in the log
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    for sensor_reading in log:
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      # Gyro Uncalibrated
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      if sensor_reading.sensor == 5 and sensor_reading.type == 16:
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        self.gyro_counter += 1
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        if self.gyro_counter % SENSOR_DECIMATION == 0:
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          v = sensor_reading.gyroUncalibrated.v
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          self.update_kalman(current_time, ObservationKind.PHONE_GYRO, [-v[2], -v[1], -v[0]])
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      # Accelerometer
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      if sensor_reading.sensor == 1 and sensor_reading.type == 1:
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        self.acc_counter += 1
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        if self.acc_counter % SENSOR_DECIMATION == 0:
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          v = sensor_reading.acceleration.v
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          self.update_kalman(current_time, ObservationKind.PHONE_ACCEL, [-v[2], -v[1], -v[0]])
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  def handle_live_calib(self, current_time, log):
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    self.calib = log.rpyCalib
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    self.device_from_calib = rot_from_euler(self.calib)
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    self.calib_from_device = self.device_from_calib.T
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    self.calibrated = log.calStatus == 1
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  def reset_kalman(self, current_time=None, init_orient=None):
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    self.filter_time = current_time
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    init_x = LiveKalman.initial_x
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    # too nonlinear to init on completely wrong
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    if init_orient is not None:
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      init_x[3:7] = init_orient
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    self.kf.init_state(init_x, covs=np.diag(LiveKalman.initial_P_diag), filter_time=current_time)
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    self.observation_buffer = []
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    self.gyro_counter = 0
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    self.acc_counter = 0
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    self.speed_counter = 0
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    self.cam_counter = 0
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def locationd_thread(sm, pm, disabled_logs=None):
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  if disabled_logs is None:
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    disabled_logs = []
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  if sm is None:
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    socks = ['gpsLocationExternal', 'sensorEvents', 'cameraOdometry', 'liveCalibration', 'carState']
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    sm = messaging.SubMaster(socks, ignore_alive=['gpsLocationExternal'])
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  if pm is None:
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    pm = messaging.PubMaster(['liveLocationKalman'])
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  localizer = Localizer(disabled_logs=disabled_logs)
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  camera_odometry_cnt = 0
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  while True:
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    sm.update()
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    for sock, updated in sm.updated.items():
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      if updated:
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        t = sm.logMonoTime[sock] * 1e-9
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        if sock == "sensorEvents":
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          localizer.handle_sensors(t, sm[sock])
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        elif sock == "gpsLocationExternal":
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          localizer.handle_gps(t, sm[sock])
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        elif sock == "carState":
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          localizer.handle_car_state(t, sm[sock])
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        elif sock == "cameraOdometry":
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          localizer.handle_cam_odo(t, sm[sock])
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        elif sock == "liveCalibration":
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          localizer.handle_live_calib(t, sm[sock])
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    if sm.updated['cameraOdometry']:
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      camera_odometry_cnt += 1
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      if camera_odometry_cnt % OUTPUT_DECIMATION == 0:
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        t = sm.logMonoTime['cameraOdometry']
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        msg = messaging.new_message('liveLocationKalman')
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        msg.logMonoTime = t
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        msg.liveLocationKalman = localizer.liveLocationMsg(t * 1e-9)
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        msg.liveLocationKalman.inputsOK = sm.all_alive_and_valid()
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        gps_age = (t / 1e9) - localizer.last_gps_fix
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        msg.liveLocationKalman.gpsOK = gps_age < 1.0
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        pm.send('liveLocationKalman', msg)
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def main(sm=None, pm=None):
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  locationd_thread(sm, pm)
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if __name__ == "__main__":
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  import os
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  os.environ["OMP_NUM_THREADS"] = "1"
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  main()
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 |