Fusion is a sensor fusion library for Inertial Measurement Units (IMUs), optimised for embedded systems. Fusion is a C library but is also available as the Python package, imufusion. Two example Python scripts, simple_example.py and advanced_example.py are provided with example sensor data to demonstrate use of the package.
The Attitude And Heading Reference System (AHRS) algorithm combines gyroscope, accelerometer, and magnetometer data into a single measurement of orientation relative to the Earth. The algorithm also supports systems that use only a gyroscope and accelerometer, and systems that use a gyroscope and accelerometer combined with an external source of heading measurement such as GPS.
The algorithm is based on the revised AHRS algorithm presented in chapter 7 of Madgwick's PhD thesis. This is a different algorithm to the better-known initial AHRS algorithm presented in chapter 3, commonly referred to as the Madgwick algorithm.
The algorithm calculates the orientation as the integration of the gyroscope summed with a feedback term. The feedback term is equal to the error in the current measurement of orientation as determined by the other sensors, multiplied by a gain. The algorithm therefore functions as a complementary filter that combines high-pass filtered gyroscope measurements with low-pass filtered measurements from other sensors with a corner frequency determined by the gain. A low gain will 'trust' the gyroscope more and so be more susceptible to drift. A high gain will increase the influence of other sensors and the errors that result from accelerations and magnetic distortions. A gain of zero will ignore the other sensors so that the measurement of orientation is determined by only the gyroscope.
Initialisation occurs when the algorithm starts for the first time. During initialisation, the acceleration and magnetic rejection features are disabled and the gain is ramped down from 10 to the final value over a 3 second period. This allows the measurement of orientation to rapidly converges from an arbitrary initial value to the value indicated by the sensors. The algorithm outputs should be regarded as unreliable during initialisation.
The acceleration rejection feature reduces the errors that result from the accelerations of linear and rotational motion. Acceleration rejection works by calculating an error as the angular difference between the instantaneous measurement of inclination indicated by the accelerometer, and the current measurement of inclination provided by the algorithm output. If the error is greater than a threshold then the accelerometer will be ignored for that algorithm update. This is equivalent to a dynamic gain that deceases as accelerations increase.
Prolonged accelerations risk an overdependency on the gyroscope and will trigger an acceleration recovery. Acceleration recovery activates when the error exceeds the threshold for more than 90% of algorithm updates over a period of t / (0.1p - 9), where t is the recovery trigger period and p is the percentage of algorithm updates where the error exceeds the threshold. The recovery will remain active until the error exceeds the threshold for less than 90% of algorithm updates over the period -t / (0.1p - 9). The accelerometer will be used by every algorithm update during recovery.
The magnetic rejection feature reduces the errors that result from temporary magnetic distortions. Magnetic rejection works using the same principle as acceleration rejection, operating on the magnetometer instead of the accelerometer and by comparing the measurements of heading instead of inclination.
The algorithm provides three outputs: quaternion, linear acceleration, and Earth acceleration. The quaternion describes the orientation of the sensor relative to the Earth. This can be converted to a rotation matrix using the FusionQuaternionToMatrix
function or to Euler angles using the FusionQuaternionToEuler
function. The linear acceleration is the accelerometer measurement with the 1 g of gravity removed. The Earth acceleration is the accelerometer measurement in the Earth coordinate frame with the 1 g of gravity removed. The algorithm supports North-West-Up (NWU), East-North-Up (ENU), and North-East-Down (NED) axes conventions.
The AHRS algorithm settings are defined by the FusionAhrsSettings
structure and set using the FusionAhrsSetSettings
function.
Setting | Description |
---|---|
convention |
Earth axes convention (NWD, ENU, or NED). |
gain |
Determines the influence of the gyroscope relative to other sensors. A value of zero will disable initialisation and the acceleration and magnetic rejection features. A value of 0.5 is appropriate for most applications. |
accelerationRejection |
Threshold (in degrees) used by the acceleration rejection feature. A value of zero will disable this feature. A value of 10 degrees is appropriate for most applications. |
magneticRejection |
Threshold (in degrees) used by the magnetic rejection feature. A value of zero will disable the feature. A value of 10 degrees is appropriate for most applications. |
recoveryTriggerPeriod |
Acceleration and magnetic recovery trigger period (in samples). A value of zero will disable the acceleration and magnetic rejection features. A period of 5 seconds is appropriate for most applications. |
The AHRS algorithm internal states are defined by the FusionAhrsInternalStates
structure and obtained using the FusionAhrsGetInternalStates
function.
State | Description |
---|---|
accelerationError |
Angular error (in degrees) of the algorithm output relative to the instantaneous measurement of inclination indicated by the accelerometer. The acceleration rejection feature will ignore the accelerometer if this value exceeds the accelerationRejection threshold set in the algorithm settings. |
accelerometerIgnored |
true if the accelerometer was ignored by the previous algorithm update. |
accelerationRecoveryTrigger |
Acceleration recovery trigger value between 0.0 and 1.0. Acceleration recovery will activate when this value reaches 1.0 and then deactivate when when the value reaches 0.0. |
magneticError |
Angular error (in degrees) of the algorithm output relative to the instantaneous measurement of heading indicated by the magnetometer. The magnetic rejection feature will ignore the magnetometer if this value exceeds the magneticRejection threshold set in the algorithm settings. |
magnetometerIgnored |
true if the magnetometer was ignored by the previous algorithm update. |
magneticRecoveryTrigger |
Magnetic recovery trigger value between 0.0 and 1.0. Magnetic recovery will activate when this value reaches 1.0 and then deactivate when when the value reaches 0.0. |
The AHRS algorithm flags are defined by the FusionAhrsFlags
structure and obtained using the FusionAhrsGetFlags
function.
Flag | Description |
---|---|
initialising |
true if the algorithm is initialising. |
accelerationRecovery |
true if acceleration recovery is active. |
magneticRecovery |
true if a magnetic recovery is active. |
The gyroscope offset correction algorithm provides run-time calibration of the gyroscope offset to compensate for variations in temperature and fine-tune existing offset calibration that may already be in place. This algorithm should be used in conjunction with the AHRS algorithm to achieve best performance.
The algorithm calculates the gyroscope offset by detecting the stationary periods that occur naturally in most applications. Gyroscope measurements are sampled during these periods and low-pass filtered to obtain the gyroscope offset. The algorithm requires that gyroscope measurements do not exceed +/-3 degrees per second while stationary. Basic gyroscope offset calibration may be necessary to ensure that the initial offset plus measurement noise is within these bounds.
Sensor calibration is essential for accurate measurements. This library provides functions to apply calibration parameters to the gyroscope, accelerometer, and magnetometer. This library does not provide a solution for calculating the calibration parameters.
The FusionCalibrationInertial
function applies gyroscope and accelerometer calibration parameters using the calibration model:
ic = Ms(iu - b)
- ic is the calibrated inertial measurement and
return
value - iu is the uncalibrated inertial measurement and
uncalibrated
argument - M is the misalignment matrix and
misalignment
argument - s is the sensitivity diagonal matrix and
sensitivity
argument - b is the offset vector and
offset
argument
The FusionCalibrationMagnetic
function applies magnetometer calibration parameters using the calibration model:
mc = Smu - h
- mc is the calibrated magnetometer measurement and
return
value - mu is the uncalibrated magnetometer measurement and
uncalibrated
argument - S is the soft iron matrix and
softIronMatrix
argument - h is the hard iron offset vector and
hardIronOffset
argument
Fusion uses Pizer's implementation of the fast inverse square root algorithm for vector and quaternion normalisation. Including the definition FUSION_USE_NORMAL_SQRT
in FusionMath.h or adding this as a preprocessor definition will use normal square root operations for all normalisation calculations. This will slow down execution speed for a small increase in accuracy. The increase in accuracy will typically be too small to observe on any practical system.