Kalman filter class.
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#include "tracking.hpp"
Kalman filter class.
The class implements a standard Kalman filter http://en.wikipedia.org/wiki/Kalman_filter, [200] . However, you can modify transitionMatrix, controlMatrix, and measurementMatrix to get an extended Kalman filter functionality.
- Note
- In C API when CvKalman* kalmanFilter structure is not needed anymore, it should be released with cvReleaseKalman(&kalmanFilter)
- Examples:
- kalman.cpp.
§ KalmanFilter() [1/2]
cv::KalmanFilter::KalmanFilter |
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Python: |
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| <KalmanFilter object> | = | cv.KalmanFilter( | | ) |
| <KalmanFilter object> | = | cv.KalmanFilter( | dynamParams, measureParams[, controlParams[, type]] | ) |
§ KalmanFilter() [2/2]
cv::KalmanFilter::KalmanFilter |
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int |
dynamParams, |
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int |
measureParams, |
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int |
controlParams = 0 , |
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int |
type = CV_32F |
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) |
| |
Python: |
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| <KalmanFilter object> | = | cv.KalmanFilter( | | ) |
| <KalmanFilter object> | = | cv.KalmanFilter( | dynamParams, measureParams[, controlParams[, type]] | ) |
This is an overloaded member function, provided for convenience. It differs from the above function only in what argument(s) it accepts.
- Parameters
-
dynamParams | Dimensionality of the state. |
measureParams | Dimensionality of the measurement. |
controlParams | Dimensionality of the control vector. |
type | Type of the created matrices that should be CV_32F or CV_64F. |
§ correct()
const Mat& cv::KalmanFilter::correct |
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const Mat & |
measurement | ) |
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Python: |
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| retval | = | cv.KalmanFilter.correct( | measurement | ) |
Updates the predicted state from the measurement.
- Parameters
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measurement | The measured system parameters |
- Examples:
- kalman.cpp.
§ init()
void cv::KalmanFilter::init |
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int |
dynamParams, |
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int |
measureParams, |
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int |
controlParams = 0 , |
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int |
type = CV_32F |
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) |
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Re-initializes Kalman filter. The previous content is destroyed.
- Parameters
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dynamParams | Dimensionality of the state. |
measureParams | Dimensionality of the measurement. |
controlParams | Dimensionality of the control vector. |
type | Type of the created matrices that should be CV_32F or CV_64F. |
§ predict()
const Mat& cv::KalmanFilter::predict |
( |
const Mat & |
control = Mat() | ) |
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Python: |
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| retval | = | cv.KalmanFilter.predict( | [, control] | ) |
Computes a predicted state.
- Parameters
-
control | The optional input control |
- Examples:
- kalman.cpp.
§ controlMatrix
Mat cv::KalmanFilter::controlMatrix |
control matrix (B) (not used if there is no control)
§ errorCovPost
Mat cv::KalmanFilter::errorCovPost |
posteriori error estimate covariance matrix (P(k)): P(k)=(I-K(k)*H)*P'(k)
- Examples:
- kalman.cpp.
§ errorCovPre
Mat cv::KalmanFilter::errorCovPre |
priori error estimate covariance matrix (P'(k)): P'(k)=A*P(k-1)*At + Q)*/
§ gain
Mat cv::KalmanFilter::gain |
Kalman gain matrix (K(k)): K(k)=P'(k)*Ht*inv(H*P'(k)*Ht+R)
§ measurementMatrix
Mat cv::KalmanFilter::measurementMatrix |
§ measurementNoiseCov
Mat cv::KalmanFilter::measurementNoiseCov |
measurement noise covariance matrix (R)
- Examples:
- kalman.cpp.
§ processNoiseCov
Mat cv::KalmanFilter::processNoiseCov |
process noise covariance matrix (Q)
- Examples:
- kalman.cpp.
§ statePost
Mat cv::KalmanFilter::statePost |
corrected state (x(k)): x(k)=x'(k)+K(k)*(z(k)-H*x'(k))
- Examples:
- kalman.cpp.
§ statePre
Mat cv::KalmanFilter::statePre |
predicted state (x'(k)): x(k)=A*x(k-1)+B*u(k)
§ temp1
Mat cv::KalmanFilter::temp1 |
§ temp2
Mat cv::KalmanFilter::temp2 |
§ temp3
Mat cv::KalmanFilter::temp3 |
§ temp4
Mat cv::KalmanFilter::temp4 |
§ temp5
Mat cv::KalmanFilter::temp5 |
§ transitionMatrix
Mat cv::KalmanFilter::transitionMatrix |
The documentation for this class was generated from the following file: