The present invention relates to a vehicle radar system arranged to detect objects outside a vehicle, the radar system includes a radar detector and a processing unit. The processing unit is arranged to obtain values for detected target angle and detected target Doppler velocity relative the radar detector for each detected object during a certain time interval.
The present invention also relates to a method for estimating a vehicle radar system misalignment, the vehicle radar system being used for detecting objects outside a vehicle. The method includes the step of detecting target angle and target Doppler velocity for each detected object during a certain time interval.
Today, a radar device may be mounted on a vehicle in order to detect reflections from objects in a traveling direction in order to implement functions of speed control and collision prevention. In such a radar device it is required to obtain an azimuth angle in the form of a target bearing angle, a distance with respect to the object and a relative speed between the vehicle and the object.
For most vehicle radar applications it is important to measure the target bearing angle with very high precision. The angle accuracy of a radar system depends on fundamental parameters like modulation technique, component tolerances, assembly precision or installation conditions. Furthermore, due to various environmental influences such as mechanical stress or bad weather, the angle estimation performance might suffer additionally. Some of those error sources show a random statistical distribution while others lead to a fixed angle offset. This fixed offset is the so called misalignment angle. Monitoring the misalignment angle is often an essential requirement in vehicle applications.
There are several approaches known which use vehicle dynamic information, e.g. vehicle speed, yaw-rate or steering angle, to verify trajectories of ground stationary targets. By comparing the expected path of an obstacle with the actual progression of the radar observations, one should be able to estimate the common bearing bias. The success of these techniques highly depends on the precisions of the vehicle dynamic data.
Addressing the above problems, the document U.S. Pat. No. 7,443,335 discloses angle error estimation for a vehicle radar based on relative speeds and reflections. However, since the required accuracy is not available without additional cost impact, it is desirable to have an alternative algorithm which doesn't need exact vehicle data.
There is thus a need for a device and a method for vehicle radar angle error estimation which does not need exact vehicle data.
The above mentioned object is achieved by means of a vehicle radar system arranged to detect objects outside a vehicle, the radar system includes a radar detector and a processing unit. The processing unit is arranged to obtain values for detected target angle and detected target Doppler velocity relative to the radar detector for each detected object during a certain time interval. If there is a zero crossing for a derivative of a function describing the progression of detected target Doppler velocity as a function of detected target angle, the processing unit is arranged to detect the zero crossing. The zero crossing is indicative of a radar system misalignment.
The object is also achieved by means of a method for estimating vehicle radar system misalignment, the vehicle radar system being used for detecting objects outside a vehicle. The method includes the step of detecting target angle and target Doppler velocity for each detected object during a certain time interval.
The method of the invention further includes the steps: calculating a function describing the progression of detected target Doppler velocity as a function of detected target angle, deriving said calculating said function, if there is a zero crossing for the derived function, finding the zero crossing, and using the zero crossing as an estimation of the vehicle radar system misalignment.
According to an example, the function describing the progression of detected target Doppler velocity as a function of detected target angle is numerically defined such that is has a progression like a parabola.
According to another example, the function describing the progression of detected target Doppler velocity as a function of detected target angle is defined as
Other examples are disclosed in this description and drawings.
A number of advantages are obtained by means of the present invention. Mainly, a device and a method for vehicle radar angle error estimation which does not need exact vehicle data are provided.
The present invention will now be described more in detail with reference to the appended drawings, where:
With reference to
With reference to the angles above, a misalignment angle Θm is defined as.
Θm=Θref−Θerr (1)
With the above definitions made,
The vehicle 1 is moving with a speed vh greater than zero, in this example it is set to 20 m/s, and the absolute velocity of the real fence posts 10a, 10b, 10c, 10d, 10e is considered as zero. The real fence posts 10a, 10b, 10c, 10d, 10e are furthermore causing a cloud of returns in the radar detector where both detected respective target angles Θerr
In this example, there is an angle offset (Θm) of −2° introduced. In
Below a table showing a processed target list of this example is presented:
The target list is sorted by angle, all angles being different. It is a fact that the smaller the bearing angle, the higher the absolute detected Doppler velocity of each target, which means that the highest detected target Doppler velocity is expected at boresight of the radar detector 3, i.e. along the line 7. This assumes a constant vehicle velocity vh, and this is the case for targets detected in a single radar scan.
According to the present invention, if there is a zero crossing for a derivative of a function describing the progression of detected target Doppler velocity as a function of detected target angle, the processing unit 4 is arranged to detect said zero crossing. The zero crossing is indicative of the radar system misalignment, which in this example is −2°.
In order to obtain this, it is necessary to find an appropriate function describing the progression of detected target Doppler velocity as a function of detected target angle. The parameters of this function have to be processed and its local minimum determined, if there is any. Since only the position of such a local minimum is required as a final result of the present invention, this makes the present invention robust against tolerances of the accuracy for the vehicle velocity vh.
As apparent from
V
d
=V
h*cos(Θerr). (2)
According to the Taylor series of a cosine function, the following may be written:
According to equation (3), a good approximation for smaller angles is a quadratic function according to:
Equation (2) and equation (4) combined give:
Equation (5) has a progression like a parabola, which is illustrated in
The derivative illustrated by the second graph 13 constitutes the difference in Doppler velocity of two successive data points. All delta values must be normalized with the differences of detected target angles.
where n is the number of data points.
The Y data calculated according to equation (6a) above represents the gradient of the parabola in the center between two data points. Hence, the ordinate X must be modified as well, as shown below:
A linear regression according to:
Y=m*X+b (7)
is performed to estimate the parameters m and b of a straight line. The misalignment error Θm corresponds to the zero crossing 14 of the second graph 13, and can be calculated as:
As can be derived from the zero crossing 14 in this case, the misalignment error Θm equals the previously mentioned −2°.
With reference to
Step 15: detecting target angle Θerr and target Doppler velocity vd for each detected object 10a′, 10b′, 10c′, 10d′, 10e′ during a certain time interval;
Step 16: calculating a function 12 describing the progression of detected target Doppler velocity vd as a function of detected target angle Θerr;
Step 17: deriving said function 12;
Step 18: if there is a zero crossing 14 for the derived function 13, finding the zero crossing 14; and
Step 19: using the zero crossing 14 as an estimation of the vehicle radar system misalignment Θm.
The present invention is not limited to the examples above, but may vary freely within the scope of the described invention. For example, other methods than the described linear regression for calculating the zero crossing for derivative of the function describing the progression of detected target Doppler velocity as a function of detected target angle are conceivable, for example a so-called robust med-fit technique.
The microwave parts of the radar system 2 are assumed to be of a previously known design, and the radar system 2 includes more parts than shown, for example a radar transmitter, while a radar receiver is assumed to be in the form of the radar detector 3. The radar detector 3 may be in the form of a receiving antenna array. The radar system 2 may furthermore include a number of other parts, and is for example connected to a warning and/or information device in the vehicle 1 in a previously known manner.
All details given in the example, such as values of angles and Doppler velocities, are of course only given as an illustration of the present invention, and should not be regarded as limiting in any way.
While the above description constitutes the preferred embodiment of the present invention, it will be appreciated that the invention is susceptible to modification, variation and change without departing from the proper scope and fair meaning of the accompanying claims.
This application claims priority to PCT International Patent Application No. PCT/SE2012/050730, filed on Jun. 28, 2012.
Filing Document | Filing Date | Country | Kind | 371c Date |
---|---|---|---|---|
PCT/SE2012/050730 | 6/28/2012 | WO | 00 | 12/22/2014 |