The present invention relates to a method and a device for determining a variable associated with an object, and a computer program and a computer program product.
A radar sensor typically measures maximum values of temporary reflections on objects. However, such reflections do not describe fixed points on the object, but instead migrate and jump as a function of the viewing angle. Even very small changes in the viewing angle are sufficient to obtain a different reflection response. For objects which are larger than the resolution capability of the radar sensor, multiple reflections may be measured at the same time. Clustering of the reflections using a fixed aperture (for example, 2 m*8 m) and averaging of measured values is a current practice. To determine a rear edge of the object, the reflection which is spatially closest is selected. This may result in apparent motions of the object when the reflection jumps on the object, or when another portion of the object returns the reflection more strongly. When traveling past a vehicle, it is also problematic when the reflection travels on an outer edge of the object toward the host vehicle. In the worst case scenario, this apparent motion of the object may result in spurious triggering of a predictive safety system (PSS).
A method having the features described herein, a device having the features described herein, a computer program having the features described herein, and a computer program product having the features described herein are described herein.
In the method according to the present invention for determining at least one variable or state variable associated with an object, the object having a plurality of points suitable for reflecting measuring signals, a probability of reflections occurring at these points is taken into account for evaluating at least one measuring signal.
The device according to the present invention for determining at least one variable associated with an object, the object having a plurality of points which are suitable for reflecting a measuring signal. The device is designed to take into account a probability of reflections occurring at these points in order to evaluate at least one measuring signal.
Advantageous embodiments result from the description herein.
The present invention further relates to a computer program having a program code arrangement for carrying out all the steps of a method according to the present invention when the computer program is executed on a computer or an appropriate computing unit, in particular a unit in a device according to the present invention.
The exemplary embodiments and/or exemplary methods of the present invention further relates to a computer program product having a program code arrangement which is stored on a computer-readable data carrier for carrying out all the steps of a method according to the present invention when the computer program is executed on a computer or an appropriate computing unit, in particular a unit in a device according to the present invention.
The exemplary embodiments and/or exemplary methods of the present invention employs a statistical approach which takes into account the probability of points reflecting on an elongated object, for example a vehicle. Incoming measured values are weighted differently, depending on the particular probability of their occurrence at that time. In turn, this is a function of the variable, in particular a relative location or a relative speed, which is associated with the object. For this purpose, the probability of occurrence, which is deduced from a comprehensive reflection model for the object, is provided.
So-called radar reflection modeling is made possible by the present invention. Measurements of the surroundings allow a location and/or speed of an object present in the surroundings of the device to be determined. A signal is transmitted, and is reflected from a point on the object as at least one measuring signal and is received by a sensor. The device may be situated in a vehicle and used for monitoring objects in the surroundings of this vehicle.
Lastly, from all the incoming measuring signals from the object, a consolidated measured value may be formed which optimally describes the sought physical variables of the object. The consolidated measured value may be further processed in a subsequent tracking algorithm.
By use of a statistical distribution of the probability of occurrence and thus of radar reflections on the object, a location or speed determination, and therefore an estimation of the state of the object, may be carried out more accurately and reliably. Apparent motions of the object which are caused by reflection motions on the object and which thus corrupt a measurement result may be minimized by using the method.
Furthermore, motions in the longitudinal and transverse directions relative to the device may be taken into account.
Separate treatment of each variable or measurement dimension, such as distance, speed, or lateral offset of the object, may facilitate ease of operation of the model.
In the evaluation of measuring signals provided by angular resolution sensors or radar sensors, apparent motions therefore do not occur on average in the longitudinal or transverse direction when vehicles are passed; i.e., the estimated location of the object does not move along an outer edge of the object, but instead describes the center of a rear edge of the object on average.
The method may be used in predictive safety systems (PSS2) and adaptive cruise control systems (ACC plus).
Further advantages and embodiments of the invention result from the description and the accompanying drawings.
It is understood that the features mentioned above and to be described below may be used not only in the particular stated combination, but also in other combinations or alone, without departing from the scope of the exemplary embodiments and/or exemplary methods of the present invention.
The exemplary embodiments and/or exemplary methods of the present invention is schematically illustrated on the basis of one exemplary embodiment in the drawings, and is described in detail below with reference to the drawings.
The figures are described in an interrelated and integrated manner, with use of the same reference numerals to denote identical components.
The measurement of a correct distance from a rear edge as a point 2 on an object 4, which in this case takes the form a vehicle, is based on the probability of occurrence 6 or the probability distribution of radar reflections shown in the diagram in
One reason for an asymmetry in the probability of occurrence 6 is that the rear edge of object 4 is not always correctly estimated. For example, when measuring objects 4 for the first time, it may happen that the front edge is measured instead of the rear edge. The probability that the actual rear edge is thus located farther backward, corresponding to a smaller distance, is higher than the probability that the actual rear edge is located farther forward, corresponding to a larger distance.
A measurement of a correct speed of object 4 is based on the probability of occurrence 12 of radar reflections shown in the diagram in
In this case, one reason for an asymmetry is that the rear edge as point 2 on object 4 is not always precisely estimated, but that any point and thus any point 2 on object 4 is able to provide a correct speed measurement. Measured values of the speed of the rear edge are generally more accurate than the measured values for points on object 4 situated farther forward, since reflections from the rear edge are more powerful.
For measuring a lateral offset of object 4, the center of the rear edge is estimated in the transverse direction of the object. However, it must be kept in mind that an accurate position of the reflection depends greatly on a viewing angle for object 4.
Detailed tests on objects 14, in a a vehicle schematically illustrated in
Corresponding to these findings, a dimensional model 26, shown in
The relative position of object 35, as shown in
However, an estimation of relative viewing angles 54 or 56 according to
Using theoretical probability considerations, the set of curves 58 shown in the diagram in
All measured values are weighted using the probability of occurrence such that the latter describes the sought physical variable. For determining a lateral offset, measuring signals that primarily also lie on the rear edge are physically provided with the most weight.
A consolidated pseudo-measured value is formed from the probability of occurrence, which describes the currently most probable speed of object 35 and the most probable position of center 37 of the rear edge of object 35. This pseudo-measured value may be further processed with the assistance of common tracking algorithms, using Kalman filters, for example.
Number | Date | Country | Kind |
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10 2005 049 129.4 | Oct 2005 | DE | national |
Filing Document | Filing Date | Country | Kind | 371c Date |
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PCT/US06/65458 | 8/18/2006 | WO | 00 | 2/20/2009 |