METHOD AND DEVICE FOR DETERMINING A HIGHLY-PRECISE POSITION AND FOR OPERATING AN AUTOMATED VEHICLE
20200192401 ยท 2020-06-18
Assignee
Inventors
Cpc classification
G08G1/096725
PHYSICS
G01C21/005
PHYSICS
G05D1/0088
PHYSICS
G01S2013/9322
PHYSICS
G08G1/0129
PHYSICS
G01C21/28
PHYSICS
G08G1/096775
PHYSICS
G05D1/0276
PHYSICS
International classification
G01C21/28
PHYSICS
G01N33/00
PHYSICS
Abstract
A method and a device for determining a highly-precise position and for operating an automated vehicle, including receiving map data values from an external server, which represent a map, the map including weather-specific surroundings features, determining a weather-specific surroundings condition, detecting surroundings data values, the surroundings data values representing the surroundings of the automated vehicle, the surroundings including dynamic surroundings features, determining the highly-precise position based on a comparison between the weather-specific surroundings features and the dynamic surroundings features depending on the weather-specific surroundings condition, and operating the automated vehicle, depending on the highly-precise position.
Claims
1-6 (canceled)
7. A method for determining a highly-precise position and for operating an automated vehicle, the method comprising the following steps: receiving map data values from an external server, the map data representing a map, the map including weather-specific surroundings features; determining a weather-specific surroundings condition; detecting surroundings data values, the surroundings data values representing surroundings of the automated vehicle, the surroundings including dynamic surroundings features; determining the highly-precise position, based on a comparison between the weather-specific surroundings features and the dynamic surroundings features, depending on the weather-specific surroundings condition; and operating the automated vehicle, depending on the highly-precise position.
8. The method as recited in claim 7, wherein an evaluation of the comparison is carried out depending on predefined criteria, and depending on the evaluation, at least one of the dynamic surroundings features is transmitted to the external server.
9. The method as recited in claim 7, wherein the weather-specific surroundings features were previously detected by at least one additional vehicle and were transmitted to the external server.
10. The method as recited in claim 9, wherein the weather-specific surroundings features and/or the dynamic surroundings features include: (i) light reflections, and/or (ii) tracks of the at least one additional vehicle.
11. A device for determining a highly-precise position and for operating an automated vehicle, the device comprising: a first device configured to receive map data values from an external server, the map data values representing a map, the map including weather-specific surroundings features; a second device configured to determine a weather-specific surroundings condition; a third device configured to detect surroundings data values, the surroundings data values representing surroundings of the automated vehicle, the surroundings including dynamic surroundings features; a fourth device configured to determine the highly-precise position, based on a comparison between the weather-specific surroundings features and the dynamic surroundings features, depending on the weather-specific surroundings condition; and a fifth device configured to operate the automated vehicle, depending on the highly-precise position.
12. The device as recited in claim 11, wherein the first device and/or the second device and/or the third device and/or the fourth device and/or the fifth device, is configured to carry out a method comprising: receiving the map data values from the external server; determining the weather-specific surroundings condition; detecting the surroundings data values; determining the highly-precise position, based on the comparison between the weather-specific surroundings features and the dynamic surroundings features, depending on the weather-specific surroundings condition; and operating the automated vehicle, depending on the highly-precise position.
13. The device as recited in claim 11, wherein the first device includes a receiver, wherein the second device, the third device, and the fourth device include a processor, and wherein the fourth device includes a control unit.
Description
BRIEF DESCRIPTION OF THE DRAWINGS
[0021] Exemplary embodiments of the present invention are depicted in the figures and are described in greater detail below.
[0022]
[0023]
[0024]
DETAILED DESCRIPTION OF EXAMPLE EMBODIMENT
[0025]
[0026] Device 110 includes first means 111 for receiving 310 map data values from an external server 210, which represent a map, the map including weather-specific surroundings features 220, second means 112 for determining 320 a weather-specific surroundings condition, and third means 113 for detecting 330 surroundings data values, the surroundings data values representing surroundings 200 of automated vehicle 100, the surroundings including dynamic surroundings features 230. Device 110 further includes fourth means 114 for determining 340 highly-precise position 150, based on a comparison between weather-specific surroundings features 220 and dynamic surroundings features 230, depending on the weather-specific surroundings condition, and fifth means 115 for operating 350 automated vehicle 100, depending on highly-precise position 150.
[0027] First means 111 for receiving 310 map data values from an external server 210 is configured, for example, as a transmitting and/or receiving unit. In another specific embodiment, first means 111 is configured in such a way that it is already connected to a transmitting and/or receiving unit included in the vehicle.
[0028] Second means 112 for determining 320 a weather-specific surroundings condition is configured, for example, as a transmitting and/or receiving unit, which requests the weather-specific surroundings condition, for example, from a weather station and/or another external server. In one specific embodiment, the transmitting and/or receiving unit is/are identical to the transmitting and/or receiving unit of first means 111.
[0029] In another specific embodiment, second means 112 is configured in such a way that the weather-specific surroundings condition is detected with the aid of a surroundings sensor system 101, which is included in automated vehicle 100. For this purpose, second means 112 additionally includes, for example, a processing unit (processor, working memory, hard disk, software), which is configured to correspondingly evaluate surroundings data, which are detected with the aid of surroundings sensor system 101for example, in the form of an image from a video sensor and/or in the form of humidity values from a humidity sensor.
[0030] Third means 113 for detecting 330 surroundings data values is designed, for example, in such a way that they have an inherent surroundings sensor system or is connected to surroundings sensor system 101 already included in automated vehicle 100. Furthermore, third means includes, for example, a processing unit (processor, working memory, hard disk, software), which processes and evaluates the surroundings data values.
[0031] Surroundings sensor system 101 is understood to be, for example, at least one video and/or at least one radar and/or at least one LIDAR, and/or at least one ultrasound and/or at least one additional sensor, which is/are configured to detect surroundings 200 of automated vehicle 100 in the form of surroundings data values.
[0032] Fourth means 114 for determining 340 highly-precise position 150, based on a comparison between weather-specific surroundings features 220 and dynamic surroundings features 230, depending on the weather-specific surroundings condition, is configured, for example, as a control unit and/or processing unit. It includes, for example, a processor, a working memory, and a hard disk, as well as a suitable software for determining 340 a highly-precise position 150 of automated vehicle 100.
[0033] Fifth means 115 for operating 350 automated vehicle 100, depending on highly-precise position 150, is configured, for example, as a control unit.
[0034]
[0035] The automated vehicle receives map data values from an external server 210 with the aid of first means 111, the map data values representing a map, the map including weather-specific surroundings features 220. In one specific embodiment, the map data values are received, for example, at regular time intervals and/or location intervals, depending on the (not highly-precise) position of automated vehicle 100. In another specific embodiment, automated vehicle 100 requests the map data values, for example, if no up-dated map is present and/or a determination 340 of a highly-precise position 150 is not possible. In another specific embodiment, the map data values are transmitted from external server 210 if, for example, an update of the map has been carried out.
[0036] Automated vehicle 100 further determines a weather-specific surroundings condition with the aid of second means 112. In one specific embodiment, this step is carried out in that the weather-specific surroundings condition is transmitted, together with the map data values, from external server 210 and are received with the aid of first means 111. In another specific embodiment, the weather-specific surroundings condition is determined independently from the received map data valuesfor example, with the aid of surroundings sensor system 101 of automated vehicle 100.
[0037] Automated vehicle 100 further detects surroundings data values, the surroundings data values representing the surroundings 200 of automated vehicle 100, surroundings 200 including dynamic surroundings features 230.
[0038] In one specific embodiment, the dynamic surroundings feature corresponds, for example, to a traffic lane of at least one other vehicle 250, which, for example, previously transmits its own highly-precise positionin regular intervalsto external server 210. External server 210 in turn transmits the map data values, the map now including the expected traffic lane of the at least one additional vehicle 250 as weather-specific surroundings feature 220the track not being visible on a dry roadway.
[0039] This track is now detected with the aid of third means 113 of automated vehicle 100 as dynamic surroundings feature 230.
[0040] Subsequently, highly-precise position 150 of automated vehicle 100 is determined, based on a comparison between weather-specific surroundings features 220 and dynamic surroundings features 230 (here, for example, the track of at least one additional vehicle 250 on the wet roadway), depending on the weather-specific surroundings condition. The weather-specific surroundings condition is thereby used, for example, to determine the actual highly-precise position 150, since due to this state appropriate parameters are used based. In another specific embodiment, the weather-specific surroundings condition decides, for example, whether the weather-specific surroundings feature is suited for determining 340 highly-precise position 150. For example, the track may be better suited during light rain for being detected with the aid of third means 113, than during very heavy rain, since the track is hardly to be recognized due to increasing water volumes.
[0041] Highly-precise position 150 is determined, for example, in that dynamic surroundings feature 230 is detected and a relative position of automated vehicle 100 to this is determined. This is carried out, for example, with the aid of a directional vector and a distance between dynamic surroundings feature 230 and automated vehicle 100. Since the likewise highly-precise position of weather-specific surroundings feature 220 is recorded in the map data values, highly-precise position 150 of automated vehicle 100 is determined, starting from this position and the relative position, for example, with the aid of vector addition.
[0042] In another specific embodiment, a light reflection is used, for example, as weather-specific feature 220, which may be detected as dynamic surroundings feature 230 with the aid of surroundings sensor system 101, as long as, for example, the road, on which automated vehicle 100 is located, has a wet road surface.
[0043] In one specific embodiment, a dynamic surroundings feature 230, which is not included in the map, is detected by automated vehicle 100 and transmitted to external server 210.
[0044]
[0045] Method 300 starts in step 301.
[0046] In step 310, map data values, which represent a map, the map including weather-specific surroundings features 220, are received from an external server 210.
[0047] In step 320, a weather-specific surroundings condition is determined.
[0048] In step 330, surroundings data values are detected, the surroundings data values representing the surroundings 200 of automated vehicle 100, the surroundings 200 including dynamic surroundings features 230.
[0049] In step 340, highly-precise position 150 is determined, based on a comparison between weather-specific surroundings features 220 and dynamic surroundings features 230, depending on the weather-specific surroundings condition.
[0050] In step 350, automated vehicle 100 is operated depending on highly-precise position 150.
[0051] Method 300 ends in step 360.