MOTION-CHARACTERISTIC BASED OBJECT CLASSIFICATION FOR AUTOMATED VEHICLE
An object-classification system for an automated vehicle includes an object-detector and a controller. The object-detector may be a camera, radar, lidar or any combination thereof. The object-detector detects an object proximate to a host-vehicle. The controller is in communication with the object-detector. The controller is configured to determine a density of the object based on a motion-characteristic of the object caused by air-movement proximate to the object, and operate the host-vehicle to avoid striking the object with the host-vehicle when the density of the object is classified as dense.
This disclosure generally relates to an object-classification system for an automated vehicle, and more particularly relates to system that operates a host-vehicle to avoid striking an object with the host-vehicle when a density of the object is classified as dense.
BACKGROUND OF INVENTIONAutomated vehicles are generally programmed to avoid running-over or striking any detected object. However, sudden evasive maneuvers are not necessary when the detected objected is an empty paper bag or small tumbleweed.
SUMMARY OF THE INVENTIONIn accordance with one embodiment, an object-classification system for an automated vehicle is provided. The system includes an object-detector and a controller. The object-detector detects an object proximate to a host-vehicle. The controller is in communication with the object-detector. The controller is configured to determine a density of the object based on a motion-characteristic of the object caused by air-movement proximate to the object, and operate the host-vehicle to avoid striking the object with the host-vehicle when the density of the object is classified as dense.
Further features and advantages will appear more clearly on a reading of the following detailed description of the preferred embodiment, which is given by way of non-limiting example only and with reference to the accompanying drawings.
The present invention will now be described, by way of example with reference to the accompanying drawings, in which:
The system 10 includes an object-detector 20 that detects objects proximate to, e.g. within two-hundred-meters (200 m) of, the host-vehicle 12. The object-detector 20 may include or consist of devices such as a camera, radar, lidar, or any combination thereof. The one or multiple devices that form the object-detector 20 are preferably, but not necessarily, mounted on the host-vehicle 12. If multiple devices are used, they may be co-located as suggested by
Referring back to
The controller 28 is configured to or programmed to determine a density 30 of the object 18 (e.g. log 18A, empty plastic-bag 18B) based on a motion-characteristic 32 of the object 18 that is caused by an air-movement 34 proximate to (i.e. close enough to influence movement of) the object 18. A variety of techniques used to determine the presence of, or detect, the air-movement 34 are described below. The amount or degree to which a particular instance of the object 18 moves in response to the air-movement 34 indicates the motion-characteristic and is used to determine the density 30 of the object 18. By way of example, almost any instance of the air-movement 34 would cause the empty plastic-bag 18B to move on or across the roadway 24. However, it would take a very strong instance of the air-movement 34 to move the log 18A. That is, the density 30 is determined based on the motion-characteristic 32, i.e. how much the object 18 moves for a given instance of the air-movement 34.
It follows that the empty plastic-bag 18B would be characterized as having a low-density, so the system 10 or more specifically the controller 28 may not make any effort to avoid running-over the empty plastic-bag 18B. However, the log 18A would be characterized or classified as dense, so the controller 28 may operate the host-vehicle 12 to avoid striking the object 18 with the host-vehicle 12 when the density 30 of the object is classified as dense. For a given instance or amount or quantity or value or magnitude/direction of the air-movement 34, the object 18 may be characterized as moving or motionless. If the object 18 is characterized as moving, then the amount of the air-movement 34 is used to classify the object 18 as dense or low-density, or some other indicator useful to estimate/determine if the host-vehicle 12 could be damaged by striking, i.e. running-over, the object 18. Non-limiting examples of how the air-movement 34 may be determined or estimated will now be described in reference to
In one embodiment of the system 10, the air-movement 34 proximate to the object 18 may be determined based on a steering-correction 36 necessary to keep the host-vehicle 12 centered in a roadway 24. As will be recognized by those in the art, a cross-wind 38 (e.g. the air-movement 34 indicated by the arrow in
In another embodiment of the system 10, the air-movement 34 proximate to the object 18 may be determined based on movement of an other-object 42, a tumbleweed 42A and/or a cluster of tall-grasses 42B, and/or a tree 42C for example, proximate to the roadway 24. Linear movement by the tumbleweed 42A, waving movement by the tall-grasses 42B, and/or oscillatory-movement by the tree 42C may all be used an indicator of the air-movement 34. Image-processing of a signal from the camera, or noise-analysis of signals from the radar and/or the lidar may all be used to determine the air-movement 34, as will be recognized by those in the art.
In another embodiment of the system 10, the air-movement 34 proximate to the object 18 may be determined based on air-displacement-model 44 of an other-vehicle 46 passing near, e.g. within five meters (5 m), the object 18.
Accordingly, an object-classification system (the system 10), a controller 28 for the system 10, and a method of operating the system 10 is provided. If the object 18 is dense and large enough, the log 18A for example, the controller 28 preferably steers the host-vehicle 12 around or away from the log 18A. If the object 18 were a rock (not shown) which is clearly dense, but possibly small enough for the host-vehicle 12 to straddle (i.e. pass over and between the wheels of the host-vehicle 12) without striking, then the controller 28 may operate the host-vehicle 12 to straddle the object. If the object 18 is of low-density (e.g. the empty plastic-bag 18B or the tumble-weed 42A), even if too large to straddle without striking, the controller 28 may allow the host-vehicle 12 to run-over the object 18.
While this invention has been described in terms of the preferred embodiments thereof, it is not intended to be so limited, but rather only to the extent set forth in the claims that follow.
Claims
1. An object-classification system for an automated vehicle, said system comprising:
- an object-detector that detects an object proximate to a host-vehicle; and
- a controller in communication with the object-detector, said controller configured to characterize a density of the object based on a motion-characteristic of the object caused by air-movement proximate to the object, and operate the host-vehicle to avoid striking the object with the host-vehicle when the density of the object is classified as dense.
2. The system in accordance with claim 1, wherein the air-movement proximate to the object is determined based on a steering-correction necessary to keep the host-vehicle centered in a roadway.
3. The system in accordance with claim 1, wherein the air-movement proximate to the object is determined based on movement of an other-object proximate to the roadway.
4. The system in accordance with claim 1, wherein the air-movement proximate to the object is determined based on air-displacement-model of an other-vehicle passing near the object.
5. The system in accordance with claim 4, wherein the air-displacement-model of the other-vehicle is characterized by a size of the other-vehicle, a speed of the other-vehicle, and a distance between the other-vehicle and the object.
Type: Application
Filed: Apr 6, 2017
Publication Date: Oct 11, 2018
Inventors: Junqing Wei (Bridgeville, PA), Wenda Xu (Pittsburgh, PA)
Application Number: 15/480,520