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Intersection motion planning method and device of automatic driving equipment, and electronic equipment

An automatic driving and motion planning technology, applied in the field of computer-readable storage medium and intersection motion planning of automatic driving equipment, can solve the problems of slow learning process, difficult model convergence, waste of computing resources of automatic driving equipment, etc. The effect of saving computing resource consumption

Pending Publication Date: 2021-05-28
BEIJING SANKUAI ONLINE TECH CO LTD
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  • Summary
  • Abstract
  • Description
  • Claims
  • Application Information

AI Technical Summary

Problems solved by technology

In the motion planning scheme in the prior art, the learning process is slow during the model training process, and the model is not easy to converge
Moreover, when processing the collected environmental images in the motion planning process, a large number of features need to be extracted from the images. For the scene where the automatic driving equipment decides the road motion state, it contains many redundant states, which wastes the calculation of the automatic driving equipment. resource

Method used

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  • Intersection motion planning method and device of automatic driving equipment, and electronic equipment
  • Intersection motion planning method and device of automatic driving equipment, and electronic equipment
  • Intersection motion planning method and device of automatic driving equipment, and electronic equipment

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Embodiment 1

[0029] In the motion planning task, it is necessary to consider the motion state information of the automatic driving equipment and surrounding obstacles such as position, speed, and steering. Directly using the state vector to describe the motion state of the automatic driving device has a large dimension, and as the scene becomes more complex, it will face the curse of dimensionality when searching the solution space. The intersection motion planning disclosed in the embodiment of the present application aims to improve the existing reinforcement learning-based motion planning scheme, and integrate the event-driven optimization method into the decision-making problem of the intersection scene. Use the problem structure to do state aggregation to alleviate the dimensionality disaster of the search space and reduce the influence of unnecessary dimensional information on the learning results, thereby improving the accuracy of path planning.

[0030] Based on the ideas above, in...

Embodiment 2

[0092] An intersection motion planning device for automatic driving equipment disclosed in the embodiment of the present application, such as Figure 4 As shown, the device includes:

[0093] A real-time joint state acquisition unit 410, configured to acquire a real-time joint state, wherein the joint state data includes: state data of the automatic driving device and state data of obstacles around the automatic driving device;

[0094] An event determining unit 420, configured to determine a predefined event matching the joint state, wherein the predefined event includes: a controllable event indicating that an action needs to be taken;

[0095] The controllable event decision unit 430 is configured to respond to the predefined event matched by the joint state as the controllable event, and perform a mapping process on the joint state from event space to action space through the pre-trained reinforcement learning network, obtaining an action vector matching the joint state; ...

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Abstract

The invention discloses an intersection motion planning method of automatic driving equipment, belongs to the technical field of automatic control, and helps to save computing resource consumption during motion planning. The intersection motion planning method disclosed by the embodiment of the invention comprises the following steps of: acquiring a real-time joint state including state data of automatic driving equipment and state data of obstacles around the automatic driving equipment; determining a predefined event of joint state matching, wherein the predefined event includes: a controllable event indicating that an action needs to be taken; in response to the fact that a predefined event matched with the joint state is the controllable event, carrying out mapping processing from an event space to an action space on the joint state through a pre-trained reinforcement learning network, thus obtaining an action vector matched with the joint state; and performing motion planning on the automatic driving equipment based on the obtained action vector, thus saving calculation resource consumption during intersection motion planning, and improving the intersection motion planning efficiency of the automatic driving equipment.

Description

technical field [0001] The embodiments of the present application relate to the technical field of automatic control, and in particular to a method, device, electronic device, and computer-readable storage medium for intersection motion planning of automatic driving equipment. Background technique [0002] The motion planning module is the core technology module in the automatic driving system. The motion planning module controls the motion direction and speed of the automatic driving equipment based on the information obtained by the perception and positioning module, and plans an efficient motion path that meets the safety, comfort, and vehicle dynamic constraints. One way of implementing the motion planning module in the prior art is to use deep learning methods to obtain high-level semantic information of collected environmental images, and use reinforcement learning methods to complete end-to-end real-time scene path planning from the environment. In the motion plannin...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G05D1/02
CPCG05D1/0246G05D1/0223G05D1/0214G05D1/0221G05D1/0276
Inventor 白钰金昕泽贾庆山任冬淳
Owner BEIJING SANKUAI ONLINE TECH CO LTD
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