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BEHAVIOR-GUIDED PATH PLANNING IN AUTONOMOUS MACHINE APPLICATIONS

机译:自治机器应用中行为引导的路径规划

摘要

In various examples, a machine learning model—such as a deep neural network (DNN)—may be trained to use image data and/or other sensor data as inputs to generate two-dimensional or three-dimensional trajectory points in world space, a vehicle orientation, and/or a vehicle state. For example, sensor data that represents orientation, steering information, and/or speed of a vehicle may be collected and used to automatically generate a trajectory for use as ground truth data for training the DNN. Once deployed, the trajectory points, the vehicle orientation, and/or the vehicle state may be used by a control component (e.g., a vehicle controller) for controlling the vehicle through a physical environment. For example, the control component may use these outputs of the DNN to determine a control profile (e.g., steering, decelerating, and/or accelerating) specific to the vehicle for controlling the vehicle through the physical environment.
机译:在各种示例中,可以训练机器学习模型(例如深度神经网络(DNN))以将图像数据和/或其他传感器数据用作输入,以在世界空间中生成二维或三维轨迹点,车辆方向和/或车辆状态。例如,代表车辆的方向,转向信息和/或速度的传感器数据可被收集并用于自动生成轨迹,以用作训练DNN的地面真实数据。一旦被部署,轨迹点,车辆方位和/或车辆状态可以被控制部件(例如,车辆控制器)用来通过物理环境控制车辆。例如,控制组件可以使用DNN的这些输出来确定特定于车辆的控制曲线(例如,转向,减速和/或加速),以通过物理环境控制车辆。

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