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FUTURE TRAJECTORY PREDICTIONS IN MULTI-ACTOR ENVIRONMENTS FOR AUTONOMOUS MACHINE APPLICATIONS

机译:自主机器应用中的多演员环境中的未来轨迹预测

摘要

In various examples, past location information corresponding to actors in an environment and map information may be applied to a deep neural network (DNN)—such as a recurrent neural network (RNN)—trained to compute information corresponding to future trajectories of the actors. The output of the DNN may include, for each future time slice the DNN is trained to predict, a confidence map representing a confidence for each pixel that an actor is present and a vector field representing locations of actors in confidence maps for prior time slices. The vector fields may thus be used to track an object through confidence maps for each future time slice to generate a predicted future trajectory for each actor. The predicted future trajectories, in addition to tracked past trajectories, may be used to generate full trajectories for the actors that may aid an ego-vehicle in navigating the environment.
机译:在各种示例中,对应于环境和地图信息中的演员的过去的位置信息可以应用于深度神经网络(DNN)-SUCH作为经常性神经网络(RNN) - 以计算与演员的未来轨迹相对应的信息。 对于每个未来的时间切片,DNN的输出可以包括DNN训练以预测,表示actor存在的每个像素的置信度的置信度图和表示用于现有时间切片的置信率映射中的演员位置的矢量场。 因此,载体场可以用于通过为每个未来的时间切片施取置信映射来追踪对象,以为每个actor生成预测的未来轨迹。 除了跟踪过去的轨迹之外,预测的未来轨迹可用于为可以帮助驾驶环境中的自我车辆提供帮助的演员产生完整的轨迹。

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