首页> 外国专利> DEEP NEURAL NETWORK FOR DETECTING OBSTACLE INSTANCES USING RADAR SENSORS IN AUTONOMOUS MACHINE APPLICATIONS

DEEP NEURAL NETWORK FOR DETECTING OBSTACLE INSTANCES USING RADAR SENSORS IN AUTONOMOUS MACHINE APPLICATIONS

机译:深度神经网络,用于在自动机器应用中使用雷达传感器检测障碍物实例

摘要

In various examples, a deep neural network(s) (e.g., a convolutional neural network) may be trained to detect moving and stationary obstacles from RADAR data of a three dimensional (3D) space, in both highway and urban scenarios. RADAR detections may be accumulated, ego-motion-compensated, orthographically projected, and fed into a neural network(s). The neural network(s) may include a common trunk with a feature extractor and several heads that predict different outputs such as a class confidence head that predicts a confidence map and an instance regression head that predicts object instance data for detected objects. The outputs may be decoded, filtered, and/or clustered to form bounding shapes identifying the location, size, and/or orientation of detected object instances. The detected object instances may be provided to an autonomous vehicle drive stack to enable safe planning and control of the autonomous vehicle.
机译:在各种示例中,可以训练深神经网络(例如,卷积神经网络)以检测来自公路和城市场景的三维(3D)空间的雷达数据的移动和固定障碍物。雷达检测可以累积,自我运动补偿,正交投影,并馈入神经网络。神经网络可以包括具有特征提取器的公共中继和几个头,其预测不同输出,例如类置信头,其预测置信映射映射和实例回归头,其预测被检测对象的对象实例数据。可以解码,过滤和/或聚集输出以形成识别检测到的对象实例的位置,大小和/或取向的边界形状。检测到的对象实例可以提供给自主车辆驱动堆叠,以实现自主车辆的安全规划和控制。

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