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MULTI-VIEW DEEP NEURAL NETWORK FOR LIDAR PERCEPTION

机译:用于LIDAR感知的多视图深神经网络

摘要

A deep neural network(s) (DNN) may be used to detect objects from sensor data of a three dimensional (3D) environment. For example, a multi-view perception DNN may include multiple constituent DNNs or stages chained together that sequentially process different views of the 3D environment. An example DNN may include a first stage that performs class segmentation in a first view (e.g., perspective view) and a second stage that performs class segmentation and/or regresses instance geometry in a second view (e.g., top-down). The DNN outputs may be processed to generate 2D and/or 3D bounding boxes and class labels for detected objects in the 3D environment. As such, the techniques described herein may be used to detect and classify animate objects and/or parts of an environment, and these detections and classifications may be provided to an autonomous vehicle drive stack to enable safe planning and control of the autonomous vehicle.
机译:深度神经网络(DNN)可用于检测来自三维(3D)环境的传感器数据的对象。例如,多视图感知DNN可以包括在一起顺序地处理3D环境的不同视图的多个组成DNN或阶段。示例DNN可以包括在第一视图(例如,透视图)中执行类分割的第一阶段和在第二视图中执行类分段和/或回归实例几何体的第一个视图(例如,透视图)和第二阶段(例如,自上而下)。可以处理DNN输出以生成2D和/或3D边界框和用于检测到3D环境中的对象的类标签。这样,这里描述的技术可以用于检测和分类动画对象和/或环境的部分,并且可以向自主车辆驱动堆栈提供这些检测和分类,以实现自主车辆的安全规划和控制。

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