ANALYSIS OF POINT CLOUD DATA USING DEPTH AND TEXTURE MAPS

    公开(公告)号:US20190266736A1

    公开(公告)日:2019-08-29

    申请号:US16051263

    申请日:2018-07-31

    Abstract: Various types of systems or technologies can be used to collect data in a 3D space. For example, LiDAR (light detection and ranging) and RADAR (radio detection and ranging) systems are commonly used to generate point cloud data for 3D space around vehicles, for such functions as localization, mapping, and tracking. This disclosure provides improvements for processing the point cloud data that has been collected. The processing improvements include analyzing point cloud data using trajectory equations, depth maps, and texture maps. The processing improvements also include representing the point cloud data by a two dimensional depth map or a texture map and using the depth map or texture map to provide object motion, obstacle detection, freespace detection, and landmark detection for an area surrounding a vehicle.

    BELIEF PROPAGATION FOR RANGE IMAGE MAPPING IN AUTONOMOUS MACHINE APPLICATIONS

    公开(公告)号:US20230033470A1

    公开(公告)日:2023-02-02

    申请号:US17392050

    申请日:2021-08-02

    Abstract: In various examples, systems and methods are described that generate scene flow in 3D space through simplifying the 3D LiDAR data to “2.5D” optical flow space (e.g., x, y, and depth flow). For example, LiDAR range images may be used to generate 2.5D representations of depth flow information between frames of LiDAR data, and two or more range images may be compared to generate depth flow information, and messages may be passed—e.g., using a belief propagation algorithm—to update pixel values in the 2.5D representation. The resulting images may then be used to generate 2.5D motion vectors, and the 2.5D motion vectors may be converted back to 3D space to generate a 3D scene flow representation of an environment around an autonomous machine.

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