Real-Time 3d Lidar Flow For Autonomous Vehicles

2019 30TH IEEE INTELLIGENT VEHICLES SYMPOSIUM (IV19)(2019)

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摘要
Autonomous vehicles require an accurate understanding of the underlying motion of their surroundings. Traditionally this understanding is acquired using optical flow algorithms on camera images, RADAR sensors which measure velocity directly or by object tracking through various sensors. We propose a novel method to estimate point-wise 3D motion vectors from LiDAR point clouds using fully convolutional networks trained and evaluated on the KITTI dataset. Besides, we show how this motion information can be used to efficiently estimate odometry. We demonstrate that our approach achieves significant speed ups over the current state of the art.
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关键词
autonomous vehicles,odometry estimation,KITTI dataset,object tracking,velocity measurement,real-time 3D LiDAR flow,convolutional networks,motion information,LiDAR point clouds,point-wise 3D motion vectors,RADAR sensors,camera images,optical flow algorithms
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