LaserFlow: Efficient and Probabilistic Object Detection and Motion Forecasting
In this work, we present LaserFlow, an efficient method for 3D object detection and motion forecasting from LiDAR. Unlike the previous work, our approach utilizes the native range view representation of the LiDAR, which enables our method to operate at the full range of the sensor in real-time witho...
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Zusammenfassung: | In this work, we present LaserFlow, an efficient method for 3D object
detection and motion forecasting from LiDAR. Unlike the previous work, our
approach utilizes the native range view representation of the LiDAR, which
enables our method to operate at the full range of the sensor in real-time
without voxelization or compression of the data. We propose a new multi-sweep
fusion architecture, which extracts and merges temporal features directly from
the range images. Furthermore, we propose a novel technique for learning a
probability distribution over future trajectories inspired by curriculum
learning. We evaluate LaserFlow on two autonomous driving datasets and
demonstrate competitive results when compared to the existing state-of-the-art
methods. |
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DOI: | 10.48550/arxiv.2003.05982 |