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Super Sparse 3D Object Detection. | LitMetric

Super Sparse 3D Object Detection.

IEEE Trans Pattern Anal Mach Intell

Published: October 2023

AI Article Synopsis

  • The text discusses advancements in long-range perception for autonomous driving using LiDAR technology, focusing on overcome challenges in 3D object detection due to the quadratic cost associated with mainstream detectors.* -
  • It introduces a new fully sparse object detector called FSD, which utilizes a sparse voxel encoder and a Sparse Instance Recognition (SIR) module to efficiently extract features and group points into instances, addressing center feature issues in sparse architectures.* -
  • Additionally, the paper presents FSD++, which further reduces redundancy by leveraging temporal information to process only residual points and a few previous foreground points, leading to improved performance in long-range detection verified on large datasets like Waymo Open and Argoverse 2.*

Article Abstract

As the perception range of LiDAR expands, LiDAR-based 3D object detection contributes ever-increasingly to the long-range perception in autonomous driving. Mainstream 3D object detectors often build dense feature maps, where the cost is quadratic to the perception range, making them hardly scale up to the long-range settings. To enable efficient long-range detection, we first propose a fully sparse object detector termed FSD. FSD is built upon the general sparse voxel encoder and a novel sparse instance recognition (SIR) module. SIR groups the points into instances and applies highly-efficient instance-wise feature extraction. The instance-wise grouping sidesteps the issue of the center feature missing, which hinders the design of the fully sparse architecture. To further enjoy the benefit of fully sparse characteristic, we leverage temporal information to remove data redundancy and propose a super sparse detector named FSD++. FSD++ first generates residual points, which indicate the point changes between consecutive frames. The residual points, along with a few previous foreground points, form the super sparse input data, greatly reducing data redundancy and computational overhead. We comprehensively analyze our method on the large-scale Waymo Open Dataset, and state-of-the-art performance is reported. To showcase the superiority of our method in long-range detection, we also conduct experiments on Argoverse 2 Dataset, where the perception range ([Formula: see text] m) is much larger than Waymo Open Dataset ([Formula: see text] m).

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Source
http://dx.doi.org/10.1109/TPAMI.2023.3286409DOI Listing

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