Out-of-distribution- and location-aware PointNets for real-time 3D road user detection without a GPU

被引:0
作者
Alvari Seppänen
Eerik Alamikkotervo
Risto Ojala
Giacomo Dario
Kari Tammi
机构
[1] Aalto University,
[2] Helsinki Institute of Physics,undefined
来源
Journal of Big Data | / 11卷
关键词
Perception; Deep learning; Object detection; Limited computational resources;
D O I
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学科分类号
摘要
3D road user detection is an essential task for autonomous vehicles and mobile robots, and it plays a key role, for instance, in obstacle avoidance and route planning tasks. Existing solutions for detection require expensive GPU units to run in real-time. This paper presents a light algorithm that runs in real-time without a GPU. The algorithm combines a classical point cloud proposal generator approach with a modern deep learning technique to achieve a small computational requirement and comparable accuracy to the state-of-the-art. Typical downsides of this approach, such as many out-of-distribution proposals and loss of location information, are examined, and solutions are proposed. We have evaluated the performance of the method with the KITTI dataset and with our own annotated dataset collected with a compact mobile robot platform equipped with a low-resolution LiDAR (16-channel). Our approach reaches a real-time inference on a standard CPU, unlike other solutions in the literature. Furthermore, we achieve superior speed on a GPU, which indicates that our method has a high degree of parallelism. Our method enables low-cost mobile robots to detect road users in real-time.
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  • [1] Yan Y(2018)Second: sparsely embedded convolutional detection Sensors 18 3337-8
  • [2] Mao Y(2010)Semantic 3d object maps for everyday manipulation in human living environments KI-Künstliche Intelligenz 24 345-75
  • [3] Li B(2020)Energy-based out-of-distribution detection Adv Neural Inf Process Syst 33 21464-67
  • [4] Rusu RB(2021)Towards 3D LiDAR-based semantic scene understanding of 3D point cloud sequences: the SemanticKITTI Dataset Int J Robot Res 40 959-316
  • [5] Liu W(2021)Birdnet+: two-stage 3d object detection in lidar through a sparsity-invariant bird’s eye view IEEE Access 9 160299-84
  • [6] Wang X(2019)Ground surface filtering of 3d point clouds based on hybrid regression technique IEEE Access 7 23270-undefined
  • [7] Owens J(undefined)undefined undefined undefined undefined-undefined
  • [8] Li Y(undefined)undefined undefined undefined undefined-undefined
  • [9] Behley J(undefined)undefined undefined undefined undefined-undefined
  • [10] Garbade M(undefined)undefined undefined undefined undefined-undefined