| Literature DB >> 36015750 |
Haitao Liu1, Wenbo Pan1, Yunqing Hu1, Cheng Li1, Xiwen Yuan1, Teng Long1.
Abstract
There exist many difficulties in environmental perception in transportation at open-pit mines, such as unpaved roads, dusty environments, and high requirements for the detection and tracking stability of small irregular obstacles. In order to solve the above problems, a new multi-target detection and tracking method is proposed based on the fusion of Lidar and millimeter-wave radar. It advances a secondary segmentation algorithm suitable for open-pit mine production scenarios to improve the detection distance and accuracy of small irregular obstacles on unpaved roads. In addition, the paper also proposes an adaptive heterogeneous multi-source fusion strategy of filtering dust, which can significantly improve the detection and tracking ability of the perception system for various targets in the dust environment by adaptively adjusting the confidence of the output target. Finally, the test results in the open-pit mine show that the method can stably detect obstacles with a size of 30-40 cm at 60 m in front of the mining truck, and effectively filter out false alarms of concentration dust, which proves the reliability of the method.Entities:
Keywords: multi-source information fusion; obstacle detection; point cloud segmentation; shape estimation; unmanned mining trucks
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Substances:
Year: 2022 PMID: 36015750 PMCID: PMC9415720 DOI: 10.3390/s22165989
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.847
Figure 1The framework of the multi-target detection and tracking method diagram.
Figure 2Point cloud constraint diagram.
Figure 3Point cloud vertical gradient feature diagram.
Figure 4The detection effect of first segmentation and secondary segmentation. (a) Detection effect based on first segmentation. (b) Detection effect based on secondary segmentation.
Figure 5Angle estimation of the retaining wall.
Figure 6Nearest neighbor association diagram.
Figure 7Driving environment of unmanned mining trucks.(a) The photo of the mine truck with Lidar and millimeter-wave radar; (b) The main road littered with stones; (c) The rough road in the loading area; (d) The dust scene in the unloading area.
Figure 8Multi-source sensor target fusion detection and tracking.
Figure 9Detection and tracking effect of small gravel piles.
Figure 10Stone detection and tracking effect.