2023
DOI: 10.3390/electronics12081903
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Dynamic Vehicle Pose Estimation with Heuristic L-Shape Fitting and Grid-Based Particle Filter

Abstract: Vehicle pose estimation with LIDAR plays a crucial role in autonomous driving systems. It serves as the fundamental basis for functions such as tracking, path planning, and decision-making. However, the majority of current vehicle pose estimation techniques struggle to produce satisfactory results when faced with incomplete observation measurements, such as L-shaped point cloud clusters without side contours or those including side-view mirrors. In addition, the requirement for real-time results further increa… Show more

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Cited by 3 publications
(1 citation statement)
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“…This technology currently plays a pivotal role in a variety of application scenarios, and its demand is steadily increasing with the development of industrial automation and spatial computing technologies. Currently, in specific application domains, there has been notable research progress, such as in industrial automation [16][17][18], autonomous driving [19][20][21], and virtual and augmented reality [22,23], among others. In the context of industrial automation, object pose estimation serves as a critical tool for assisting robots in determining the position and orientation of objects, enabling more precise grasping, assembly, or docking.…”
Section: Related Work 21 Pose Estimationmentioning
confidence: 99%
“…This technology currently plays a pivotal role in a variety of application scenarios, and its demand is steadily increasing with the development of industrial automation and spatial computing technologies. Currently, in specific application domains, there has been notable research progress, such as in industrial automation [16][17][18], autonomous driving [19][20][21], and virtual and augmented reality [22,23], among others. In the context of industrial automation, object pose estimation serves as a critical tool for assisting robots in determining the position and orientation of objects, enabling more precise grasping, assembly, or docking.…”
Section: Related Work 21 Pose Estimationmentioning
confidence: 99%