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A Combined Voxel and Particle Filter-Based Approach for Fast Obstacle Detection and Tracking in Automotive Applications

机译:用于汽车应用中的快速障碍物检测和跟踪的基于塑料的组合体素和基于粒子滤波器的方法

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摘要

In this paper, a new method for real-time detection, motion estimation, and tracking of generic obstacles using just a 3-D point cloud and odometry information as input is presented. In this approach, a simplification of the world is done using voxels, supported by a particle filter-based 3-D object segmentation and a motion estimation scheme. That combination of techniques leverages a fast and reliable object detection, providing also motion speed and direction information. Four detailed studies have been performed in order to assess the suitability of the method, two of them related to the parameterization of the method and its input point cloud. Another one compares the tracking and detection results with other state-of-the-art methods. Last tests are intended for the characterization of the execution times required. Results are encouraging, with a high detection rate, low error rate, and real-time capable computing performance. In the attached video, it is possible to observe the behavior of the method, both using a stereovision and a light-detection and ranging generated point clouds as an input.
机译:本文介绍了一种新方法,用于实时检测,运动估计和使用仅使用3-D点云和内径信息作为输入的通用障碍物的跟踪。在这种方法中,通过基于粒子滤波器的3-D对象分割和运动估计方案支持的体素来完成世界的简化。这种技术的组合利用了快速可靠的物体检测,提供运动速度和方向信息。已经进行了四项详细研究,以便评估方法的适用性,其中两个与方法的参数化及其输入点云有关。另一个将跟踪和检测结果与其他最先进的方法进行比较。最后一次测试旨在用于表征所需的执行时间。结果令人鼓舞,检测率高,错误率低,实时计算性能。在附加的视频中,可以使用立体管和光检测和测距产生的点云作为输入,观察方法的行为。

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