【24h】

3D Object Detection Based on LiDAR Data

机译:基于LiDAR数据的3D目标检测

获取原文

摘要

Object detection has been a very hot research topic since the advent of artificial intelligence and machine learning. Its importance is very high specifically in advancing autonomous vehicles technology. Many object detection methods have been developed based on different types of data including image, radar, and lidar. Some recent works use point clouds for 3D object detection. One of the recently presented efficient methods is PointPillars, an encoder which learns from data in a point cloud and organizes a representation in vertical columns (pillars) for 3D object detection. in this work, we use PointPillars with lidar data of some urban scenes provided in nuScenes dataset to predict 3D boxes for three different classes of objects (car, pedestrian, bus). We also use nuScenes detection score (NDS) which is a consolidated metric for detection task, to measure and compare different scenarios. Results show that by increasing the number of lidar sweeps, the performance of the 3D object detector improves significantly. We try to increase the performance of the encoder by developing a method to combine different types of input data (lidar, radar, image) based on a weighting system and use it as the input of the encoder.
机译:自人工智能和机器学习问世以来,对象检测一直是非常热门的研究主题。特别是在推进自动驾驶汽车技术方面,它的重要性非常高。已经基于包括图像,雷达和激光雷达在内的不同类型的数据开发了许多物体检测方法。最近的一些作品使用点云进行3D对象检测。最近提出的有效方法之一是PointPillars,它是一种编码器,可从点云中的数据中学习并组织垂直列(支柱)中的表示形式以进行3D对象检测。在这项工作中,我们使用nuScenes数据集中提供的一些城市场景的激光雷达数据的PointPillars来预测三种不同类别的对象(汽车,行人,公共汽车)的3D框。我们还使用nuScenes检测分数(NDS),它是检测任务的综合指标,用于测量和比较不同的情景。结果表明,通过增加激光雷达扫描的次数,3D对象检测器的性能将显着提高。我们尝试通过开发一种基于加权系统组合不同类型的输入数据(激光,雷达,图像)并将其用作编码器输入的方法来提高编码器的性能。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号